mathematical modeling applied to neuroscience

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Mathematical modeling applied to neuroscience Amitabha Bose Department of Mathematical Sciences New Jersey Institute of Technology Hunter College High School 2013

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Mathematical modeling applied to neuroscience. Amitabha Bose Department of Mathematical Sciences New Jersey Institute of Technology. Hunter College High School 2013. Mathematics and the Natural World. - PowerPoint PPT Presentation

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Page 1: Mathematical modeling  applied to neuroscience

Mathematical modeling applied to neuroscience

Amitabha BoseDepartment of Mathematical Sciences

New Jersey Institute of Technology

Hunter College High School 2013

Page 2: Mathematical modeling  applied to neuroscience

Mathematics and the Natural World• “The Unreasonable Effectiveness of Mathematics in

the Natural Sciences” published in 1960 by Nobel Prize winning Physicist Eugene Wigner

• Gives numerous examples from physics like Newton’s gravitational laws or Einstein’s theory of relativity

• “How can it be that mathematics, being after all a product of human thought which is independent of experience, is so admirably appropriate to the objects of reality?” — Albert Einstein

Page 3: Mathematical modeling  applied to neuroscience

Mathematics and Life Sciences

• Wigner concludes with “A much more difficult and confusing situation would arise if we could, some day, establish a theory of the phenomena of consciousness, or of biology, which would be as coherent and convincing as our present theories of the inanimate world.”

• “There is only one thing which is more unreasonable than the unreasonable effectiveness of mathematics in physics, and this is the unreasonable ineffectiveness of mathematics in biology.” — Israel Gelfand

Page 4: Mathematical modeling  applied to neuroscience

Mathematical Physiology• Many successful applications of mathematics to “solving” biological

problems• Derivation of the Hodgkin-Huxley equations (1952)• FitzHugh-Nagumo equation (1962)• Understanding cardiac dynamics (Peskin 1970’s on, Keener 1980’s

on)• Understanding dynamics of pancreatic beta cells associated with

diabetes (Miura 1970’s, Sherman 1980’s)• Neuroscience – Rinzel, Wilson-Cowan 1970’s on, Kopell, Ermentrout

1980’s on, Terman 1990’s on• Great book by Art Winfree “The Geometry of Biological Time (1980)• Other important texts by Jim Murray, Keener & Snyed, Hoppensteadt

& Peskin, Edelstein-Keshet

Page 5: Mathematical modeling  applied to neuroscience

Outline

• Basics of neuroscience, circuit theory and differential equations

• Numerous applications of math & neuroscience

Q. What is the appropriate level of detail for modeling?Q. Is there any fun mathematics to be done?

Page 6: Mathematical modeling  applied to neuroscience

Typical Neuron

Applied Mathematician’s

NeuronMathematician’s

Neuron

nRx

xfx

)('

Page 7: Mathematical modeling  applied to neuroscience

What is a derivative?

• A mathematical object that measures the rate of change of a quantity

• Ex: the slope of a line measures the rate of change of the “rise” to the “run”.

• Ex: think of the formula s = v·t to measure distance s. The change in distance per unit time is the velocity. As the unit of time is made smaller, this rate becomes the derivative ds/dt = v.

Page 8: Mathematical modeling  applied to neuroscience

What is a differential equation?

• An equation composed of derivatives and functions of the dependent and independent variables.

• Ex: Damped Pendulum

• Differential equations can be “solved” by analytically or numerically integrating them for a given set of initial conditions.

2

2 sin 0d ddt dt

Page 9: Mathematical modeling  applied to neuroscience

Modeling a neuron as an RC circuit

• Membrane separates charge• Ions flow through channels causing voltage changes

Page 10: Mathematical modeling  applied to neuroscience

1,i mm

m m

V I R gR

dVC I gVdt

C ,

C

m c

m c

dQQ V Idt

dV Idt

,m c iI I I

currentchargevoltageresistancecapacitance

IQVRC

Page 11: Mathematical modeling  applied to neuroscience

Hodgkin-Huxley type equations,( , )

( )( )

( )( )

app ion i i

i i

m

i i

h

dvC I I v m hdt

dm m v mdt v

dh h v hdt v

( ) ( )[ ]

( ) ( )[ ][ ]

Na

K

p qNa NaNa Na

r sK KK K

L L L

I g m v h v v V

I g m v h v v VI g v V

Page 12: Mathematical modeling  applied to neuroscience

Why are action potentials important?

