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Predictive microbiology Tina Beck Hansen Hazard course, Bureau Veritas, January 31, 2019 What is it? How is it done? What is it used for? How is it used correctly?

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Page 1: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

Predictive microbiology Tina Beck Hansen

Hazard course, Bureau Veritas, January 31, 2019

• What is it?

• How is it done?

• What is it used for?

• How is it used correctly?

Page 2: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Predictive microbiology

2

What is it?

Prediction of microbial behaviour in food environments

Page 3: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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The idea is not new!

3

•1920’s – heat inactivation: D-, z- and F-values

•1930’s – Scott from Australia: … if we know the growth rates of

the meat spoilage organisms, we can predict when meat is spoiled

at different storage temperatures…

Page 4: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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But it accelerated in the 1980’s…

4

• Growth, survival and inactivation of microorganisms in foods are reproducible

responses

• A limited number of environmental parameters in foods determine the kinetic

responses of microorganisms

–Temperature

–Water activity / salt-in-water

–pH

–Preservatives

• Mathematical models that quantitatively describe the combined effect of the

environmental parameters can be used to predict growth, survival or

inactivation of microorganisms

Roberts & Jarvis (1983):

Page 5: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Growth of Brochothrix within 10 days in 1989

5

10 C 3.5 C

Page 6: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Predictive micorbiology

6

How is it done?

Using mathematical equations for description of kinetic responses of microorganisms in food

Page 7: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Procedure for building microbial predictive models

7

Primary modelling

Tertiary modelling

Lag Growth rate Nmax

Secondary modelling

Validation N = No · e µt

Page 8: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Model types

8

Model type Response Predictor Examples

Primary model:

A function describing microbial response over time

CFU

Toxin formation

Metabolic compounds

Absorbance

Impedance

Time

Exponential

Logistic

Gompertz

Baranyi & Roberts

Weibull

Secondary models:

An equation using parameter estimates from a primary model as response

Growth rate

Generation time

Lag phase

Max. population

D-value

Growth/no-growth

Environmental parameters

(Time)

Polynomial

Arrhenius

Square root

CPM-models

ANN-models

z-value

Probability models

Page 9: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Validation

•Does the developed model work for real life situations?

•Comparison of observed and predicted values

•Graphical and/or mathematical

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Page 10: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Graphical validation

10

Observed values

Pre

dic

ted v

alu

es

Fail-safe

predictions

Fail-dangerous

predictions

0.0

0.1

0.2

0.3

0.4

0.5

0.0 0.1 0.2 0.3 0.4 0.5

Pre

dic

ted

gro

wth

rat

e (

log

cfu

/h)

Observed growth rate (log cfu/h)

Page 11: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Mathematical validation

11

Secondary models (growth rates, lag times, D-values)

Bias factor (Bf) =

10(∑log(pred/obs) / n)

Accuracy factor (Af) =

10(∑│log(pred/obs)│ / n)

Illustration: Furqan Nazeeri

Page 12: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Interpretation of Bias factor

12

Interpretation of Bf

Bf > 1, faster growth

Bf < 1, slower growth

Good: 0.95-1.11

Acceptable: 0.87-0.95 or 1.11-1.43

Unacceptable: <0.87 or >1.43

0.0

0.1

0.2

0.3

0.4

0.5

0.0 0.1 0.2 0.3 0.4 0.5

Pre

dic

ted

gro

wth

rat

e (

log

cfu

/h)

Observed growth rate (log cfu/h)

Bf = 0.93

Page 13: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

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Validation – dynamic temperature profile

13

0

5

10

15

20

25

30

0 4 8 12 16 20 24

Tem

per

atu

r (°C

)

Tid i timer

lufttemp.

kødtemp.

Air

Chicken

Time in hours

0

1

2

3

4

5

6

0 4 8 12 16 20 24

L. m

on

ocy

tog

enes

(lo

g cf

u/s

lice)

tid i timer

observeret

forudsigelse

Time in hours

Observed counts

Predicted counts

Page 14: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Tertiary modelling – available tools

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https://foodrisklabs.bfr.bund.de/microbial-modeling-exchange-wiki/

Page 15: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Popular freeware tools

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• Pathogen Modeling Program (PMP)

–USA

–http://ars.usda.gov/services/docs.htm?docid=6786

–http://pmp.errc.ars.usda.gov/PMPOnline.aspx

–>40 models (growth, survival and inactivation)

–Available as freeware

• ComBase

–UK & USA: www.combase.cc

–ComBase Predictor: online models for growth and inactivation for mainly pathogens

–ComBase Perfringens Predictor: online model for evaluation of safe cooling of meat

–ComBase Browser: data for growth or inactivation of food associated microorganisms

Page 16: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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More popular freeware tools

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• Food Spoilage and Safety Predictor (FSSP)

–DK: http://fssp.food.dtu.dk

–Time-temperature integration

–Shelf-life, specific spoilage organisms

–Listeria monocytogenes, histamine formation

• DMRIpredict

–DK: http://dmripredict.dk

–Safety models, L. monocytogenes, Clostridium botulinum, ConFerm, Yersinia enterocolitica, Staphtox predictor, F value calculator

–Shelf-life models, pork, beef and chicken cuts, minced pork, minced beef and bacon

Page 17: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Example and discussion of predictions

17

Listeria

monocytogenes

Generation times in hours

when pH=6, salt-in-water=2 % and no additives

ComBase PMP FSSP DMRI

At 5 oC

At 10 oC

At 20 oC

Page 18: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Example and discussion of predictions

18

Listeria

monocytogenes

Generation times in hours

when pH=6, salt-in-water=2 % and no additives

ComBase PMP FSSP DMRI

At 5 oC 18 13 27 29

At 10 oC 6.7 5.4 10 8.9

At 20 oC 1.7 1.3 3.2 -

Page 19: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

DTU Food, Technical University of Denmark 31 January 2019

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Applications

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What is it used for?

For assessment of microbial food safety and stability:

- Predicting the effect of product characteristics and storage

- Supporting HACCP systems

- Easing education and training activities

- Qualifying QMRA models

Page 20: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

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How are microbial predictive models used correctly?

The model

• Is the model validated?

–Broth vs food

• Is it validated for the specific purpose?

–Specific strain

–Temperature range

–Dynamic temperature profile

The input values

• Are the most important environmental factors included in the model?

–Temperature, salt, aw, pH, CO2, others

• How are the values determined?

–Measured vs calculated

–Units

• Have measurements been repeated?

• How is variability of measurements included?

• How is initial count determined?

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Page 21: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

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Experiment – can we predict temperature abuse from the microbiota in pork?

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Microbiota collection

Inoculation Incubation Sampling

Pooling of carcass-swab and faeces samples

4 oC and 7 oC: chill-stored

12 oC and 16 oC: temperature abuse

16S rRNA gene

sequencing

Predictive modelling

Tasja Buschhardt, 2017

Page 22: Predictive microbiology - DTU Research Database · Predictive microbiology 2 What is it? Prediction of microbial behaviour in food environments . DTU Food, Technical University of

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Temperature driven changes in genus compositions

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Tasja Buschhardt, 2017

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Temperature driven changes in community compositions

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PCoA as a conceptual “ temperature index”, BUT variation needs to be taken into account.

Chill-

sto

red

Faeces Carcass-swabs

Tasja Buschhardt, 2017

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Thank you for your attention