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1
Technique for the Analysis of Evoked and Background EEG
Activity applied to Young and Elderly Subjects
A thesis submitted for the degree of
“Doctor of Philosophy”
By Craig Goodman
Submitted to the Senate of the Hebrew University
October 2002 Jerusalem
2
EEG-שיטות חדישות לאנליזה של מעוררים פוטנציאלים ופעילות רקע של ה
בנבדקים צעירים ומבוגרים
חיבור לשם קבלת תואר
"דוקטור לפילוסופיה"
מאת
קרייג גודמן
הוגש לסינט האוניברסיטה העברית בירושלים
2002תשרי תשס"ג אוקטובר
3
ה בהדרכתו של פרופסור חיים סומרעבודה זו נעשת
4
This work was carried out under the supervision of
Professor Haim Sohmer
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תוכן הענינים
עמוד קיצורים וראשי תיבות תקציר באנגלית 1-19 מבוא 19 מטרות המחקר 19 חשיבות המחקר
ותשיט 19 19 נבדקים 19 גירויים לך הניסוימכשור ומה 21 22 עיבוד נתונים 29-55 תוצאות
תוצאות סיכום 55 55 דיון 62 זמני חביון N1 62
P1 64
N2 65 67 מידות של המשרעות 71 רשימת סיפרות תקציר בעברית
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CONTENTS
Pages
Abbreviation
Abstract in English
Introduction 1-19
Goals 19
Importance 19
Methods 19
Subjects 19
Stimuli 19
Apparatus and Procedure 21
Data Processing 22
Results 29
Differentiation between background and evoked activity – Time
distributions and amplitudes of the EEG deflection: Criteria for
determination of the evoked response applied to young and elderly
subjects 29
Onset, termination and duration of the overall evoked response in young
and elderly subjects 36
Time distributions of the deflections during background activity
in young and elderly subjects – Rate of deflections 40
Amplitudes of the deflections during background activity in young and
and elderly subjects 42
Relation between mean rate of EEG deflections during the 300 ms
pre-stimulus background activity and during the 300 ms overall
evoked post-stimulus activity 43
Time distributions of deflections related to the individual
components of the evoked response – Partial time distributions of
deflections corresponding to the components of the evoked response:
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determination and parameters used 43
Borders and duration (width) of the partial time distributions related
to the N1, P1 and N2 components of VEP in young and elderly
subjects 44
Mean number of deflections per single stimulus trial for the partial
time distributions of N1, P1, N2 in young and elderly subjects 45
Variability of latencies of the EEG deflections contributing to the
N1, P1, and N2 components of VEP 47
Time locking of the EEG response deflections 49
Comparison between latencies of the peak D-values of the partial
time distributions of deflections and latencies of conventionally
averaged VEPs 49
Amplitude amplification of the deflections contributing to the
evoked response components 50
Summary of Results 55
Discussion 55
Latency Measures 62
N1 62
P1 64
N2 65
Amplitude Measures 67
References 71
Abstract in Hebrew
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תקציר
בנבדקים EGE-שיטות חדישות לאנליזה של מעוררים פוטנציאלים ופעילות רקע של ה
צעירים ומבוגרים
רקע:
האנליזה של הפעילות החשמלית הנרשמת מהראש, גם פעילות רקע
Electroencephalography (EEG וגם פעילות מעוררת בתגובה לגירויים תחושתיים )
Sensory evoked potentials(EP היא בעייתית בגלל הקושי לזהות את מרכיבי התגובה ,)
לעומת EEG-לגירוי בתוך "רעש" הרקע. זה נובע בעיקר מהמשרעת הגדולה של ה
טן. בנוסף ק signal to noise ratio. זה מביא ליחס אות לרעש EP-המשרעת הנמוכה של ה
גישה ה. EP-( והמשרעת של מרכיבי הlatencyלה של זמני ההופעה )יש שונות גדו
ירויים, דהיינו גהיא לעשות מיצוע של הרישומים להרבה EP-המקובלת יותר לחקור את ה
Averaged EPאבל שיטה זו מבטלת את השונות הרגעית של ה .-EP על פני הזמן )שינויים
ו מהווה מידע חשוב לגבי מן. השונות הז( ובמשרעת התגובה מזמן לזjitter –בזמן ההופעה
תפקוד המוח ולא כדאי לאבד מידע זה על ידי מיצוע. שיטה נוספת כרוכה באנליזה של הרכב
. גם בשיטה זו יש התעלמות EP-ושל ה EEG-של ה frequency analysisהתדרים
מהשינויים הרגעיים.על מנת להתגבר על הבעיות האלו, פיתחנו שיטות חדישות.
ות:שיט
-השיטות החדישות מבוססות על תיאור סטטיסטי של הזמנים של הגלים ברישום ושל גודלם
שבתוכם התגובות -וגם אלה שלאחר הגירוי EEG-ה -הרקע –גם אלה שלפני הגירוי
-30אנשים נורמליים צעירים )גילאים 14לגירויים. יישמנו את השיטות האלה על קבוצה של
Reversingמסך שח המתחלף -שנים(. הגירוי היה ראיתי 65 – 80זקנים ) 14 -שנה( ו 18
checkerboard הגלים –. ערכנו אנליזה של המרכיביםN1, P1, N2 בתוך חלון הזמן עד
9
א"ש לפני 300( ואת התקופה EP-אלפיות שניה )א"ש( אחרי הגירוי )המכיל את ה 1000
אלקטרודות על פני 16רקע(. הפעילות החשמלית נרשמה מסדרה של EEGהגירוי )
הרץ. זמן ההופעה והמשרעת של כל גל בסדרת הגלים לפני 30-1הקרקפת עם סינון בין
(, זמן ומשרעת. מזמני כל הגלים -ואחרי מתן כל גירוי נקבע ולכן לכל גל היה קוטביות ) + או
Time distribution of theגירויים הרכבנו "פיזור הזמנים של הגלים" 300בסדרה של
deflections בנפרד בשביל הגלים החיובים ובנפרד מהגלים השליליים. בנוסף, מתוך
Amplitudeמשרעות הגלים )החיוביים בנפרד מהשליליים(, הרכבנו "מאפייני המשרעות"
Profiles .המשך האנליזה התבסס על "פיזורים" "ומאפיינים" הללו .
התוצאות:
ותר בזקנים מאשר בצעירים. משרעות גלי הרקע קצב הגלים בזמן פעילות הרקע היה גבוה י
באלקטרודות האחוריות היו גבוהות יותר בצעירים מאשר בזקנים. בזמנים אחרי מתן הגירוי
קצב הגלים בזקנים היה גבוה יותר בהשוואה לזמנים שלפני הגירוי )פעילות רקע(. לא היה
הבדל כזה בקצב בנבדקים הצעירים.
)מעל קליפת המוח הראיתית הראשונית( בצעירים Ozת הפעילות המעוררת באלקטרוד
ראה נא"ש שלא 70 -התחילה מוקדם יותר אחרי הגירוי מאשר בזקנים. זה נובע מקיום גל ב
N1, .P1בזקנים. היה שונות גדולה יותר בזקנים בפיזור זמני הגלים בזמן מרכיבי התגובה
נים. לעומתם, בצעירים היתה מידה וגם סטיות התקן של הזמנים הללו היו גדולים יותר בזק
גדולה יותר של "נעילת זמני הגלים" לזמן מתן הגירוי. משרעות הגלים בזמן מרכיבי
היו גדולות יותר בצעירים מאשר בזקנים. ממוצעת המשרעות של הגלים היו N1, P1התגובה
בשיטת המיצוע EP–שהתקבלו ב N1, P1תמיד גדולות יותר מאשר המשרעת של המרכיבים
Averaged EP.
. בכל מקרה משרעת הגלים בזמנים EP–זה מעיד על ההפרעה ששיטת המיצוע מכניסה ל
שלאחר הגירוי היתה גדולה יותר מאשר משרעות הגלים זמן פעילות רקע, זה מעיד שיש
הגברה של משרעות הרקע כתוצאה ממתן גירוי. בנוסף, לא כל גירוי גרם להופעת גלי תגובה
חלק את הפעילות המתעוררת בתגובה לסדרה של גירויים לשתי תת קבוצות: ולכן ניתן היה ל
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וקבוצת גירויים שלא גרמה לתגובה. ניתן Ozגירויים שגרמו לפעילות מעוררת באלקטרודת
לערוך אנליזה נפרדת לשתי קבוצות הגירויים הללו.
מסקנות:
בפרט יותר בקשר שיטות האנליזה החדישות מספקות הרבה יותר מידע באופן כללי, ו
להבדלים בפעילות החשמלית של המוח בין צעירים לבין זקנים. מידע כזה לא ניתן להשיג
בשיטת המיצוע המקובלת. השיטות מצליחות גם להפריד בצורה מתמטית סטטיסטית בין
רמו ת, לזהות במדויק את זמני תחילת התגובות וסיומן, ואיזה גירויים EP–לבין ה EEG–ה
נוסף, התוצאות נותנות הבנה טובה יותר בקשר למנגנונים המוחיים הגורמים תגובות. ב
והגברה. ניתן אפילו לשפר את Time locking -דהיינו "נעילת זמן" EP–להיווצרות של ה
על ידי מיצוע של התגובות לאותם הגירויים שגורמים לתגובה. Averaged EPשיטת המיצוע
תוארו כאן תאפשרנה לחוקרים לקבל מידע רחב יותר לגבי לסיכום, סביר להניח שהשיטות ש
מספר רב של קבוצות מקרים עם פתולוגיות שונות בפיזיולוגיים -ההבדלים הפיזיולוגיים והפתו
מידע שלא ניתן להשיג בשיטות המקובלות. -
Abstract
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Technique for the Analysis of Evoked and Background EEG Activity applied to
Young and Elderly Subjects
Background – The analysis of scalp-recorded brain activity, both ongoing EEG
and in response to sensory stimuli, has continuously proven to be problematic for
researchers in terms of the identification and analysis of components in response to
sensory stimulus. This is due to the relatively high level of background EEG activity,
providing a low signal-to-noise ratio (SNR), as well as the high variability of the
single response trials in terms of their latencies and amplitudes. The most common
approach to the study of EEG activity in response to repeated stimuli is to use
averaged evoked potentials (EPs). This method however contributes to the loss
valuable information, such as moment-to-moment variation with respect to time (i.e.
jitter), and similarly with respect to amplitude. It is likely that these variations contain
important information about brain function, and should not be ignored when
investigating different groups or pathologies. An additional technique is based on
frequency analysis of the EEG and EP. However, this too can be problematic in
regards to cortical brain activity at specific times, since the time-integrative aspect of
this form of analysis does not address trial-to-trial variations, much like the technique
used for conventional averaging. In order to overcome the problems generated by
conventional evoked potential averaging, new techniques have been developed in this
laboratory.
Methods - The new techniques are a more simplified approach to the analysis of
single response sweeps, which was developed in the hope of providing a more
practical and less cumbersome alternative, without sacrificing important information
regarding the electrical activity of the cortex. The techniques are based on statistical
descriptions of the times and amplitudes of the EEG deflections recorded before
(background) and after (evoked) a series of stimuli. These techniques were applied to
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young (18-30 years) and elderly (65-80 years) normal subjects, using a reverse
checkerboard visual stimulus. VEP components (N1, P1, N2), were analyzed in young
and elderly subjects using these new techniques. The window of analysis was 300 ms
before and 1000 ms after each stimulus trigger, and the frequency content of the
recording was limited by a bandpass filter of 1-30 Hz (with additional smoothing by
an algorithm). A single trial (EEG recorded before and after each stimulus) was
defined as a sequence of events (deflections), each having a time coordinate (with
respect to the stimulus), polarity and amplitude. These trials were quantified by
computer algorithms, which detected all positive and negative deflections throughout
the recording. The times of the positive and negative deflections were calculated for
all sweeps (stimulus trials) in a single session (n=300 trials) for the given subject.
Time distributions of deflections (separately for positive and negative) termed Time
distributions of deflections as well as separate distributions of the amplitudes of the
deflections termed Amplitude Profiles were constructed as a function of time with bin
widths of 6 ms. The average of six different recording sessions from the same subject
was calculated.
Results - A higher rate of background activity in the elderly subjects when
compared to the young across all 16 electrode sites. The amplitudes of the deflections
during the pre-stimulus (background) period were larger in the young subjects than in
the elderly at the parietal and occipital electrodes. In the elderly subjects there was a
lower rate of deflections during the period of evoked activity (50-350 ms after the
stimulus) compared to that during the 300 ms pre-stimulus (background) period.