• Action potentials are measurable events• The timings or firing rate of action potentials can

encode information- orientation selectivity in visual cortex- coincidence detection for sound localization- place cells in hippocampus

• Neurons can communicate with one another using action potentials via synapses or gap junctions.

Page 13: Mathematical modeling  applied to neuroscience

Crustacean Pyloric Rhythm (CPG)

PD

LP PY

Bean, Nature Rev. Neuro. 2007

Nadim et al, 2000’s

Page 14: Mathematical modeling  applied to neuroscience

Visual Cortex• Neurons fire at preferential orientations

Hubel and Wiesel 1962 and related work

Many mathematical models for describing this phenomenon

Page 15: Mathematical modeling  applied to neuroscience

The brain is good at detecting edges, but not so good at other things…

Page 16: Mathematical modeling  applied to neuroscience

Count the black dots

What kind of mathematical model can explain this?

Page 17: Mathematical modeling  applied to neuroscience

Perceptual Bistability

Rinzel and collaborators are developing mathematical models to explain bistability

Page 18: Mathematical modeling  applied to neuroscience

Auditory CortexCoincidence detection

• Neurons have higher firing rate when they get coincidental input from left and right ears

• Owls use this to locate prey and prey to locate owls

• Jeffress delay line model for barn owls (1948)

Page 19: Mathematical modeling  applied to neuroscience

Model for coincidence detection(Cook et al, 2003, Grande & Spain 2004)

O1 O2

NL

P

t

tP

O1 O2

Calculate NL firing rate as a function of phase independent of frequency of O1 and O2

Page 20: Mathematical modeling  applied to neuroscience

Place cells• Pyramidal cells in hippocampus fire only when animal is in a

specific, known location (transient & stable)• Uses visual cues to trigger memory recall • O’Keefe (1971)

Page 21: Mathematical modeling  applied to neuroscience

Model for place cell firing(Bose, Booth,Recce 2000)

PLACE FIELD

T P

I1 I2

InhibitionExcitation

P = Place cells

Model Predictions• Location within place field• Length of place field• Behavior in running wheel

Page 22: Mathematical modeling  applied to neuroscience

Parkinson’s Disease• Believed to be a disorder of the Basal Ganglia• Results in tremor, uncontrollable motions,

inability to begin movement • No experimental consensus on what causes PD

or how it can be treated• Mathematicians have gotten involved with

experimentalist to figure out the underlying neural mechanisms

• Peter Tass’ group (Germany) • Terman, Rubin, Wilson (US)• Kopell, Wilson (US)

Page 23: Mathematical modeling  applied to neuroscience

PD results when the output from Gpi/SNr becomes too synchronized

I

For severe cases, Deep Brain Stimulation has shown remarkable promise for alleviating PD symptons. We don’t know why DBS works?!

Page 24: Mathematical modeling  applied to neuroscience

Rubin & Terman (2004) proposed that DBS targets STN

• Normal state: Irregular, no correlations in STN cells

• Parkinsonian state: Rhythmic, STN cells cluster

Page 25: Mathematical modeling  applied to neuroscience

Modeling Sleep Rhythms

• Your brain is very active when you are asleep!• The function of sleep is still not totally

understood, but it is important for learning, for the immune system, for growth…

• REM sleep – Rapid Eye Movement sleep (dreaming)

• Mathematicians are creating models to help explain different electrical rhythms seen in different stages of sleep

Page 26: Mathematical modeling  applied to neuroscience

Stages of sleep for humans

• we focus on the transitions between sleep/wake and REM/NREM sleep• sleep patterns of rodents are similar, with more brief awakenings

Page 27: Mathematical modeling  applied to neuroscience

Model (Kumar, Bose, Mallick 2012)

CRF

R-ON

GABA

R-OFF

MRF

POAH

HOM

CIRC

GABASNr

ORX

excitationinhibition

Wakefulness associated areasMRF : Mid brain reticular formationORX : Lateral hypothalamic

orexinergic neurons. Sleep associated areas

POAH : Preoptic anterior hypothalamus CRF : Caudal reticular formation

REM sleep associated areasR-ON : LDT/ PPT cholinergic neuronsR-OFF : LC Noradrenergic neuronsGABA : GABAergic inter neurons in LC

