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Mathematical Models for Infectious Diseases

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Over epidemic: animals on 9900 premises were culled ... Culling animals on infected farms and nearby farms ... uninfected farms ( contiguous cull') UK FMD: Data, ... – PowerPoint PPT presentation

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Title: Mathematical Models for Infectious Diseases


1
Mathematical Models for Infectious
Diseases Alun Lloyd Biomathematics
Graduate Program Department of Mathematics North
Carolina State University
2
2001 Foot and Mouth Outbreak in the UK
  • February 19th, 2001 clinical signs of FMD
    spotted at an ante mortem examination of pigs at
    a slaughterhouse
  • January 14th, 2002 final county in the UK
    declared FMD free
  • Over epidemic animals on 9900 premises were
    culledincluding 594 000 cattle, 3 315 000 sheep,
    142 000 pigs
  • Impact to UK economy estimated at 4 to 7
    billion
  • Use of models to interpret incidence data and to
    guide policy decisions (following experience of
    BSE)

3
2001 Foot and Mouth Outbreak in the UK
4
UK FMD Data, Models and Policy
  • Control measures introduced rapidly
  • Movement restrictions
  • Culling animals on infected farms and nearby
    farms
  • Models used to interpret time series (incidence)
    data on a day-by-day basis
  • How rapidly is infection spreading?
  • How well are the control measures working?
  • Models used to predict impact of different
    control measures
  • Vaccination of animals?
  • Culling on nearby but uninfected farms
    (contiguous cull)

5
UK FMD Data, Models and Policy
  • More than one modeling group, employing different
    approaches
  • Model validation (did predictions agree or
    differ?)
  • Recommendations following epidemic
  • Rapid response
  • Usefulness of modeling approaches
  • Need for data to be made available
  • (Report into Infectious Diseases in Livestock
    Royal Society)

6
What is a Model?
  • Simplest explanation consistent with reality
  • Models are widely used in science
  • abstraction of real situation
  • simplification
  • more amenable to experimentation or
    analysis(think about a lab rat or cell culture)
  • A mathematical model is really no different to a
    lab model
  • Just describe some system in mathematical terms
  • Designed so that the model captures important
    features of the system

7
Why Do We Model?
  • To make predictions
  • (weather forecast)
  • To examine scenarios
  • do experiments that we couldnt do in
    reality(compare impact of different control
    measures)
  • To guide data collection
  • what do we need to know in order to make
    predictions?
  • How much data do we need? (c.f. sample-size issue
    in stats)
  • To make sense of data
  • Are there patterns that underlie data?

8
Why Do We Model?
  • To infer biological processes from
    epidemiological patterns
  • Why do number of measles cases rise and fall over
    the course of a year?
  • To provide a quantitative framework within which
    we can ask questions
  • This sometimes helps us pose questions in a more
    precise and meaningful way

9
A Fundamental Principle of Modeling
  • START WITH A SIMPLE MODEL
  • If it works great!
  • If it doesnt work improve it!make it more
    realistic include more complexity

10
The Modeling Process
Data disease incidence record
Epidemiological Processes
Model Predictions
Mathematical Model
11
Simplicity Versus Complexity
  • A general theme of modeling
  • Simple models are easy to understand, but might
    not reflect reality too closely (or at all)
  • Complex models are more likely to be more
    realistic, but are too difficult for us to
    understand
  • Type of model needed depends on the question
    being asked and how much we know
  • What scale map do we need? State/County/City/Subdi
    vision

12
Types of Epidemiological Models
  • Compartmental model
  • divide population according to infection status
    SIR model susceptible, infectious, recovered
  • Makes strong assumptions about
    population(nature of mixing, averaging over
    individuals)
  • Individual based model (agent based)
  • collection of individuals and rules specifying
    behavior

13
Simplest Epidemiological Model
  • Rate at which new infections arise is
    proportional to number of infectious
    individuals
  • This is just an exponential growth model
  • Why doesnt an epidemic continue to grow
    exponentially?Depletion of susceptible
    population
  • Transmission depends on both the number of
    infectives and the number of susceptible
    individuals

14
The SIR model in a closed population
Mass-actionassumption
S
Infection
I
Recovery
R
15
The SIR model in a closed population
  • If bS gt g , number of infectives increases
  • Single epidemic spreads through population
  • Number of infectives falls when S falls below b
    / g
  • We call this ratio the basic reproductive number,
    R0