There was no such difference in rates of deflections in the young subjects. The overall
period of evoked activity at electrode Oz began significantly earlier in the young
subjects and this seemed to be due to the presence of an earlier positive peak at about
70 ms. That was not seen in the elderly. Analysis of three VEP components (N1, P1
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and N2) using the Time distributions of deflections revealed significantly greater
variability in the elderly for components N1 and P1, as well as significantly higher
standard deviations of mean latency for all three components (N1, P1 and N2). The
reverse was true for the young, who demonstrated a greater degree of stimulus time
locking, and narrower time regions related to the VEP components N1, P1 and N2 at
electrode Oz. The young also had significantly higher peak amplitudes for the
deflections within the Amplitude Profiles related to components N1 and P1 than in the
elderly. Amplitudes measured using the Amplitude Profiles were significantly higher
than the amplitudes found in the conventional averages derived from the same data,
illustrating the distortion caused by averaging. In addition the ratios of the mean
amplitudes of the evoked period Amplitude Profiles compared to the mean amplitudes
during background activity (pre-stimulus) for all three response components were
greater than one, indicating that there is amplification during the evoked period. This
degree of amplification (ratio) was larger in the young subjects for N1 and P1 and the
difference was significant for wave N1. Not all stimulus trials contributed deflections
to the evoked activity components and these two subsets of stimulus trials could be
analyzed separately.
Conclusion - The novel methods provide a great deal of additional information
about age-related differences between young and elderly in cortical activity related to
the response and to background activity that is unavailable when analyzing data using
only conventional averaging. This technique has succeeded in differentiating between
background activity and evoked activity, in identifying the onset and the termination
of each component of the evoked activity, indicating which specific stimulus trials
gave rise to a detectable response to the stimulus and which did not. This has lead to
statistical evaluations of the time and amplitude variations of single trial responses.
Finally, the technique has provided insight into the mechanisms of generation of EP,
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showing that a major factor is the time locking of the random higher frequency
ongoing EEG deflections, and in addition, their amplification. The conventional EP
technique is also improved by using only those stimulus trials which contribute
deflections to the various response components. Therefore it is likely that it will allow
researchers to access important information concerning underlying physiological
differences in a wide range of groups as well as various types of neuropathology that
would not otherwise be possible using the more conventional forms of analysis.
Abbreviations
APs - action potentials
ECG - electrocardiogram
EEG - electroencephalogram
EMG - electromyogram
EOG - electro-oculogram
EP - evoked potentials
EPSP - excitatory postsynaptic potentials
ERPs - event related potentials
IPSP - inhibitory postsynaptic potential
PREPs - pattern reversal evoked potentials
SNR - signal to noise ratio
SL - subjective threshold
VEP - visual evoked potentials
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Technique for the Analysis of Evoked and Background EEG Activity applied to
the Young and Elderly Subjects
Introduction
A technique used for the exploration of brain functioning in humans is the
recording of electrical activity from the surface of the scalp with the use of electrodes,
known as the electroencephalogram (EEG), which represents brain activity
accompanied by electrical changes and if there is a sensory stimulus by evoked
potentials (EP). Electroencephalography provides a noninvasive method for the study
of ongoing or spontaneous electrical activity of the brain. The origin of the changes in
electrical activity found in the EEG is linked to the structure and function of the cells
in the cerebral cortex which are generating the activity. Neurons are the primary
source generators of electrical activity in the cerebral cortex that is found in EEG and
EP. It is estimated that the cerebral cortex contains a total of approximately 5x1010
neurons, where a slab of cortex with a volume of 1mm3 contains approximately
40,000 neurons, and 88-108 synapses. Each neuron receives approximately 20,000 pre-
synaptic inputs, 18,000 of which are excitatory and 2,000 are inhibitory (Kiloh et al.,
1981).
The EEG reflects changes of a steady electrical charge on the cell membrane of
cortical neurons, as a result of impulses arriving from other neurons via axons which
terminate in a synapse, which in turn release a neurotransmitter across the synaptic
cleft to the postsynaptic neuronal membrane that produces changes in the membrane
potential. The interaction of the neurotransmitters with postsynaptic receptor sites
produce a transient change in the membrane potential. The membrane potential either
depolarizes, which is known as an excitatory postsynaptic potentials (EPSP) that
occurs due to an increased permeability of the membrane to sodium and other ions at
16
the receptor zone, or hyperpolarize the membrane potential, known as an inhibitory
postsynaptic potential (IPSP) that is caused by an increased permeability to potassium
and chloride ions, both of which occur in cortical neurons as a result of thalamo-
cortical and other input. Much of the rhythmic activity seen in the on-going EEG in
various physiological states in influenced by a thalamic pacemaker which during
“activation” or a change in the physiological state of the subject may abolish the
rhythmic discharges in the thalamic nuclei causing cortical potentials to become
desynchronized (Kiloh et al., 1981). These postsynaptic potentials can last up to over
100 ms, and are subsequently summated on different parts of the cell body (for review
see Hillyard and Picton, 1987). The ongoing EEG that is recorded at the scalp
represents these synaptic dendritic potentials. Much of the postsynaptic activity is
caused or “triggered” by action potentials (APs). Apparently APs do not contribute to
the extracellular potentials since the “spike” that is produced is brief (approximately
1-3 ms) and rarely demonstrates synchronous firing amongst adjacent cells, thus being
unlikely that any sufficient summation of the potentials occur that can be detected at
the surface of the scalp (Niedermeyer and Lopes da Silva, 1987).
The electrical activity can be recorded through the use of scalp electrodes since
electrical fields are primarily generated by the cerebral cortex, which is the outer layer
of the cerebrum, where the neuronal dendrites extend through most layers of the
cortex, and the pyramidal cell neurons tend to be closely packed with apical dendrites
are oriented parallel to each other, facilitating spatial summation of currents generated
by groups of neurons, creating electrical fields, which are referred to as field
potentials. Some patterns of cell membrane activation produce only local currents or
“closed” electrical fields, and therefore are unable to generate potential fields at a
distance. In contrast, an “open” field is generated when currents flow beyond the
17
limits of groups of active cells and their processes. This allows part of the current to
pass through the meningeal coverings, spinal fluid, and skull to the scalp where it can
be recorded (Hillyard and Picton, 1987).
The EEG (and EP) is usually recorded by applying electrodes to the scalp. A
‘montage’ is used to connect the electrodes to different recording channels. Typically
a ‘referential’ montage is used where each channel records the difference between one
scalp electrode and a common reference. Electrical fields are continuously being
generated within the brain, emitting potentials that are spread to all areas of the scalp.
Therefore, there is no location on the scalp at which some electrical activity cannot be
recorded. This requires researchers to find an ‘inactive’ reference electrode location
that does not reflect electrical activity from the cortex. Researchers tend to use the
linked-ear (mastoids), while others use the nose tip as reference point electrodes. Also
bipolar montages are used, which record the electrical activity between two electrodes
(Picton et al., 1995). The international “10-20 system” is typically used for the
placement of electrodes for neurophysiological recordings at fixed, internationally
agreed upon sites, that were proposed by the American Electroencephalographic
Society (1991) (See Figure 1).
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Figure 1. Diagram of the international “10-20 system” placement of scalp electrodes for neurophysiological recordings at fixed, internationally agreed upon sites, that were proposed by the American Electroencephalographic Society (1991). Electrodes consisted of sixteen mono-polar electrode sites: Fz, F3, F4, Cz, C3, C4, T3, T4, T5, T6, Pz, P3, P4, O1, O2, and Oz, with the reference electrode placement being the left mastoid. The ground electrode was located on the forehead. Electrodes were placed around the eyes in order to record the vertical and horizontal electro-oculogram (EOG).
The amplitude of the electrical signals that are recorded via scalp electrodes are
small (tens to hundreds of microvolts) and need to be amplified. Differential
amplifiers are typically used to amplify the electrical signals picked up by the scalp
electrodes. The electrical signals are connected to the input stage via two leads.
Because the signal is amplified between two input leads, it is referred to as being in
differential mode. A balance between the two halves of a differential amplifier is
19
maintained throughout the recording which is intended to minimize the amplification
of any common mode signals such as mains (line) interference, which is in phase at
both input leads, and thus tends to be cancelled out. Filters are also used to exclude
recorded electrical activity of relatively high or low frequencies below and beyond the
range of EEG frequencies (0.5-40 Hz). Filters can aid in providing a clearer
representation of the EEG activity with minimal distortion from electrical sources not
related to cortical activity (Hillyard and Picton, 1987).
A source of noise that is prevalent in EEG and EP recordings is the ocular
artifact. Ocular artifacts represent electrical activity due to eye movements and blinks
that occur simultaneously with the EEG or EP waveform. A technique that is aimed at
minimizing ocular artifacts is the recording of the electro-oculogram (EOG). The
EOG is recorded using separate electrodes that are fixed symmetrically above and
below and on either side of the eyes in order to directly monitor eye blinks and eye
movements. The EOG recording enables the use of linear regression to correct the
EEG waveform for the presence of ocular artifacts (Semlitsch et al., 1986). Other
gross contaminations of the EEG recordings produced by tongue, and jaw movements
can also occur. These artifacts must be controlled when conducting EEG recordings
by instructing subjects not to swallow, or make any head movements, and to keep
perfectly still during the recording session. ECG potentials (electrocardiogram) may
be minimized by ensuring that the reference electrode placement is optimal (i.e. not
placed on the neck or surrounding areas), as well as changing the subjects posture
during recordings.
Normal EEG consists of waves of various frequencies and amplitudes that
depend on the subject’s physiological states, such as wakefulness, the age and health
of the subject, as well as the location of the recording electrodes. The EEG activity
appears as periodic waves with frequencies ranging from 0.5 to 40 cycles per second
20
(Hz), and with amplitudes that range from five to several hundred microvolts. EEG
activity has been categorized into four frequency bands: delta (0.5 to 3.5 Hz), theta (4
to 7 Hz), Alpha (8 to 13 Hz), and beta (14 to 30 Hz). Alpha rhythm amplitudes tend to
be greater (up to 50 V) in relation to beta rhythm amplitudes which are usually very
low (5 to 30 V). As a rule, as the frequency of the EEG activity increases the
amplitudes decrease. Recordings of a normal adult subject in a relaxed state with eyes
closed will be characterized most dominantly by alpha activity, but if the subject is
instructed to open his or her eyes the activity will become less synchronized and
increased in frequency producing dominant beta activity that is also characterized by
lower amplitudes. Delta and theta wave activity are most prominently found during
sleep (Willis, 1998) (see Figure 2 - for typical EEG with different frequencies).
Figure 2. Example of typical EEG in the four frequency bands: delta (0.5 to 3.5 Hz), theta (4 to 7 Hz), Alpha (8 to 13 Hz), and beta (14 to 30 Hz).
21
Evoked Potentials
The technique of recording evoked potentials (EPs) using EEG from an intact
scalp is one of the few available investigative techniques that provide precise
information on the time course of the neural activity that underlies higher brain
functions. The EPs reflect voltage changes in the ongoing EEG that are time locked to
and initiated by sensory, motor, or cognitive events. Much like EEG and APs, EPs are
primarily generated when there is a depolarization and possibly also when there is a
synchronous hyperpolarization of cell membranes in the nervous system. The
electrical activity recorded by the scalp electrodes includes not only the EP (signal),
but also other ongoing, spontaneous, random electrical activity (noise) such as that of
the heart (ECG), of the muscles (electromyogram-EMG) and the ongoing EEG itself.
The amplitude of the EP signal is usually smaller than that of the noise. Therefore
there is a small signal to noise ratio (SNR). In order to improve this SNR, it is
necessary to optimize the magnitude of the signal while at the same time reducing the
noise. In order to augment the signal, stimuli which synchronously activate the EP
generators are used. Temporal synchrony is an important factor in generating field
potentials (leading to EP) that are produced by a group of cells. When there is a
synchronous activation of geometrically organized cells related to a stimulus with a
sharp onset, a summation of the fields generated by individual cellular elements
occurs, that is similar in sign and orientation. This summation increases the amplitude
of the field potentials. Examples of sensory stimuli which lead to synchronous
activation of neuronal elements include clicks (auditory modality) and flashes or
alternating checkerboards on a screen (visual). In order to differentiate between EPs
and EEG ongoing activity, it is necessary to use a filter that will pass the frequency
range of interest (that of the EP) and not the range above or below that range, as well
22
as averaging many trials. With respect to the averaging procedure, it is assumed that
the EEG activity is random thus being different for each repetition of the event (or
trial) and subsequently decreases in amplitude with averaging. On the other hand, the
EP is time-locked to the stimulus (appears after a more or less fixed latency) so that
the EP is summated over repeated stimulus presentations and averaging. Although the
background noise is never completely eliminated from the recorded activity, the SNR
is greatly improved.
In general, one can divide the EPs recorded from the scalps of human subjects
into two classes of EPs. One is exogenous in nature meaning that electrophysiological
activity is determined by the character of the stimulus (e.g. its modality, intensity, and
repetition rate). Reports in the literature suggest that exogenous EP components are so
consistent across subjects that small deviations from the typical structure are very
reliable in indicating any sensory or neurological dysfunction (for review see Hillyard
and Picton, 1987). The other form of cortical activity is endogenous in nature,
meaning that the activity is related to the cognitive reaction, or attitude of the subject
in response to a stimulus. These endogenous waves are also called event related
potentials (ERPs) and are believed to reflect more cognitive processing in humans (for
review see Picton et al., 1995). Exogenous EP components tend to have shorter
latencies than the endogenous ERP components. Our discussion will be limited to
exogenous EP components due to the nature of the stimulus used in the paradigm of
this study. The exogenous EP can be further broken down into twp types: action
potentials (AP) and synaptic-dendritic potentials. For example, the auditory nerve-
brainstem evoked potentials and the initial periods of the somato sensory EP represent
the compound AP of axons synchronously activated. Therefore the recording filter
passes the higher frequencies of APs (e.g. 100-3000 Hz); requires faster A to D
23
conversion, a shorter time window, and short time periods per bin (e.g. up to 100 s).