Other inputsHom : Homeostatic sleep driveCirc : Circadian clock from SCNGABASNr : GABaergic neurons from

substantia niagra pars reticulata

Feed-forward control of one flip-flop circuit by another

Page 28: Mathematical modeling  applied to neuroscience

Sleep/Wake Transitions

No REM activity in this trace

wakesleep wake sleepFast transitions controlled by POAH

Consistent with Szymusiak et al 1998

REM-ON

REM-OFF

POAH MRF

Page 29: Mathematical modeling  applied to neuroscience

Transitions to REM sleep

GABA-ergic input from SNR can instigate REM-on activity consistent with the Pal & Mallick (2009) conjecture

wake

Page 30: Mathematical modeling  applied to neuroscience

Sleep deprivation

Prolonging the wake state leads to a longer subsequent sleep episode

See Phillips & Robinson (2008) for a systematic study of effects of sleep deprivation

Page 31: Mathematical modeling  applied to neuroscience

Loss of orexin input to sleep promoting areas disrupts sleep/wake transitions

Consistent with studies of narcolepsy (Peyron et al 2000)`

gopi = 0.6gopi = 1.0 gopi = 0.1

Page 32: Mathematical modeling  applied to neuroscience

• Gap-junctions are physical connections between neurons that allow current to flow between them

• Can an action potential in cell 1 evoke an action potential from cell 2?• Dynamics of gap-junctionally connected neurons have been subject of

prior investigation (Sherman-Rinzel 93, Chow-Kopell 98, Lewis et al. 2000, 01, 03, Medvedev et al. 2000, 08, 10, and many more)

• Lewis and Rinzel (2000) asked the question of whether periodic activity could be sustained in a network of neurons connected by gap-junctions. For specific network architectures (like cycles) they provide estimates on frequency based on rates of spontaneous activity.

• Gansert, Nadim and Golowasch (2007) asked how the size and shape of a neuron affects the ability of these networks to sustain activity.

Neuroscience to graph theory

Cell 1 Cell 2

Page 33: Mathematical modeling  applied to neuroscience

Motivation

Figures from Gansert et. al. (2007)

“kernel” of sustained activity

Page 34: Mathematical modeling  applied to neuroscience

Some interesting questions in the context of generating rhythmic activity

● Are there specific architectures that promote sustained rhythmic activity? (Cycles for example)

● How do rules of nodal interaction affect the global dynamics ?

● How important are intrinsic dynamics of individual node in the sustainment of activity?

● In what way are dynamics related to graph structure?

Page 35: Mathematical modeling  applied to neuroscience

Graph Properties

• G(n,p)={all graphs with n nodes and a probability p of an edge between any two nodes}

• The graph property Q consists of a subset of G(n,p) that share a common feature.

Ex. Q1 = {all graphs with a triangle} Q2 = {all graphs that are connected}

G1 G2 G3 G4

G1,G 4 Q2 G2,G4 Q1 G3 Q1, Q2

Page 36: Mathematical modeling  applied to neuroscience

Thresholds for 3 important monotone properties (Erdos, Renyi 1960)

• A property Q is monotone if whenever G Q and G H, then H Q.

• A function p*(n) is said to be a threshold function for a monotone property Q ifp(n)/p*(n) 0 implies that almost no G has Q, and p(n)/p*(n) implies that almost every G has Q

• Appearance of the first edge at p ~ O(1/n2)• Appearance of k-cycles at p ~ O(1/n)• Disappearance of last isolated node at p ~ O((log

n)/n)

Page 37: Mathematical modeling  applied to neuroscience

Relating Dynamics and Graph structure

• In Singh et al (2011, SIADS), we show how random graph structure is related to periodic activity for both spiking and bursting neurons.

• Very non-intuitive results arise involving the giant component of the random graph

• We are currently investigating several theoretical questions in this area.

• Network and graph theory has seen a lot of interdisciplinary work in the area of physics.

Page 38: Mathematical modeling  applied to neuroscience

Conclusion

• Mathematics turns out to be a good language to understand neuroscience.

• Mathematical modeling in close conjunction with experimental work is beginning to make inroads into the understanding of biological systems. There is still a lot of work to be done.

• Science can be advance by considering interdisciplinary approaches.