S
I
16
The Basic Reproductive Number
  • THE central concept of mathematical epidemiology
  • Basic reproductive number givesthe average
    number of secondary infections that result from
    the introduction of a single infective individual
    into an entirely susceptible population
  • If R0 is greater than one, an epidemic can
    occur(each case leads to more than one secondary
    case)
  • Invasion criterion for infection
  • Epidemic ends when S falls below b / g
  • We call this ratio the basic reproductive number,
    R0

17
The SIR model with demography
  • Demography (births and deaths) can be added
  • Susceptible population is replenished by births
  • If R0 gt 1 , system goes to an endemic
    equilibrium
  • Birth rate balances infection rate
  • Infection rate balances recovery

S
Birth
Death
Infection
Death
I
Recovery
R
Death
18
The SIR model with demography
  • Endemic equilibrium approached via damped
    oscillations

S
I
19
The Basic Reproductive Number
  • R0 gt 1 is also a persistence criterion
  • R0 tells us how easy or difficult it is to
    eradicate an infection
  • In well mixed situationsCritical vaccination
    fraction pc 1 - 1/R0
  • Easier to eradicate an infection with low R0 than
    high R0(e.g. smallpox R0 ? 5, measles R0 ? 15)

20
Comparison to Measles Data
  • Oscillations are maintained in the measles
    incidence time seriesbut not in the model. WHY?
  • Seasonal forcing transmission rates are
    higher during school terms than vacations
  • This can be incorporated into the modeling
    framework refine model
  • Seasonality in childhood diseases leads to
    multi-annual oscillations

21
More Complex Models
  • Multitude of ways to make more complex models
  • More realistic ways of describing timecourse of
    infection
  • Stochastic effects (population consists of
    individuals)
  • Persistence becomes a more delicate question
  • Relax mixing assumption not all individuals
    are equally likely to interact with each other
  • Particularly important in models for STIs

22
Deterministic versus Stochastic
  • Differential equations are deterministic
  • They ignore randomness
  • In reality, epidemics are stochastic (involve
    randomness)
  • Re-run an introduction wont get exactly the
    same outcome
  • Distribution of Epidemic Sizes

23
Why is Modeling Difficult?
  • Complexity of the system
  • Lack of information
  • might not know all the details of the biology
  • might not observe all of the relevant variables
    data usually tells us about prevalence or
    incidence, less often about susceptible
    population
  • Parameter estimation issues
  • can we estimate parameters?
  • independently of the data set of interest
    (avoid circularity!)

24
Limitations of Models
  • Modelers must keep in mind the limitations of
    their models
  • Many assumptions are made in their
    formulationwhich of them have important
    effects? Sensitivity and structural stability
  • Can we trust the answer that a model gives us?
  • Garbage in, garbage out
  • Does the model address the whole story?
    Particularly important when guiding policy
    decisions (e.g. economic aspects)
  • Modelers must be particularly careful when
    communicating model results to non-specialists

25
Successes and Failures of Models
  • Successes many examples where models have been
    highly informative
  • Dynamics of childhood diseases (e.g. measles)
  • Models explain temporal patterns
  • Models explain spatial patterns (city to city
    spread)
  • Within-host dynamics of HIV and drug treatment
  • Models, when used to analyze data from drug
    treatment studies, revealed a highly dynamic
    picture of ongoing infection during the long
    asymptomatic phase

26
Successes and Failures of Models
  • Failures? Where models have been less informative
  • Prediction of variant CJD in UK, following BSE
    epidemic
  • Models gave an incredibly wide range of
    predictions of the potential number of cases
    (e.g. between 29 and 10 million cases)
  • Insufficient information to parameterize
    model(in particular, CJD has a long and variable
    incubation period, so there is tremendous
    uncertainty in the early stages of an epidemic)
  • Modelers did acknowledge the weaknesses of their
    approach
  • Models highlighted information that would be
    needed

27
Summary
  • Epidemiological models provide a useful framework
    within which we can understand epidemiological
    processes
  • Increasing use of modeling in public health
    settings
  • Importance of confronting models with data,
    understanding and challenging assumptions and
    realizing their limitations
  • Infectious Disease Modeling course next semester

28
UK Foot and Mouth Disease Movie from Grenfell et
al. Science 2001
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