Thus the EEG is filtered out. The synaptic dendritic EP represent lower frequency
electrical activity so that the recording filter passes lower frequencies (e.g. up to 100
Hz), a longer “window” (e.g. 1000 ms) and a longer time period per bin. Much of this
type of EP is generated in the cerebral cortex and the cortical visual evoked potentials
(VEP) will be the type of EP analyzed here.
Nomenclature
There are several systems of nomenclature that exist which attempt to classify
the many complex components contained within an EP waveform. Thus, the principal
waveform components are characterized by a specific polarity (positive or negative),
an amplitude that is measured in V, and a latency (time elapsed after the onset of
stimulus). Therefore, the EP is viewed as a sequence of serially activated processes
that are manifested as distinct positive-negative potential fluctuations. For example, a
P100 component typically found within particular VEP waveforms is a positive wave
occurring at approximately 100 ms after the stimulus.
Because the latency of an EP peak may vary from one subject to another, the
average latency of the peak across the normal subject population is often used to
designate the component. Under different task conditions and amongst different
groups of subjects, there is a wider variability in the latency of the endogenous than of
exogenous components (for review see Hillyard and Picton, 1987; Picton et al., 1995).
Analysis of EEG and Evoked Potentials
The two most common approaches to the quantitative analysis of EEG and EP
activity utilize the methods of the averaging of responses to repeated stimuli (for EP),
and frequency analysis (for EEG and EP). These methods have certain limitations,
which reduce their utility in the analysis of single evoked potentials. The conventional
averaging technique for EP evaluates EEG segments after repetitive stimulus trials
24
assembled in a common store in order to reveal the components invariant in each trial.
This technique improves the SNR, thus differentiating the time-locked stimulus
specific response from the random on-going EEG background activity. This is
accomplished however at the cost of losing valuable information, such as moment-to-
moment variation with respect to time (i.e.: jitter), and similarly with respect to
amplitude. It is assumed that these variations contain important information about
brain function, and it would be helpful not to ignore them, if possible, when
investigating different groups or pathologies. Frequency analysis can be problematic
in regards to cortical brain activity over a period of time, since the integrative aspect
of this form of analysis does not address moment-to-moment variations.
These problems can be overcome if a way could be found to conduct single
response trial analysis. Several procedures have been suggested by previous authors
for the analysis of single trials. The classical approach (Woody, 1967) suggests that
due to the similarity between the waveforms of the averaged EP and single responses,
the averaged EP can be used as a criterion template for the selection of the appropriate
trials for the single trial analysis. Thus only the components of EP which are revealed
after averaging, can be used. However, it is known that some components can be
distorted, highly decreased in amplitude or even lost after averaging, leaving a deficit
of possibly important information needed for the study of single trials. Ford and
Pfefferbaum (1991) and Ford et al. (1994) elaborated on the procedure proposed by
Woody (1967) with a signal/noise screening procedure by matching the EEG template
not only to the time period where the signal is expected but also to a later range
(noise) where no signal is expected. Trials that did not pass the screen were rejected,
thus possibly excluding valuable information. Despite this and other work that has
been done in this area, the problem of single trial analysis related to background EEG
25
activity has yet to be solved. In addition these methods often involve complex and
unwieldy mathematical computations and extensive analysis.
Recent studies have demonstrated a connection between background EEG
activity and EPs. These results lead to the suggestion that the processing and analysis
of EEG and EP should be conducted with the same method for both aspects of the
data (Jansen and Brandt, 1991; Rahn and Basar, 1993; Arieli et al., 1996; Polich,
1997; Basar et al. 1997; Basar et al., 1998; Kisley and Gerstein, 1999). Jansen and
Brandt (1991) examined the effects of pre-stimulus alpha activity on the averaged
visual evoked response to low intensity flashes. There was a relationship between the
averaged visual evoked potential latencies and amplitudes of components N1 and P2
with the phase of the alpha activity immediately preceding the stimulus, where N1
appeared to be entrained alpha activity, while the P2 component was not an alpha
process, but was influenced by the amount of pre-stimulus alpha activity. Rahn and
Basar (1993) compared conventionally averaged VEPs in response to flash stimuli
with the alpha and theta band EEG activities preceding the stimulus presentation.
They found that the VEP amplitudes were affected qualitatively depending on the
frequency content of the pre-stimulus activity. Arieli et al. (1996) recorded real-time
optical imaging, as well as local field potentials and spike discharges of single
neurons in the cortex of the adult cat to repeated presentations of the same stimulus,
analyzing spatio-temporal dynamics in single trial responses to visual stimulation.
This was done using moving gratings, and recorded from microelectrodes inserted
into an exposed area of the visual cortex. It was suggested that the variability or
changes in the patterns of the evoked activity from trial-to-trial are caused by
fluctuations in the ongoing cortical activity, which appears to have a major influence
on sensory processing. In a related study, Kisley and Gerstein (1999) conducted
26
electrophysiological recordings of local field potentials and unit spike trains in the
auditory cortex of ketamine/xylazine-anesthetized rats, using principal components
analysis to quantitatively classify waveforms on the basis of their time courses. Trial-
to-trial variability seemed to be dependent on ongoing background activity, which
appeared to modulate both the amplitude and latency of the evoked local field
potentials and evoked unit activity. Similarly, Polich (1997) reported that variation of
the background EEG contributed to the individual variability of the ERPs (P300
component) using an auditory oddball paradigm, recorded with both eyes open and
eyes closed. The relationship between these two domains was attributed to an
association between the spectral power and mean frequency of the EEG background
activity and amplitude and latency of the P300 component in adult humans. Basar et
al. (1997) and Basar et al. (1998) who studied spontaneous EEG activity in relation to
auditory and visual evoked potentials as well as cross-modality experiments in young
human subjects, suggested that spontaneous EEG alpha (10-Hz) activity is not pure
noise as was previously considered in the past, but rather the evoked alpha oscillations
patterns which are initiated by but not time-locked to a stimulus.
New Methods of Analysis
This study employs new procedures for the analysis of single trials that is not
based on the conventional averaged EP. The principal tool of this approach is the
statistical description of the appearance of deflections (peaks) in the ongoing EEG
before and after the onset of sensory stimuli. An attempt was undertaken to build
representative distributions of the on-going background and evoked activity similar to
the post-stimulus histogram used in neurophysiology to describe a sequence of spikes.
Therefore, the data required for the new analysis techniques involved the detection of
all positive and negative deflections in the ongoing EEG activity before and after the
27
onset of sensory stimuli. This method enables the researcher to examine the time
distribution of the EEG events (peaks, waves) only, without any relation at this stage
of the analysis to their amplitude. Such time patterns (a time distribution of the
appearance of positive and negative deflections) have been termed Time Distributions
of Deflections and are constructed for positive and negative deflections separately.
These distributions are used for the analysis of the two categories of scalp recorded
activity, one of which is defined as originating from the response to specific stimuli
(evoked activity), and the other being defined as background activity which would
appear before the stimulus, thus making use of the same methods of analysis for both
background and evoked activity, which was problematic for previously proposed
methods. The distributions provide a comprehensive representation of all the activity
found within a particular number of single trials, without having to incorporate
various estimation techniques that are characterized by inherent limitations and
weaknesses from lack of knowledge of the SNR. Thus, these new types of analysis
contribute to the differentiation between deflections related to responses evoked by
the stimulus and deflections representing the background activity, and the comparison
between them, possibly providing an initial approach towards solving the long
standing problem of single trial analysis. This offers an alternative to conventional
averaging while maintaining information as to the overall variability of this cortical
activity. In addition to the analysis of Time Distributions of Deflections, the mean
amplitudes of the detected deflections within each successive time bin can also be
analyzed. This second analysis should provide information about the magnitude of the
activity evoked by the stimulus and of the background activity.
To generate the evoked activity that will be analyzed using the new methods of
analysis, a visual stimulus was used in this paradigm in the form of pattern-reversal
28
checkerboards. The principal exogenous waves of visual EPs that will be analyzed are
components N1, P1, and N2. Thus we will be examining not only background
activity, but also its relation to visual evoked potentials (VEP). Thus the new
techniques for analysis of the EEG and EP take into account the exact polarities, times
and amplitudes of each deflection of each stimulus. Therefore the techniques bring us
closer to a single trial analysis and provide information not usually accessible when
using standard averaged EP techniques.
Age-Related Background
After elaboration of these new techniques as part of this study, we hope to
explore the utility of these new types of analyses to the analysis of EEG and EP in
young and elderly subjects, using the pattern-reversal checkerboard stimulus. The
study of age-related neurophysiological changes is greatly facilitated by using EEG
research, which provides a better measure of temporal aspects of information
processing than do behavioral measures (Taylor, 1995). Applications of the newly
proposed technique may be explored by comparing the young and elderly and
differences can be expected to occur based on numerous biopathological changes
which are associated with normal aging. The basis for expecting differences in EEG
between the young and elderly is largely based on findings of results obtained from
the EEG by spectral analysis. Age related differences of EPs are largely based on
studies that compared conventional averaged EPs in two groups of subjects (young
and elderly). We would expect that this new technique for the analysis of EEG
activity would reveal important differences in both evoked and background activity
between the young and the elderly subjects.
Evidence from autopsies and computerized tomography scans show that the
weight and volume of the brain diminishes continuously with age even in healthy
29
individuals (For Reviews see Braak and Braak, 1988; Giaquinto, 1988). The aging
process has been referred to as a continuous and uniform slowing of neural
transmission (synaptic delay) which is characterized by changes in neurotransmitter
function such as decreases in the amount of both excitatory and inhibitory
transmitters, and/or their associated enzymes (for review see Iwangoff et al., 1980;
Giaquinto, 1988; Giacobini, 1990; and Schroder et al. 1991). It has also been
suggested that these various age-related biopathological changes mentioned above
cause a decrease in the conduction velocity in the peripheral nerves and central
pathways which has been widely reported with regards to the elderly (Downie and
Newell, 1961; Buchthal and Rosenfalck, 1966; Celesia and Daly, 1977, Drechsler,
1978; Dorfman and Bosley, 1979, Kazis et al. 1983). In addition, results obtained
from the EEG by spectral analysis show changes in various frequency ranges in old
age. [For a comprehensive review see Dustman et al., 1993.] Age-related dendritic
changes of the isocortical pyramidal neurons in the elderly which result in the
impairment of dendritic processes include: swellings of the pyramidal cell soma,
progressive loss of dendritic spines as well as irregular nodulation of the dendrites.
Related changes affect the visual pathway system as well (For Review see Dolman et
al., 1980, Braak and Braak, 1988). It has also been suggested that the visual system in
the elderly is also affected by loss of retinal ganglion cells (axonal dystrophy) in the
optic nerve and optic pathways (Vrabec, 1965; Dolman et al., 1980; Gartner and
Henkind, 1981), as well as other age-associated changes occurring in the optic nerve
(Dolman et al., 1980). Considering the many age related physiological changes, the
study of their underlying processes using this new method of analysis may yield
important information as to the electrophysiological expression of these changes.
30
Visual evoked-potential (exogenous components)
The studies that examined visual evoked potentials (VEPs) that are directly
relevant to the work presented here are paradigms that employed the widely used
pattern reversal checkerboard, which elicits what is known as pattern reversal evoked
potentials (PREPs). The alternating checkerboard pattern is a strong stimulus to the
visual system (and therefore elicits high amplitude responses synchronously – VEPs)
since, as shown by Hubel and Wiesel (1959, 1968, 1974), the visual system is
extremely sensitive to high contrast stimuli and the alternating checkerboard provides
high contrasts. Pattern reversal stimuli responses are elicited by presenting subjects
with a pattern of checkerboard squares to look at, in which all black squares suddenly
turn white and all white squares suddenly turn black. Each pattern reversal causes a
response in the form of a positive peak at approximately 100 ms (P100), as well as
other components (i.e. negative components N1 and N2). The response is dependent
also on the retinal area that is stimulated, and luminance, as well as the individual
subjects visual acuity, attentiveness, and recording electrode location. If these
variables are kept constant, the latencies of the responses to the pattern reversal
stimuli tend to show little variation across normal subjects of the same age. The
choice however to use pattern reversal stimuli versus flash visual stimuli was based on
the fact that flash responses vary widely between subjects (the major positive
component comparable to the pattern reversal stimuli P100 or P1 component tends to
vary in latency between 50-100 ms), and is not very effective in detecting
abnormalities, which is not the case with respect to the pattern reversal stimuli. VEPs
or PREPs are believed to originate from the extrastriate cortex (Halliday and
Michael, 1970; Jeffreys and Axford, 1972; Lesevre and Joseph, 1979), as well as
being mediated by extrageniculo-calcarine pathways to secondary visual cortices,
namely extrastriate areas 18 and 19 (Celesia et al., 1980). A negative wave that
31
precedes the P1 wave at approximately 70-90 ms is typically known as N1, which is
believed to reflect activity generated within the primary visual cortex (striate cortex -
area 17) (Cobb and Dawson, 1960; Michael and Halliday, 1971; Lesevre and Joseph,
1979; Celesia et al., 1980; Jefferys and Axford, 1972). The next major exogenous
component of interest that follows the P1 is a negative component known as the N2
that typically ranges in latency between 130-190 ms and is believed to reflect activity
within the extrastriate cortex (Michael and Halliday, 1971; Lesevre and Joseph, 1979;
Celesia et al., 1980) much like the activity of the P1 component, but where P1 activity
is believed to reflect activity in the visual association area 19, the N2 is believed to be
more related to area 18 (Jefferys and Axford, 1972) (see Figure 3 for example of VEP
waveform).
32
Figure 3. Example of a typical conventionally averaged visual evoked potential waveform from our data which consists of two negative components: N1 and N2 and one positive
component: P1. X-axis: time after stimulus. Y-axis: V.
33
Goals
The main purpose of this investigation is to describe the technique and to
present the first results using the new techniques of analysis of exogenous
components elicited by a visual stimulus for young and elderly subjects, which allows
for the differentiation and evaluation of EEG background activity and evoked activity,
and to examine the mechanisms that contribute to the generation of visual EPs.
Importance
The new techniques provide a clearer understanding of underlying age-related
physiological changes as well as information related to the generation of evoked
activity, and may provide insight into cortical changes that are associated with various
forms of neuropathology.
Methods
Subjects
Participants in the study were 14 young subjects ages 18-35, with average age
25.4 (S.D. ±4.0), mean education 14.2 years (S.D. ±1.1) and 14 elderly subjects ages
65-80, average age of 75.2 (S.D. ±6.0), and a mean education of 14.9 years (S.D.
±2.8). All participants volunteered in response to advertisements in local newspapers,
or through referral. Participants were screened by responding to health questionnaires
in order to identify any physical or medical limitations that would disqualify them for
participation in the study. All subjects reported being in good health with 20/20
(corrected) vision and normal hearing, with no history of neurological or mental
illness. The experimental protocol was reviewed and approved by the committee for
human experimentation of the Hebrew University- Hadassah Medical School.
Stimuli
Auditory and visual stimuli were presented in alternating order, each at a rate of
34
0.5/sec. The duration of a stimulation/recording session was 10 minutes (300 auditory
and 300 visual stimuli: Aud-Vis-Aud-Vis…). Six sessions on two experimental days
(three sessions per day) were conducted with each subject. To ensure subject
attentiveness, each was instructed to perform mental counting of each perceived
auditory stimulus. The auditory stimulus was a binaural click of 30 dB above his
subjective threshold (i.e. SL). The visual stimulus (see Figure 4) consisted of an
alternating checkerboard with a full field of 11 o (25.7 cm.) and an angle for check
viewing of 1.35 o (81’ check size) (note the rather low basic spatial frequency of the
visual stimuli). The actual activating visual stimulus was the pattern reversal (40 s for
the reversal to occur) and not the steady state pattern present on the screen for 2 seconds.
Subjects were sitting 140 cm. from a 27x21 cm. CTX computer screen, which provided
the visual stimuli. In three of these subjects a session was conducted during which
sensory stimuli were not presented. This report describes the analysis of the responses to
the visual stimuli only. The rationale behind using and auditory and visual bimodal
stimulation in our experimental design was motivated by its efficiency with respect to
number of recordings, thus reducing possible added fatigue factors that could arise
from conducting separate (thus longer) unimodal stimulus recordings. There was no
specific rationale behind the choice to analyze the visual stimulus versus the auditory,
but only one stimulus modality could be included in the analysis of this study due to
limited resources. It is possible to conduct an analysis of the auditory responses in the
future.
35
Figure 4. Diagram illustrating the sequence of stimulus presentations. Stimuli were visual and auditory clicks presented in alternating order (visual- auditory-visual---). The visual stimuli were pattern reversal checkerboards with full field of 11º (25.7 cm). The checkerboard was on throughout and reversed every two seconds. The auditory clicks were delivered at the midpoint in time of each pattern presentation at 30 dB above subjective threshold, presented by earphones at a rate of 1 every 2 seconds.
Apparatus and Procedure
Scalp activity was recorded with an Electrocap (Neuroscan, Inc., Sterling, VA,
U.S.A.) using sixteen monopolar electrode sites: Fz, F3, F4, Cz, C3, C4, T3, T4, T5,
T6, Pz, P3, P4, O1, O2, and Oz of the international 10-20 electrode placement system
(see Figure 1) with the reference electrode at the left mastoid, and the ground
electrode was located on the forehead. Vertical and horizontal electrooculograms
(EOG) were recorded in order to control for eye movement artifacts. EEG was
corrected for the presence of vertical EOG artifact by linear regression (Semlitsch et
al., 1986). The stimulus presentations and data acquisition were provided by a
STIM/SCAN EEG/EP workstation (Neuroscan, Inc., Sterling, VA, U.S.A.). EEG and
EOG channels were continuously recorded through Synamps Amplifiers (bandpass =
0.1 to 100 Hz) and digitized at a rate of 1000 Hz. Data were stored and analyzed off
line. Although there are many different methods in which electrodes can be attached
36
to the scalp, the electrode cap is the most widely used method in EEG and EP
research. The cap is made of an elastic material in which plastic mounts are attached
containing pure tin electrodes that have been strategically placed in such a way that
when the correct size cap is properly fitted, the electrodes are on the 10-20 position
sites.
Experimental confounds were controlled for by maintaining strict procedures
and laboratory conditions during the recordings, such as maintaining the same level of
lighting at the time of the recordings.
Data Processing
The 1,300 ms EEG segment recorded beginning 300 ms before the visual
stimulus and continuing 1000 ms after stimulus presentation was defined as a single
trial. The frequency content of the recorded activity was limited by an additional
bandpass filter (1-30Hz, 24 dB/octave). In addition, smoothing of traces was
conducted across every 5 data points. Computer algorithms were used to identify all
successive positive and negative deflections, no matter how small in amplitude,
ignoring the lower frequency fluctuations of the EEG upon which the higher
frequency deflections may be superimposed. The time of their peaks during the 300
ms pre-stimulus and the 1,000 ms post-stimulus periods was determined (see Figure
5A). The base to peak amplitude of each such deflection was also measured. The time
coordinates of the deflections with respect to the onset of the stimulus trigger were
determined separately for positive and negative deflections for each trial (see Figure
5B).
37
Figure 5. Scheme of the description of the EEG deflections. A: Times of the EEG peaks during the 300 ms pre-stimulus and the 1,000 ms post-stimulus period, showing the time distribution of deflections. B: Base to peak amplitude of each deflection, separately for negative and positive deflections.
38
Thus each single trial was described by a sequence of events (deflections), each of
which had a time coordinate (with respect to the stimulus), polarity and amplitude.
The number of positive and negative deflections was separately calculated in bins of 6
ms for a series of up to 300 trials, and was defined as the Time Distribution of
Deflections for the given subject, given number of trials and given session (see Figure
6).
39
Figure 6. The Time Distribution of Deflections. Subject SB (1 session), electrode Oz.. The Time Distributions of Deflections - the number of positive and of negative deflections obtained in bins of 6 ms each for a series of 30, 100 and 300 trials. The lowest panels are the mean time distributions from all 6 sessions (1,800 trials) and the conventionally averaged VEP derived from the same data. X-axis: the time coordinate of the time bins with respect to the onset of stimuli - time 0 = trigger of the visual stimulus. Y-axis: the number of deflections obtained per time bin, normalized by the number of trials used (percentage).
40
Because of the filtering (1-30 Hz) and subsequent smoothing (smoothing of traces
was conducted across every 5 data points), there can be no more than one deflection
in a single 6 ms bin during a single stimulus trial. Thus one trial could contribute no
more than one deflection per time bin (6 ms). The Time Distribution of the positive
and negative (separately) deflections obtained over the six different recording sessions
from the same subject could be combined (averaged or summated, wherever
appropriate) into a composite Time Distribution of Deflections. There are thus for
each subject 1,800 stimulus trials (6 sessions, 300 stimulus trials in a session)
contributing to this composite time distribution of deflections. The ordinate (y axis) of
this time distribution is sometimes shown as the total number of deflections per bin
and occasionally as the percentage of trials in that session with deflections in each bin.
In addition, the base to peak amplitudes of these same positive and negative
(separately) deflections within each time bin as a function of pre- and post-stimulus
time were determined and summed, and finally divided by the number of deflections
detected in each such time bin. Note that the number of these deflections may differ
significantly from bin to bin, especially during the period of evoked activity. This
gave the average amplitude per time bin (for each polarity). When this is done for the
300 stimulus trials in a session, for 6 sessions in a given subject, an Amplitude Profile
is obtained (see Figure 7).
41
Figure 7. The Amplitude Profiles. Subject SB (1 session), electrode Oz. The Amplitude Profiles.- the mean amplitudes of the positive and of the negative deflections within each time bin as a function of pre- and post-stimulus time for a series of 30, 100 and 300 trials. The lowest panels show the mean amplitude profiles from all 6 sessions (1,800 trials) and the
conventionally averaged VEP from the same data. X-axis - the time coordinate of the time
bins with respect to the onset of stimuli - time 0 = trigger of the visual stimulus. Y-axis – the sum of the base to peak amplitudes of deflections obtained in the given time bin over the set of trials, divided by the number of deflections detected in this time bin, i.e. mean amplitude of
deflections [V] per time bin.
42
The mean rate of deflections in a given time period (e.g. 300 ms pre-stimulus
period) for a given number of trials was calculated by taking the overall number of
deflections of the same polarity detected in the given time interval in all given trials,
and dividing this by the duration of the analyzed period and the number of trials.
These time distributions of deflections and amplitude profiles provided the
basis for further analysis.
The same recorded EEG, after filtering 1-30 Hz, was also subjected to
conventional averaging, and the time distributions of deflections and the Amplitude
Profiles obtained with this new technique were compared to the conventionally
averaged EPs obtained from the same subjects, from the same recording sites over the
same time period and for the same components. The latency of the conventionally
averaged VEP N1 component was defined as the most negative point between 55 and
95 ms after the stimulus, P1 as the most positive point between 75 and 135 ms, and
N2 as the most negative point between 130 and 206 ms.
The EEG recorded in three of these subjects in the sessions without sensory
stimuli was analyzed and compared in the same subjects to the pre-stimulus period in
the sessions with the sensory stimuli using the new technique in order to specify the
time and amplitude distributions of “true” background activity. This would help in
differentiating the time period which is truly a “response” in nature.
These new analysis techniques (time distribution of deflections and amplitude
profiles) can be used to define background activity and evoked activity, to derive
aspects of the time variability of response activity, amplitude variability, the
differentiation between trials containing a detectable response to the stimulus (single
trial analysis) and those which do not. This technique is protected by a provisional
patent from the U.S. Patent and Trademark Office (60/316,974; Sept. 5, 2001).
43
Results
Differentiation between background and evoked activity - Time distributions and
amplitudes of the EEG deflections: Criteria for determination of the evoked response
applied to young and elderly subjects
This new analysis technique is based on a statistical description of the times of
background deflections (the time distribution of deflections) and of the amplitudes of
these same deflections (the amplitude profile). Such distributions and profiles, along
with the conventionally averaged VEP derived from the same data for a typical young
and a typical elderly subject are shown in Figure 8. One can see clear parallels
between the typical conventionally averaged VEP components (N1, P1, N2) and the
corresponding waves in the time distributions and amplitude profiles in the subjects.
44
Figure 8. Time Distribution of Positive and Negative Deflections, Positive and Negative Amplitude Profiles, and conventionally averaged VEP from a typical young (left) and a typical elderly (right) subject. X-axis: Time before and after the onset of the stimulus [ms]- time 0 = trigger of visual stimulus reversal. Y-axis: Time distributions: Percentage of deflections per time bin, normalized by the number of trials used. Positive and Negative Amplitude Profiles:
Y-axis: Mean amplitude of deflections per time bin in V. VEP waveforms: Y-axis: amplitude
in V.
45
It is important to note that even though more than one recording session was
conducted in this study in order to assess reliability and consistency of the data, in
final analysis there was no need for such lengthy recordings. The consistency across
recording sessions was determined by visual inspection of the Time Distribution of
Deflections and the Amplitude Profiles of all six separate recordings superimposed for
each individual young and elderly subject (see Figure 9). It is clear that the traces
recorded in 6 separate sessions on three different days are consistent with each other.
The data in Figures 6 and 7 also suggest that a minimum of 100 trials from one
recording session would be sufficient to receive representative time distributions of
deflections and a minimum of 300 trials from 1 recording session for representative
amplitude profiles of the background and evoked activity for each individual subject.
46
Figure 9. Six separate recordings of Time Distribution of Positive and Negative Deflections, and Positive and Negative Amplitude Profiles superimposed from a typical young (left) and a typical elderly (right) subject. X-axis: Time before and after the onset of the stimulus [ms]- time 0 = trigger of visual stimulus reversal. Y-axis: Time distributions: Number of deflections per time bin. Positive and Negative Amplitude Profiles: Y-axis: Mean amplitude of deflections
per time bin in V.
47
One of the primary functions of these novel techniques is the use of the
time distributions of deflections for the differentiation between background and
evoked activity. The time distribution of deflections provides the number of
deflections at any given time period for all of the stimulus trials over the entire
recording session. The first question that must be addressed is how to differentiate
between the EEG deflections that are associated with background activity and
those associated with the response to a stimulus. The 300 ms pre-stimulus period
can be considered as being representative of background activity, since as can be
seen in Figure 8 for electrode Oz (above the primary visual cortex), the deflections
have a “uniform” pattern, i.e. there is no significant difference between the
number of positive and the number of negative deflections across trials at any
given time during this period. On the other hand one may assume that the response
to a stimulus would be characterized by changes in the number of deflections at
specific times and for different polarities (i.e. when there is a disproportionate
increase in the number of positive deflections over the number of negative
deflections or vice versa as can be seen in Figure 8). For example, note that
shortly after 100 ms after the stimulus, the number of positive deflections is much
greater than the number of negative deflections and this takes place at the same
time as the peak of the P1 component of the conventionally averaged VEP derived
from the same data, shown below.
In order to define a statistical criteria for the time of appearance of an evoked
response, one must first define the variance of the background activity for the time
period described above. An evoked response will then be indicated by a significant
increase in this variance above some critical level.
One may assume that the difference between the number of positive and
48
negative deflections in the time bins representing the background activity across trials
would be small and differ only by chance from zero, i.e. the probabilities of detecting
positive or negative deflections in the particular time bins (across trials) would be
equal. In order to obtain a statistical measure of this variance between the number of
positive and negative deflections and a measure of the disproportion between the
number of positive and negative deflections which would help differentiate between
background and evoked activity, a parameter D (=Disproportionality) was defined as
the normalized difference between the numbers of positive and negative deflections
obtained in the particular time bin over the set of trials:
where
#p –number of positive deflections obtained in particular time bin, - obtained from the
Time Distribution of Positive Deflections;
#n –number of negative deflections obtained in particular time bin, - obtained from
the Time Distribution of Negative Deflections;
The D value should be distributed approximately as a standard normal
variance N(0,1) if the probability to obtain positive deflections in the given time bin
over N trials is equal to the probability of obtaining negative deflections (i.e.
background activity). Figure 10 shows the D-values obtained during the resting EEG
(absence of stimulus) and in the 300 ms pre-stimulus periods in a typical young
subject (subject SB), along with the distribution N(0,1) superimposed. This figure
illustrates that the experimental data during background activity is in agreement with
a standard normal variance distribution.
)#(#/)#(# npnpD
49
Figure 10. Statistical Distribution of D-values during Background Activity. D-values during resting EEG (absence of stimulus) and during pre-stimulus period - subject SB (one session). X-axis : D-values; Y-axis: Percentage of D-values obtained in the given bin of the X-scale. Filled squares = 300 ms pre-stimulus period (background); Empty squares = resting EEG; Bold line = distribution of normal standard variance N(0,1).
Entering values of D into the table of normal (Gauss) distribution N(0,1)
provides the criterion for assessing the presence of a D value which is significantly
greater than that during background activity, i.e. the presence of a significant
disproportion between the number of positive and negative deflections. A greater
disproportion would give a higher D value, indicating the presence of substantially
more positive than negative deflections (or vice versa) over repeated stimulus trials,
which can be considered as time locking of deflections (which would then be evoked
activity). For example, a duration of 1300 ms (216 time bins of 6 ms) requires a
critical level Dcr (p <0.05) = 3.5. Note that the critical level of the D value is subject
independent.
50
Onset, termination and duration of the overall evoked response in young and
elderly subjects
Figures 11A and 11B show the time distributions of the positive and of the
negative deflections and in addition, a plot of the D values derived from these time
distributions from all 14 young subjects, superimposed, and separately those for the
14 elderly subjects, for electrodes Oz (Figure 11A) and Pz (Figure 11B).
51
52
Figures 11A and 11B. Time distribution of positive deflections and of negative deflections in all 14 young (left) and in all 14 elderly (right) subjects, superimposed. Below are the respective D-values. The two horizontal lines in the graphs of the D values represent +3.5. X-axis: Time before and after the onset of the stimulus [ms]- time 0 = trigger of visual stimulus reversal. Y-axis: Percentage of deflections and D-values. The two horizontal lines show ±3.5 standard deviations. 11A – at electrode Oz; 11B – at electrode Pz.
53
Using the 3.5 standard deviation D criterion (the critical level Dcr = 3.5 is
indicated in Figures 11A and 11B as the lines parallel to the time axis which are cut
by the profile of the D-values) for evaluating the time region of stimulus evoked
activity, the onset (defined as the time at which the number of the disproportionate
number of deflections of any polarity, and therefore the value of D, initially becomes
greater than the 3.5 standard deviations criterion), the termination (defined as the time
when the D value finally returns to background level before 300 ms post-stimulus)
and duration (the time between the onset and the termination) were determined for the
overall response in both age groups. One can see a significant increase in the D-value
in both directions (positive and negative) in a specific time range (e.g. from 50 to
about 250 ms, the period within which the conventional evoked potential is usually
obtained). The overall evoked activity begins earlier (shorter latency) and has a longer
duration in the young subjects. These data for electrodes Oz and Pz are presented in
Table 1.
Table 1. Mean (SD) of the Onset, Duration, and Termination of the Overall
Response in the Young and Elderly Groups at Oz and Pz electrodes using D value
of +3.5.
Electrode Oz Onset: [ms] * Duration: [ms] Termination: [ms]
YOUNG 63.5 15.3
153.2 37.9 213.7 33.0
ELDERLY 88.4 25.0
131.7 62.2 215.4 44.7
Electrode Pz Onset: [ms] Duration: [ms] * Termination: [ms] *
YOUNG 82.1 32.8
157.7 52.5 236.9 43.1
ELDERLY 87.0 18.4
108.6 48.9 190.7 37.1
* Significant Group Difference p < 0.05
Note that the onset of the response at electrode Oz in the young was
significantly earlier than in the elderly (young = 63.5 15.34 ms, elderly = 88.42 25
ms; p=0.0075, two-tail t-test) (see Table 1). This earlier onset of activity seems to be
54
related to the presence of an additional positive peak in the time distribution of
positive deflections and in the D-values at approximately 70 ms that appeared in
almost all (N=10) young subjects (see Figure 11B), but only in one elderly subject.
This peak was not apparent neither in the amplitude profiles nor in the conventionally
averaged VEPs derived from the same data in most of the subjects (present in the
amplitude profiles in only 1 young and 2 elderly subjects; in the conventionally
averaged VEP in only 1 elderly subject). Also an analysis of electrode Pz showed
significant differences in young and elderly subjects in regards to the duration as well
as the termination of the response (duration: young = 157.7 52.5 ms, elderly = 108.6
48.9 ms; p=0.036) (termination: young = 236.9 43.1 ms, elderly = 190.7 37.1
ms; p=0.0138). The longer duration and later termination of the response seems to be
the result of the majority of the young subjects displaying an additional later positive
peak (best seen at Pz in the distribution of D-values), about 220 ms after the stimulus
(see Figure 11B). This later wave was seen in only a few of the elderly subjects. A
similar analysis can be conducted for each of the other recording electrodes.
Time distributions of the deflections during background activity in young and elderly
subjects - Rate of deflections
In order to assess whether there are differences in the mean number of
deflections of the same polarity during background activity between the young and
elderly subjects, the respective time distributions of the deflections were analyzed.
The analysis was conducted on the data obtained from all 6 sessions in each group for
all subjects for electrode Oz and revealed significant differences between groups in
the rate of background activity at electrode Oz, with the elderly displaying a higher
rate (mean 17.3 1.4 deflections/sec), compared to the young subjects (mean rate of
15.3 0.8 deflections/sec) (p < .001).
55
The same analysis used for the Oz electrode can also be used for all electrodes.
A separate analysis across 16 electrode sites revealed significant group differences
with the elderly having a greater mean number of positive EEG deflections (F (1, 26)
= 13.84, p < .001) in the 300 ms pre-stimulus period. The number of deflections per
second of background activity in the 300 ms pre-stimulus periods for each of the 16
electrodes is shown in Figure 12. Although there were significant group differences
with regards to the rate of deflections, where the elderly had a higher frequency of
background activity, the pattern of these differences across electrode sites was similar
in both groups, indicating that there were no significant scalp topographic differences
between the young and elderly. Thus the rate of deflections in the 300 ms pre-stimulus
period (background activity) in both groups lies between 14-20 deflections/sec and is
significantly greater in the elderly compared to the young subjects.
Figure 12. The number of deflections/sec of background activity for 14 young and 14 elderly subjects across 16 electrodes. X-axis: electrodes. Y-axis: mean rate [deflections/sec].
56
Amplitudes of the deflections during background activity in young and elderly
subjects
Analysis of electrode Oz revealed significant group differences in the base to
peak amplitudes of the same polarity during background activity with the young
displaying higher amplitudes (4.73 1.9 V), compared to the elderly subjects (3.70
0.9 V; p < .001). In fact there were significant differences in the amplitudes of
deflections in background activity for all three parietal as well as occipital electrodes
(Pz, P3, P4, Oz, O1, O2) and not at the other electrodes with larger amplitudes in the
young when compared to the elderly (See Figure 13).
Figure 13. The mean amplitudes of deflections in background activity for 14 young and 14
elderly subjects across 16 electrodes. X-axis: electrodes. Y-axis: V.
A significant Age Group x Electrode Location interaction for the amplitudes
of deflections was found during background activity (F (15, 390) = 10.95, p < .000).
In the young the smallest amplitudes were at electrode T4 (3.46 0.84 V) and largest
at electrode Pz (5.90 2.33 V), while the smallest amplitudes in the elderly were at
electrode Oz (3.70 .85 V) and largest at electrode F4 (5.85 2.35 V). Thus there
is a different scalp topographical pattern of the amplitudes of background deflections
between the young and the elderly.
57
Relation between mean rate of EEG deflections during the 300 ms pre-stimulus
background activity and during the 300 ms overall evoked post-stimulus activity
The mean rate of deflections during the time period associated with
background activity (300 ms pre-stimulus period) was compared to that in the time
period containing all of the overall evoked response in all subjects [(50-350 ms post-
stimulus period (see Table 1)]. The analysis of the Oz-records revealed that while
young subjects showed no significant differences in mean rate between these two time
periods (young: background period = 15.25 .78 deflections/sec; evoked period =
15.10 .67 deflections/sec), the elderly displayed significant differences between the
two time periods, with a lower rate during the evoked period compared to the
background activity (elderly: background period = 17.11 1.52 deflections/sec,
evoked response = 16.75 1.78 deflections/sec (p < .02).
Time distributions of deflections related to the individual components of the
evoked response - Partial time distributions of deflections corresponding to the
components of the evoked response: determination and parameters used
The time period associated with the overall evoked response can be further
broken down into the time periods that correspond to the typical conventional
averaged evoked potential VEP components i.e.: N1, P1 and N2. The correspondence
between the known components of conventional EP, the time distributions of
deflections and D-values permits the separation of the overall time distribution of
deflections of evoked activity into its local distribution for individual EP components.
Each such time period is characterized by an increase in the number of deflections of
a specific polarity (over that of the opposite polarity) at a specific time period. For
example, with respect to the peak of N1, the point in time where the D value crosses
58
the zero line in the negative direction (see Figure 11A) is defined as the beginning of
this partial time distribution of deflections (T1), while the ascending zero crossing is
the end (T2) of this distribution. In this way one can define a partial time distribution
of deflections for each component (i.e.: N1, P1 and N2). Thus the T2-T1 for each
wave can be considered the width or duration of a partial time distribution of
deflections for that wave (Note that here when determining the partial time
distributions for each component, a D-value of zero was used, while when assessing
the overall response, a D-value of +3.5 was used).
Borders and duration (width) of the partial time distributions related to the N1, P1
and N2 components of VEP in young and elderly subjects
The values of T1, T2 and T2-T1 at Oz electrode for the young and elderly
subjects are shown in Table 2. For component P1 at Oz electrode, the elderly subjects
demonstrated a significantly longer latency of T2 (p = 0.000072, two-tail t-test).
Significant group differences of T1 for component N2 (p = 0.0325) were also
obtained, where the young subjects had an earlier onset of the response related to that
partial time distribution of deflections. Table 2 shows that there is a significant aging
effect for T2-T1 (duration) of the partial time distributions of deflections for the
individual components N1 (p = 0.0285) and P1 (p = 0.0197), with the elderly having
longer durations of the distributions. The longer durations (T2-T1) for components N1
and P1 in the elderly subjects are signs that the deflections are more dispersed in time,
that there is poorer time locking and greater time variability. From the time
distributions and the plot of the D values in Figure 11A, one can see that the partial
time distributions of the N1 and P1 deflections are also more prominent and consistent
in the young subjects.
59
Table 2. Borders and Duration (mean SD) of the Partial Time Distributions of
Deflections contributing to the N1, P1 and N2 components of the evoked activity in
the young and elderly groups at electrode Oz, using D value of zero.
T1 [ms]: Left border of the partial
distribution N1 P1 N2*
Young 73.4 7.4 103.8 5.3 133.6 4.3
Elderly 69.1 12.3 108.5 11.7 148.4 12.2
T2 [ms]: Right border of the partial
distribution N1 P1* N2
Young 94.8 6.5 128.2 4.6 171.0 17.4
Elderly 95.6 11.5 140.2 7.6 177.9 14.6
T2 – T1 [ms] Duration of the
Component N1* P1* N2
Young 24.4 3.0 27.4 4.8 40.4 16.5
Elderly 29.6 7.4 34.7 9.2 32.6 11.2
* Significant Group Differences p< 0.05
Mean number of deflections per single stimulus trial for the partial time distributions
of N1, P1, N2 in young and elderly subjects
The number of deflections appearing within the duration (T2-T1) of each
partial time distribution (for the N1, P1 and N2 components) over all trials (300) in a
session was assessed. Dividing this total number of deflections in a session by the
number of trials in the session (300), gives the mean number of deflections per
stimulus trial. Table 3 presents the data obtained for components N1, P1, N2 at
electrode Oz in young and elderly subjects. Note that these mean values of
deflections per trial are less than one, showing that not all stimulus trials contributed
deflections within the time period related to the given response component, i.e. there
are single stimulus trials which fail to contribute to the average response. One can see
that the mean number of deflections per stimulus trial related to components N1, P1
and N2 (consistently less than one) is not significantly different between young and
elderly subjects.
60
Table 3. Mean number of deflections per trial contributing to Time Regions
(T1, T2) of the Response Components (Resp) and relative number of
contributing deflections with regards to background activity (Bgrd) in the
Young and Elderly. Electrode Oz
Component N1
Parameter Deflections/Trial Ratio: Defl(Resp)/Defl(Bgrd)*
Young 0.69 0.11 1.50 0.23
Elderly 0.64 0.14 1.19 0.10
Component P1
Parameter Deflections/Trial Ratio: Defl(Resp)/Defl(Bgrd)*
Young 0.79 0.10 1.59 0.26
Elderly 0.82 0.18 1.27 0.14
Component N2
Parameter Deflections/Trial Ratio: Defl(Resp)/Defl(Bgrd)
Young 0.86 0.23 1.28 0.13
Elderly 0.77 0.19 1.21 0.09
* Significant Group Differences p< 0.05
Only those stimulus trials with a deflection in the relevant time period of each
of the components N1, P1 and N2 could contribute to the corresponding component
found in the conventionally averaged VEPs derived from the same data. These can be
referred to as stimulus trials with appropriate deflections (responding trials) and can
be used to differentiate between contributing and non-contributing single trials and
lead to further separate analysis (single trial analysis). The onset and termination of
the partial time distributions of the deflections for each response component was
determined (Table 2) in each subject. Therefore one can go back and scan all single
stimulus trials in each subject and identify and extract those single stimulus trials
which had an appropriate deflection within the T1-T2 time period of the partial time
distribution of a component wave. This has been done for component P1 in all young
and elderly subjects and there was a mean number of 235.5 29.8 responding trials
out of the 300 in a session (i.e. 78.5%) in the young subjects and 239.2 41.4 in the
elderly (i.e. 79.7%). There was no significant difference between the mean numbers
of responding trials between the young and elderly subjects and the mean number
61
across all subjects (young and elderly) which contributed to the P1 component was
79.1%. A similar analysis could be conducted for components N1 and N2.
One can also compare, during the partial time distribution of deflections of
each of the components (N1, P1, N2 separately), the ratio of the number of evoked
period deflections to the number of deflections which occurred during an equivalent
time duration during the pre-stimulus period over all trials in a session. This too is
shown in Table 3 (right). Note that the ratios for each of the response components
separately are consistently greater than one, indicating that there are more deflections
during the partial time distribution periods of evoked activity compared to equivalent
periods of background activity and the ratios are significantly different between the
young and the elderly for components N1 (p = .0001) and P1 (p = .0001), where the
young demonstrated a greater concentration of deflections in the time period related to
the response than during the equivalent time period of background activity.
Variability of latencies of the EEG deflections contributing to the N1, P1 and N2
components of VEP
The dispersion of the deflections within the partial time distribution of a
response component may differ between the young and elderly and the degree of this
dispersion (variability) can be expressed in several ways. For example in a previous
section, it was shown (Table 2) that in the elderly, the durations of the partial time
distribution of components N1 and P1 were longer (an indication of greater
dispersion, variability and poorer time locking) than those in the young.
The dispersion of the deflections contributing to each response component can
also be quantified as the standard deviation around the mean time of those deflections
contributing to each component. The mean latency of deflections contributing to each
62
response component (N1, P1, N2) in both groups and its standard deviation are given
in Table 4 for electrode Oz. The mean latencies of deflections contributing to the
partial Time distributions related to N1, P1 and N2 components of the response at the
Oz electrode did not differ between the groups, but the standard deviations of the
latencies for electrode Oz were significantly smaller (less time jitter) in the young for
components N1 (p = .011) and P1 (p = .0001).
Table 4. The variability of the responses within the Partial Time Distribution of
Deflections for the young and elderly groups at electrode Oz.
Mode [ms] – time of the peak number
of deflections: Tpeak N1 P1 N2*
Young 84.3 8.7 116.5 4.4 152.5 11.0
Elderly 83.9 15.1 113.9 12.3 164.1 12.4
Mean Latency of deflections [ms] N1 P1 N2
Young 85.7 7.1 115.7 4.6 155.0 12.7
Elderly 82.8 11.8 121.7 9.8 163.6 12.4
Standard Deviation of the deflection’s
appearance: [ms] N1* P1* N2
Young 6.9 0.8 7.5 1.3 11.0 2.9
Elderly 8.7 2.2 11.5 2.7 9.7 3.1
Asymmetry (mode – mean) [ms] N1 P1* N2
Young -1.4 2.8 0.8 3.2 -2.5 13.1
Elderly 1.1 4.8 -7.8 11.3 0.5 5.2
* Significant Group Differences p< 0.05
Finally the shape of the partial time distribution of deflections for each
component may not be symmetrical around the time of the peak number of deflections
(mode). This asymmetry can be expressed as the difference in milliseconds between
the time of the mode and the time of the mean. This is also given in (Table 4) and it
can be seen that the elderly displayed a significantly greater amount of asymmetry for
the peak of the partial time distribution of component P1 (p= .002) suggesting a
tendency to prolongation of the P1-latency in elderly in spite of the fact that the mean
and mode measures of the latency of the deflections did not differ significantly
between the young and elderly subjects.
63
Time locking of the EEG response deflections
The magnitude of the D-value can serve as a measure of the degree of time
locking of deflections contributing to a response component since a greater D-value
indicates a greater degree of grouping of the deflections within a narrow time period
(see Figure 11A). The peak D-values derived from the partial time distributions of
deflections in the two age groups were therefore compared. This data is presented in
Table 5 for electrode Oz.
Table 5. Peak values of the D-values (from formula 1) related to the N1, P1 and N2
components of the evoked response in the young and elderly subjects at electrode Oz.
N1* P1* N2
Young (n=14) -12.3 5.0 15.2 4.6 -8.7 3.3
Elderly (n=14) -5.3 2.6 8.1 3.5 -6.8 4.0
* Significant Group Differences p< 0.05
This analysis revealed that the young displayed a higher degree of time
locking at the Oz electrode for all three components and it was significant for N1 (p =
.00022; two-tail t-test) and for P1 (p = .00019). Figure 11A shows the distribution of
D-values for components N1, P1, and N2. One can see that they are higher, sharper
and narrower in the young subjects. One can conclude from this section that the
timing of the responses in the young subjects have less time variability by all
measures used.
Comparison between latencies of the peak D-values of the partial time distributions of
deflections and latencies of conventionally averaged VEPs
Comparison of the times of the peak D-values for each component (N1, P1,
N2) between the two groups (young and elderly), presented in upper part of Table 6,
showed significant differences only with respect to the N2 component (p = 0.0415,
two tail t-test), which was longer in the elderly.
64
The analysis of latencies derived from the conventionally averaged VEPs did
not reveal significant differences in latencies of the components between the groups
(Table 6, below). Comparison between the times of the peak D-values and the
latencies of the conventional VEP (from the same data) showed that the latencies of
the D-value peaks were significantly longer than the conventionally averaged VEP for
the N1 component [p = 0.000032 in young (n=14) and p = 0.0015 in elderly (n=12);
two-tail, paired t-test]. The opposite latency difference was seen for N2 in young (p =
0.00074, two-tail, paired t-test) and in elderly (p = 0.0032) subjects. On the other
hand, the P1 latencies of the D- peak and P1 VEP were practically identical both in
young and in elderly subjects.
Table 6. Latencies of the peak D-values of the Partial Time Distributions of
Deflections and of conventionally averaged VEPs in young and elderly subjects,
electrode Oz.
Latency Peak D-Values [ms] N1 P1 N2*
Young 84.5 8.4 116.6 3.8 146.1 7.5
Elderly 86.2 13.1 122.2 12.0 160.4 12.0
Latency Conventionally Averaged
VEPs [ms]
N1 P1 N2
Young 79.6 8.7 116.1 4.8 160.4 14.3
Elderly 76.0 8.4 120.7 8.0 170.4 11.3
* Significant Group Differences p< 0.05
Amplitude amplification of the deflections contributing to the evoked response
components
The mean amplitude of the deflections which contributed to the partial time
distributions related to N1, P1 and N2 components can be considered as an additional
65
characteristic of the processes leading to the generation of the EP in young and elderly
subjects. These were calculated by taking the mean of the amplitude profile of the
deflections which occurred within the T1-T2 time range specific for each component
and determined individually for each subject. These are given in the upper section of
Table 7. One can also define a parameter “amplification” which reflects the ratio of
this mean amplitude compared to the mean amplitude of the deflections during
background activity (300 ms pre-stimulus activity taken from Figure 12). Such data in
young and elderly subjects at the Oz electrode are also presented in Table 7.
Table 7. Mean amplitude of the evoked period deflections (above), their ratios
compared to the background period (middle) and amplitudes of the conventionally
averaged VEPs related to the N1, P1 and N2 components, in the young and elderly
subjects. Electrode Oz.
Mean Amplitude of evoked period
Deflections V]
N1* P1* N2
Young -5.85 2.88 8.50 2.87 -5.32 2.06
Elderly -3.45 1.10 6.41 1.67 -4.54 1.65
Relative Amplitude (with regard to
background – pre-stimulus – activity)
N1* P1 N2
Young 1.17 0.22 1.88 0.52 1.11 0.44
Elderly 0.86 0.15 1.78 0.52 1.18 0.49
Amplitudes of the conventionally
averaged VEP (all trials) [V]
N1* P1* N2
Young -2.59 1.86 5.49 2.69 -2.25 2.08
Elderly -0.11 0.56 3.32 1.76 -1.52 1.88
* Significant Group Differences p< 0.05.
Note that the mean amplitude of the evoked period deflections is significantly
(2 tail t- test) larger in the young for N1 (p = 0.0028) and P1 (p = 0.0336)
66
components. The ratio of evoked period to background amplitudes was significantly
larger in the young subjects only for the N1 component (p = 0.00044). In most cases
these amplitude ratios were greater than one, and significantly so only for P1 [both in
young (p = 0.0000076) and in elderly (p = 0.000053) subjects], and for N1 component
in young subjects (p = 0.028). This is an indication of an amplification of the evoked
period deflections over those during the background activity. Note that the degree of
this amplification for P1 did not differ between the groups. Even though there was a
significant degree of amplification with respect to N1 in the young subjects (ratio
1.17), the opposite phenomenon was observed in elderly group: this ratio (mean value
0.86) was significantly less than one (p = 0.0043, two-tail t-test). Thus the mean value
of the base-to-peak amplitude of evoked period deflections contributing to N1
component was even decreased (in relation to the background activity) in elderly
subjects, opposite to that seen in the young subjects. The mean amplitude of
deflections contributing to N2 did not differ significantly from background activity
(ratio not different from one).
The comparison of the amplitudes of the conventional VEP between young
and elderly showed the same results as the mean amplitude of the evoked period
deflections: there were significant differences for N1 (p = 0.00032, two-tail t-test)
and for P1 (0.034, one-tail t-test), and this difference for N2 was not significant.
One can also compare the mean amplitude of the evoked period deflections for
each component to the peak amplitude of the conventionally averaged VEP wave
component obtained from the same data (see Table 7). Note the significantly lower
amplitudes of the conventional averaged VEP compared to the corresponding values
of the mean amplitude of deflections. This is due to the finding that there is time jitter
in the response deflections making up the conventional VEP and that not all stimulus
67
trials gave rise to appropriate deflections, providing evidence that conventional
averaging leads to a loss of information, including a smearing of amplitudes.
In addition, linear correlation analysis was conducted between mean amplitude
of deflections contributing to the EP components (N1, P1, N2) and mean amplitude of
the background deflections (see Figure 14). A significant correlation was found for all
three components in young subjects: N1 (r = 0.85, p=0.000092; coefficient of
regression 1.16, intercept 0.02), P1 (r = 0.76, p=0.0017; coefficient of regression 1.22,
intercept 2.75), N2 (r = 0.55, p=0.040; coefficient of regression 0.68, intercept 1.90).
In the elderly group a significant correlation between evoked and background
amplitudes was found only for the N1 component (r = 0.86, p=0.000077; coefficient
of regression 1.03, intercept -0.64). The range of background amplitudes in young
subjects (2.17 – 8.23 V) was significantly (p = 0.0044, one-tail F-test) wider than in
elderly (2.33 – 5.78 V). The correlation in the elderly subjects between background
and evoked period amplitudes for P1 and N2 were small and not significant.
68
Figure 14. Scatter plot of mean amplitude of deflections during evoked activity [A: N1, B: P1, C: N2 components] on the Y-axis versus background amplitude (X-axis) in young (n=14) and elderly (n=14) subjects. Filled squares: young subjects; empty squares: elderly subjects. The linear regression line is for the young subjects (r values are presented; significant (p<0.05) correlation marked by *).
69
Summary of Results and Discussion
In recent studies substantial attention has been devoted to the interrelation of
brain activity evoked by various stimuli and the background brain activity, which are
considered as being interconnected processes (Woody, 1967; Basar et al. 1997; Jansen
and Brandt, 1991; Rahn and Basar, 1993; Arieli et al., 1996; Kisley and Gerstein,
1999). The present study introduces several basic techniques for analysis of scalp
recorded background and evoked electrical activity based on the examination of the
number and of the amplitude of the positive and negative deflections of the EEG.
The chief results of this study include:
1. New analysis techniques provide a description of the evoked and
background EEG activity which then leads to statistical criteria and for the
quantitative differentiation between the background and evoked activity,
which revealed an interrelation of brain activity evoked by various stimuli
and background brain activity.
2. Analysis methods also provide an evaluation of temporal properties of
variation in EP activity (not accessible in conventionally averaged EP).
3. A higher rate of background activity in the elderly subjects when compared
to the young across all 16 electrode sites. The amplitudes of the deflections
during the pre-stimulus (background) period were larger in the young
subjects than in the elderly at the parietal and occipital electrodes.
4. In the elderly subjects there was a lower rate of deflections during the
period of evoked activity (50-350 ms after the stimulus) compared to that
during the 300 ms pre-stimulus (background) period. There was no such
difference in rates of deflections in the young subjects.
5. The critical value of the disproportionality of deflections (D) (3.5 ±
standard deviations) that was used to define the overall period of evoked
70
activity was based on a calculation that is dependent on the overall time
interval used for analysis (i.e. 1300 ms) and on the number of bins in our
analysis (i.e. 216 - 6 ms bins). For example, if the recording period were
shorter thus containing fewer 6 ms bins, a smaller critical value would be
sufficient to determine the disproportionality of deflections related to the
stimulus evoked activity. The reverse would be true with a longer recording
period and greater number of bins. The overall period of evoked activity at
electrode Oz began significantly earlier in the young subjects (see Table 1)
and this seemed to be due to the presence of an earlier positive peak at about
70 ms. That was not seen in the elderly.
6. These new methods of analysis allow the generation of two subsets of
stimulus trials: those that contributed deflections to the partial time
distribution of for example: component P1 and those that do not. Therefore
we can study the properties of these two subsets separately, which is a form
of Single Trial Analysis. The mean number of trials across all subjects
(young and elderly) which contributed to the P1 component was 79%.
Again not all stimulus trials generated an appropriate response. There was
no significant difference between the mean numbers of responding trials (or
deflections) between the young and elderly subjects.
7. Analysis of three VEP components (N1, P1 and N2) using partial Time
distributions of deflections revealed significantly greater variability in the
elderly for components N1 and P1, as well as significantly higher standard
deviations of mean latency for all three components (N1, P1 and N2). The
reverse was true for the young, who demonstrated a greater degree of
stimulus time locking, and narrower time regions related to the VEP
components N1, P1 and N2 at electrode Oz. Greater variability and poorer
71
time locking seen in the elderly may be indicative of age-related peripheral
visual and central deterioration, aging induced variance (jitter) in neuronal
conduction velocity and synaptic transmission.
8. VEP components N1, P1 and N2 are generated both by time-locking
(reorganization of time of deflections) and amplification of amplitude of
EEG deflections and these represent possible mechanisms involved in
generation of evoked activity.
9. The young had significantly higher mean amplitudes for the deflections
within the Amplitude Profiles as well as peak amplitudes from conventional
averages of the same data, related to components N1 and P1 than in the
elderly. Amplitudes measured using the Amplitude Profiles were
significantly higher than the amplitudes found in the conventional averages
derived from the same data, illustrating the distortion caused by averaging.
10. The ratios of the peak amplitudes of the Amplitude Profiles compared to the
mean amplitudes during background activity (pre-stimulus) for all three
response components were greater than one, indicating that there is
amplification during the evoked period. This degree of amplification (ratio)
was larger in the young subjects for N1 and P1 and the difference was
significant for wave N1.
The main result of the present study is the development of new techniques of EEG
and EP analysis which preserves the moment-to-moment variation in scalp recorded
activity, helps differentiate between evoked and ongoing (background) electrical
activity and provides a constructive basis for the study of single evoked responses.
Furthermore, the variability of the single responses can be evaluated by this method.
72
In addition to the new information that can be gained using the Time
Distributions of Deflections and the Amplitude Profiles as well as the new method of
single trial analysis using two subsets, an important aspect of this work concerning the
new methods of analysis proposed here is that they will provide a less cumbersome
and a more simplified approach that can be used for the analysis of single trial evoked
potentials which provides an alternative to previous methodologies that have been
suggested. Some however may consider that the paradigm incorporated in this study,
involving considerable recording time (10 min) as well as many recording sessions (6
sessions – 3 per day) which were conducted over two different non-consecutive days,
to be unwieldy. However, the study was initially designed in this fashion due to the
fact that this was the first application and investigation of the newly proposed analysis
techniques, thus requiring that sufficient controls (i.e. more than one recording) be
conducted to ensure reliability and consistency of the data and findings over more
than one session and over different days, as well as being able to assess any possible
physiological or psychological changes an individual might experience such as
changes in mood or alertness that might induce variations in the recorded activity. It
was seen that the data collected over 6 recording sessions were internally consistent
(see Figure 9) and therefore there is no need to continue using 6 recording sessions. In
fact, visual inspection of the data (in Figure 6) suggested that a minimum of 100
stimulus trials from one recording session would be sufficient to obtain representative
time distributions of deflections and a minimum of 300 trials from 1 recording session
for representative amplitude profiles of the background and evoked activity for each
individual subject within the framework of this paradigm. In future studies fewer
recordings with shorter time durations of sessions should provide adequate data that
would reliability illustrate a representative picture of the subjects electro-cortical
activity. It is important to note that with the use of different types of stimuli (i.e. with
73
different intensities or even pattern-reversal checkerboards with different check sizes,
different reversal rates, different modalities (e.g. auditory), different response
components (e.g. P50 of the AEP), etc…) as well as different experimental factors
(i.e. different subject groups or recording conditions), the number of trials or even the
number of sessions necessary to attain representative data using these proposed
analysis techniques might vary.
The algorithm used in the present study is based mainly on the relatively high
frequency range of the EEG (7-30Hz i.e. alpha and beta range). The high frequency
cutoff at 30 Hz is due to filtering of the EEG. The low frequency cutoff at 7 Hz is a
result of the algorithm, which detects all successive EEG deflections even if they are
small in amplitude, ignoring the low frequency EEG fluctuations upon which the
smaller amplitude, higher frequency deflections are superimposed. Synchronization
of the alpha-beta frequency deflections with onset of the visual stimulus seems to be
limited to latencies up to 200 ms. Thus later components (e.g. P300) might be
generated by EEG waves still lower in frequency content. In principle, the method
described here based on the time distributions of deflections and amplitude profiles
can be easily adapted to these later lower frequency components, by utilizing a filter
with a low frequency cutoff (below 7 Hz) and a slightly different algorithm.
These new analysis techniques, based on the time distributions of
deflections, D-values and amplitude profiles of deflections before (background)
and after (evoked) stimuli has succeeded in demonstrating several important
differences between young and elderly normal subjects.
Since the same new techniques were used here to analyze both background
and evoked activity, the properties of these two periods can be compared, e.g. rate of
deflections, their exact timing, and their amplitudes. A higher rate of background
activity was found in the elderly subjects compared to the young across all 16
74
electrode sites (see Figure 12). These findings seem to be in agreement with previous
reports of higher Beta range frequencies in the elderly when compared to the young
(Polich and Luckritz, 1995; Polich, 1997), though different frequency analysis
techniques were used. The reason for this shift in Beta range frequencies in the
elderly is not clear.
The amplitudes of the deflections during the pre-stimulus (background) period
were larger in the young subjects than in the elderly at the parietal and occipital
electrodes (see Figure 13).
In the elderly subjects there was a lower rate of deflections during the overall
period of evoked activity (50-350 ms after the stimulus) compared to that during the
300 ms pre-stimulus (background) period. There was no such difference in rates of
deflections in the young subjects.
The overall period of evoked activity at electrode Oz, as studied in the time
distribution of the deflections and in the D values, began significantly earlier in the
young subjects and ended later (see Table 1) and this seemed to be due to the presence
in most of the young of an earlier positive peak at about 70 ms and a later peak at
about 220 ms (See Figure 11A). The earlier peak seen in young subjects may be
analogous to the short latency VEP previously reported (Pratt et al., 1982) in response
to flash stimuli. This earlier P70 peak seen in time distribution of deflections and D-
Values in the young subjects was not seen in the conventional averages derived from
the same data. This may be related to the fact that unlike the conventional VEP
which averages both the time and the amplitude of waves, the analysis of D-values
only considers timing. Thus, it is possible that since the P70 wave is smaller in
amplitude than the later N1, P1 and N2 waves and it may have greater amplitude
variability, it may not be readily apparent in conventional averages. It is also possible
that components N1 P1 and N2 undergo greater amplification than the P70
75
component. Also the time distribution of deflections and D-Values emphasize activity
in a higher frequency range (Beta) with less representation of activity in lower
frequency ranges such as theta, delta, and alpha activity. In contrast, the conventional
averages take into account all four frequency ranges. Thus it is possible that the P70
component is generated more by Beta activity than are components N1, P1 and N2.
All of these factors together may contribute to the finding that the P70 is not seen
clearly in conventionally averaged data. Further investigation is necessary to analyze
these factors and as to why the P70 component was not seen in the elderly.
The longer duration and later termination of the overall period of response that
was seen in the young but not in all the elderly subjects was due to a later peak at
approximately 220 ms. This later peak may be related to a component that has been
referred to as the P2 component. Since it is thought that the longer latency
components may be related to cognitive processes, it is possible that the P2
component may reflect more higher order processing since the subjects were
instructed to count the auditory clicks. Thus the absence of the P2 component in the
elderly maybe due to age-related cognitive decline.
An additional interesting result which did not differ between young and
elderly subjects was the finding that only about 79% of the single stimulus trials
contributed positive deflections within the time period of component P1. Thus the
single stimulus trials in a session (300) can be broken down into two subsets of trials,
subset one which contributed positive deflections during the partial time distribution
of component P1 and subset two, which did not contribute such deflections. A
detailed comparison of the specific properties (time distributions, D-values, amplitude
profiles and averaged VEPs) of the two subsets of trials (those which contributed
deflections, separately from those which did not) during background and evoked
activity may contribute to an understanding of the reasons for the absence of
76
appropriate deflections in the second subset. Finally, the lack of age-related
differences in relation to the percentage of stimulus trials that evoked a P1 response is
noteworthy considering the fact that differences were found with respect to other
response parameters and to the degenerative changes in the elderly when compared to
young. This may possibly suggest that the generation of appropriate deflections
related to a particular component (i.e. P1) may be less affected by age-related
neuropathological changes and even remain intact in old age. This requires further
investigation.
Also an interesting finding in the present study was the greater time variability
seen in the elderly in most measures used in this study: duration of a partial time
distribution, the standard deviation around the mean time of each component,
asymmetry between the mode and the mean of the partial time distribution, and the
magnitude of the D-value. This increased amount of variability in the elderly is a sign
of poorer time locking and may partially explain the significant reductions in
conventional averaged EP amplitudes in the elderly.
Of all the response parameters in this study (such as the Time distribution of
deflection, D-Values, Amplitude Profiles, amplification, and variance), only the
latency and amplitudes of the conventional averages derived from the same data can
be directly compared to studies in the literature, since they used only conventional
averaging. We will now compare findings of components N1, P1 and N2 to the
comparable findings in the literature.
Latency Measures
N1
In our study there were no significant age-related differences for the latencies
of component N1 from conventional averages (and for the latencies of the peak D-
values derived from the same data). There are varying reports of age related changes
77
regarding the N1 wave. In a study by Allison et al. (1984) that tested PREPs in 286
healthy individuals aged 4 to 95 years of age, the authors report increasing latency
over the entire age range for the N1 wave. Other authors have also reported longer
latencies in the elderly for the N1 wave when compared to young subjects (Celesia
and Daly, 1977; Kjaer, 1980; Snyder et al., 1981; Shaw, 1984; La Marche et al., 1986;
Emmerson et al., 1994). Celesia et al. (1987) who conducted separate recordings of
PREPs on 112 normal individuals aged 20-70 with two different check sizes 15’ and
31’, found increased N1 latency in the elderly when using the 15’ check size, but in
the recordings in response to the 31’ checkerboards, they did not find any significant
age related differences for the N1 wave. In the present study we used a relatively large
check size (81’) since we thought that it would facilitate viewing in the elderly
subjects that are susceptible to age-related degeneration in the retina. Considering the
findings reported by Celesia et al. (1987) and the fact that we used a relatively large
check size, perhaps the lack of age-related differences is an indication that as the
check size increases the pattern-reversal stimulus becomes less sensitive to latency
differences between young and elderly subjects.
Although there were no significant latency differences for the peak D-values
and for latencies from conventional averages from the same data for component N1
between the two groups in our study, the elderly showed a trend for earlier latencies
than those in the young with respect to latencies derived from conventional averages
(see Table 6), and this may be related to findings reported by Kugler (1999), who
recorded PREPs for a group of 289 healthy individuals ages 18-98 years and found
that N1 latencies were actually earlier for the elderly group in comparison to the
young group.
An additional finding in this study related to latency measures is the
significantly longer latencies of the peak D-values of N1 compared to those found in
78
the conventionally averaged VEP from the same data, both in young and elderly
groups (see Table 6). This discrepancy may partially be due to the conventional
averaging procedure which includes all trials, while the partial time distributions is
composed only of trials which contributed deflections to the particular components
being analyzed (see discussion of 2 subsets above).
P1
In this study no P1 latency differences were found in the conventional
averages between the two groups in this study. [The same was true for the latencies of
the peak D-values derived from the same data]. This is in disagreement with the
widely reported finding in studies that the pattern reversal VEP P1 component of
conventionally averaged data shows a significant increase in latency after the 6th and
7th decades of life (Asselman et al., 1975; Celesia and Daly, 1977; Kjaer 1980; Shaw
and Cant, 1980; Snyder et al., 1981; Sokol et al., 1981; Allison et al., 1984; Kazis et
al., 1983; Allison et al., 1984; Shaw, 1984; Verma and Kooi, 1984; Tobimatsu et al.,
1993; Emmerson et al., 1994). One notable exception to these findings was reported
by Celesia et al. (1987) who, as mentioned above, conducted separate recordings of
PREPs with two different check sizes 15’ and 31’. The 15’ checkerboards revealed
the increased P1 latency in the elderly, but the recordings using the 31’ checkerboards
again did not elicit any significant differences of P1 latency between young and
elderly. Thus the absence of P1 latency differences in our study may be due to the
large check size (81’) which we used (see discussion regarding N1 findings). Another
notable exception was reported by Kugler (1999) who found that the P1 VEP
component did not reveal any significant age related changes in latency. [Thus our
results with respect to the peak times of the D-values (no difference between young
and elderly) are in agreement with these latter studies].
79
When comparing the latencies of the peak D-values with the latencies of the
conventionally averaged VEP for the P1 component in our results, the latencies were
roughly the same for both latency measures, both in young and elderly groups (see
Table 6) (also see discussion regarding related N1 findings).
N2
There were no differences with respect to the latency of the conventionally
average N2 VEP component between the young and elderly in our study. Snyder et al.
(1981) also reported that there were no N2 latency differences between the young and
elderly groups in their study. However, Kjaer (1980) reported that the latency of N2
(referred to as N135) in the elderly was shorter than that in the young group. In
contrast to these findings, there have been reports of increased latency after the 6th
decade for component N2 (Allison et al. 1984; La Marche at al. 1986; Shaw, 1984 and
Sidman et al. 1991).
An additional characteristic of the N2 component was found when evaluating
the partial time distribution for N2, revealing that several elderly subjects displayed
not only one peak in the N2 time range but often two peaks at slightly different
latencies (this can be seen in Figures 11A and 11B). The first N2 peak that appeared
in many of the elderly (145 ms) often had approximately the same latency as the
single N2 peak in the young (146 ms). A second N2 peak appeared in many of the
elderly at 160 ms. It is important to note that the elderly that displayed only a single
N2 peak, had longer latencies (160 ms) than the single N2 peak in the young (146
ms). This suggests that the latency of the conventionally averaged N2 component may
in fact be the result of the averaging together of two sub-components (i.e. N2a and
N2b), which then gives a latency value similar to that in young subjects. Kjaer (1980)
also reported that the N2 was the most variable component in the waveform within a
80
normal group of young and elderly subjects, thus having to omit its latencies from the
analysis.
Similar to studies that reported increased latency of the conventionally
averaged N2 in the elderly (Allison et al. 1984; La Marche at al. 1986; Shaw, 1984
and Sidman et al. 1991), there were in the present study significant age-related
differences with respect to the latencies of peak D-values, with the elderly having
longer D-value latencies. Since not all elderly had the earlier peak, only the latter peak
was included in the comparison of the latencies of peak D-values in the present study,
thus resulting in significantly longer D-value latencies in the elderly (see Table 6).
Again when we compared the latencies of the peak D-values with the latencies
of the conventionally average VEP for the N2 component, the latencies for the peak
D-values were significantly shorter than those found in the conventionally averaged
VEP both in young and elderly groups (see Table 6) (also see discussion regarding
related N1 findings).
When longer N1, P1 or N2 latencies were found in the elderly, they have been
explained by the retinal and neuronal changes mentioned previously. Not all workers
have found such longer latencies in the elderly. Shaw and Cant (1980) have suggested
that the discrepancy between the published results may be partly accounted for by
different pattern luminances employed, as well as other differences in other stimulus
parameters. For example, as discussed earlier, Celesia et al. (1987) found that P1
latency was increased in elderly with smaller check sizes used in PREPs. This was not
seen when larger check sizes were used. This suggests a differential effect of aging on
the various spatial frequency channels of the visual system.
81
Amplitude Measures
The amplitudes of VEPs in the young and elderly have also been widely
studied, but amplitude measures are far more variable than findings concerning P1
latency. In the present study the amplitudes of components N1 and P1 derived from
the conventional VEP from the Oz electrode were significantly greater in the young
than the elderly (see Table 7), as has also been previously reported for the pattern
reversal VEP components N1 in several studies (Kjaer, 1980; Sidman et al. 1991) and
P1 (Kjaer, 1980; Shaw and Cant; 1981). In contrast to these, no significant age related
amplitude changes were found in other studies for the amplitudes of components N1
(Celesia and Daly, 1977; Allison et al., 1984; La Marche et al., 1986; Celesia et al.,
1987; Emmerson et al., 1994) and P1 (Celesia and Daly, 1977; Kazis et al., 1983;
Allison et al., 1984; Verma and Kooi, 1984; La Marche et al., 1986; Celesia et al.,
1987; Sidman et al. 1991; Tobimatsu et al., 1993; Emmerson et al., 1994; Kugler,
1999) between young and elderly. These discrepancies with respect to VEP
amplitudes may be due to different sample sizes and experimental designs which
could yield different amplitude findings regarding age, since amplitude measures are
generally more variable. There were no group differences in amplitudes of component
N2 derived from the conventional VEP from the Oz electrode. Previous findings also
support the lack of any notable group differences with regards to the VEP N2
amplitude (Allison et al., 1984; La Marche et al. 1986), as was seen in this study.
In the present study, significant group differences were also found with respect
to the mean amplitudes of components N1 and P1 derived from the amplitude
profiles, which were greater in the young than the elderly (see Table 7). No group
differences were found with respect to mean amplitudes of component N2 derived
from the amplitude profiles.
82
Amplitudes measured using the amplitude profiles were significantly greater
than the amplitudes found in the conventional averages derived from the same data,
illustrating the distortion caused by averaging (see Table 7). This is probably due to
the fact that the conventional averaging procedure makes use of all stimulus trials in a
session, including those which did not contribute deflections to the response, while
the amplitude profile, by definition is made up only of those deflections which
occurred within the relevant partial time distributions of each component. Thus the
conventional averages are “diluted” by non-contributing trials. In addition, time jitter
of deflections also causes a reduction in conventional averaged EP amplitudes. This
finding highlights one of the main advantages of these new analysis techniques.
The ratios of the mean amplitudes of the amplitude profiles (evoked period)
compared to the mean amplitudes during background activity (pre-stimulus) for P1
component were greater than one, both in young and elderly subjects, indicating that
there is an amplification during the evoked period. There was no difference in the
degree of the P1 amplification (ratio) between young and elderly subjects. Since the
mean P1 amplitude in the young was significantly greater than that in elderly, the
finding of similar amplitude ratios for P1 in young and elderly, is probably due to the
smaller amplitudes of background activity in the elderly at the Oz electrode (see
Figure 13). A significant amplification was obtained also for the N1 component in
young subjects, but the opposite phenomenon (ratio was significantly less than one)
was obtained in elderly subjects (see Table 7).
There was also a significant positive dependence (positive linear correlation)
between evoked period deflection amplitudes for all components (N1, P1, N2) and
background amplitudes in young subjects, and for component N1 in elderly also. This
suggests a strong connection between background activity and evoked activity (e.g. if
83
there is low amplitude background activity then there will also be a lower level of
evoked activity amplitude and vice-versa).
When considering the overall results from the time distributions of deflections
and the amplitude profiles, it is likely that the longer latencies, reduced amplitudes
and greater time variability seen in the elderly are due to age-related changes, for
example in the retina (Porceddu et al., 1990), optic nerve (Dolman et al., 1980), to
decreased nerve conduction velocities (Dorfman and Bosley, 1979), to decreases in
the number of synapses per unit volume of brain tissue (Bertoni-Freddari et al., 1996),
to white matter atrophy (Meier-Ruge et al., 1992), to reduction in neurotransmitters
(Allen et al., 1983) and to decreases in myelin (Lintl and Braak, 1983). These
anatomical and functional changes seen during aging would induce greater variance
(jitter) in neuronal conduction velocity and synaptic transmission, with less consistent
signal processing, a greater variability and longer latencies. On the other hand the
young have intact conduction and cortical processing leading to greater consistency
with less variability in response to the stimuli (i.e. time locking). Topographical
analysis of differences in latencies in the partial time distribution of the various
components, D-values, and mean amplitudes of the Amplitude Profiles may also
provide additional information regarding age-related cortical changes associated with
visual EPs.
In final analysis it seems that the appearance of a peak (component) in the
conventional averaged EP in response to repeated stimuli is probably determined by
two main mechanisms: the time locking of the deflections and an increase in the
amplitude of these deflections (amplification - i.e. the amplitude of the deflections
during the specific period is greater than that during background activity). This latter
mechanism may be attributed to enhanced synchronization of synaptic-dendritic
84
potentials in the cortex initiated by the stimuli. The degree of possible influences of
the amount of time locking of deflections and their amplification on the final EP
should be investigated in further studies. These new techniques can also be used in the
future to assess whether habituation occurred during the recording, and at what point
in time during the session.
The novel methods presented here provide a great deal of additional
information pertaining to age-related differences between young and elderly. This is
with respect to both cortical activity directly related to the response as well as
background activity. This additional information is unavailable when analyzing data
using only conventional averaging or spectral analysis techniques. These novel
techniques provide accurate and reliable additions to conventional averaging, so that
background and evoked activity can now be described also by using the time
distributions of deflections, D-values and amplitude profiles with less loss or
distortion of data. It also contributes to single trial analysis. The conventional EP
averaging technique can also be improved by using only those stimulus trials which
contribute deflections to the various response components. These techniques have also
clearly demonstrated a strong dependence of evoked period activity on background
activity, with respect to timing and amplitude. Therefore it is likely that these
techniques will allow researchers to access important information concerning
underlying physiological differences in a wide range of groups as well as various
types of neuropathology that would not otherwise be possible using the more
conventional forms of analysis.
85
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