Gaurav Tuli , Madhav Marathe, S. S. Ravi, and Samarth ...swarup/papers/tuli... · the Union Graph...

1
Slow Decline of Smoking Prevalence Explained through Addiction Dynamics This work has been partially supported by NSF PetaApps Grant OCI-0904844, NSF Netse Grant CNS-1011769, NSF SDCI Grant OCI-1032677, DTRA R&D Grant HDTRA1-0901-0017, DTRA R&D Grant HDTRA1-11-1-0016, DTRA CNIMS Grant HDTRA1-07-C-0113, DTRA CNIMS Grant HDTRA1-11-D-0016-0001, and NIH MIDAS project 2U01GM070694-7 Gaurav Tuli , Madhav Marathe, S. S. Ravi, and Samarth Swarup Results and Conclusions Approach Background and Motivation Addictive Behavior Physical addiction Smoking Mortality due to smoking Psychological dependence CDC. MMWR 2008;57(45):12268. Behan et al. Economic Effects of Environmental Tobacco Smoke Report, Society of Actuaries, 2005. Estimated economic costs of smoking per year $97 billion in lost productivity $96 billion in health care expenditures $10 billion due to secondhand smoke Source 0 0.2 0.4 0.6 0.8 1975 1980 1985 1990 1995 2000 Fraction of population smokes Years 0 0.2 0.4 0.6 0.8 1965 1970 1975 1980 1985 1990 1995 2000 2005 2010 Fraction of population smokes Years Prevalence of smoking Percentage of adults who are current cigarette smokers, National Health Interview Survey, 1965-2010. Source Feinleib et al. The Framingham Offspring Study: Design and preliminary data, Prev. Med. 4:518-525, 1975. Source National Health Interview Survey Framingham Heart Study Trends in smoking cessation National Health Interview Survey, United States, 2001-2010. National Institute on Drug Abuse. Tobacco addiction, report , 2011. Source 85% of those who try to quit on there own relapse within a week CDC. Average annual number of deaths, 2000-2004, MMWR 2008;57(45):12268. Source Modeling Smoking Epidemics Structured Resistance Model σ j : Prob. of getting infection in state j β : Transmission rate f ij : Prob. with which node in I state changes from state i to j upon recovery γ j : Recovery rate in state j g j : Susceptibility waining rate The model Susceptibility is structured into n states * Susceptibility (or stays same) with infection (or σ j ) Recovery rate (or stays same) with infection (γ j ) Susceptibility ( or σ ) with time based on waning rate g j, j-1 * We adapt and modify a model defined in Reluga et al. Backward bifurcations and multiple equilibria in epidemic models with structured immunity. Journal of Theoretical Biology, 252, 155-165, 2008. Properties of the Model State update equations for fully mixed population S → I transition only if one or more of a node’s neighbors are in an I state Contagion spreads from nodes in I states to nodes in S states, regardless of the I states the spreaders are in Smoking Epidemics Starts with small population A large percentage gets infected after some time There exist a peer influence network Big impact on health Backward Bifurcation When Q is positive and increasing in β then the epidemic bifurcation is a backward bifurcation disease-free unstable endemics stable endemics I β γ S Standard SIS Model Bifurcation Diagram Simulation Setup and Results Conclusions 0 0.2 0.4 0.6 0.8 120 170 220 270 320 370 420 Fraction of population in I States Time Step Offspring cohort social network spanning years 1971-2008 Network with children, adolescents, and adults Edges corresponds to various social and familial ties Time varying social network with edges present at different times and for different duration We assume each edge to be undirected Framingham Heart Study Social Network Degree Distribution of the Union Graph We choose the prob. of S i → I i to be increasing with i σ i ≥ σ j , if i > j; σ n is highest We choose recovery rate γ j to be decreasing with i γ i ≤ γ j , if i > j; γ 1 is highest Infection does not decrease susceptibility f ij = 0, if i > j We experiment with three level structured resistance model Parameters for Simulation Bifurcation Experiment Smoking Prevalence Experiment 1. Initialize network with random 5% of nodes in I 1 and β = 1.3 2. Run the model until it reaches a stationary state 3. Decrease β slowly to simulate increase in awareness 4. Fract. of nodes in I states decrease along the blue curve Two initial conditions: 5% (IC 1 ) and 65% (IC 2 ) nodes in I states IC 1 converges to lower steady state IC 2 converges to upper steady state Lower threshold corresponds to upper steady state Upper threshold corresponds to lower steady state Presented an extended SIS model that captures the dynamics of addictive behavior Levels in the model corresponds to increasing susceptibility and addiction to a behavior Presented model exhibits a backward bifurcation that suggests a possible reason for slow decline of smoking prevalence Model can be extended to build ecology of smoker, i.e., to incorporate: access to cigarettes, exposure to advertisement, socioeconomic status, prices, policies etc.

Transcript of Gaurav Tuli , Madhav Marathe, S. S. Ravi, and Samarth ...swarup/papers/tuli... · the Union Graph...

  • Slow Decline of Smoking Prevalence Explained through Addiction Dynamics

    This work has been partially supported by NSF PetaApps Grant OCI-0904844, NSF Netse Grant CNS-1011769, NSF SDCI Grant OCI-1032677, DTRA R&D Grant HDTRA1-0901-0017, DTRA R&D Grant HDTRA1-11-1-0016, DTRA CNIMS Grant HDTRA1-07-C-0113, DTRA CNIMS Grant HDTRA1-11-D-0016-0001, and NIH MIDAS project 2U01GM070694-7

    Gaurav Tuli , Madhav Marathe, S. S. Ravi, and Samarth Swarup

    Results and Conclusions

    Approach

    Background and Motivation Addictive Behavior

    Physical addiction

    Smoking Mortality due to smoking

    Psychological dependence

    • CDC. MMWR 2008;57(45):1226–8.

    • Behan et al. Economic Effects of

    Environmental Tobacco Smoke

    Report, Society of Actuaries, 2005.

    Estimated economic costs

    of smoking per year

    $97 billion in lost

    productivity

    $96 billion in health

    care expenditures

    $10 billion due to

    secondhand smoke

    Source

    0

    0.2

    0.4

    0.6

    0.8

    1975 1980 1985 1990 1995 2000

    Fra

    ctio

    n o

    f p

    op

    ula

    tio

    n s

    mo

    ke

    s

    Years

    0

    0.2

    0.4

    0.6

    0.8

    1965 1970 1975 1980 1985 1990 1995 2000 2005 2010

    Fra

    ctio

    n o

    f p

    op

    ula

    tio

    n s

    mo

    ke

    s

    Years

    Prevalence of smoking

    • Percentage of adults who are

    current cigarette smokers,

    National Health Interview Survey,

    1965-2010.

    Source

    • Feinleib et al. The Framingham

    Offspring Study: Design and

    preliminary data, Prev. Med.

    4:518-525, 1975.

    Source

    National Health Interview Survey Framingham Heart Study

    Trends in

    smoking cessation

    • National Health Interview Survey,

    United States, 2001-2010.

    • National Institute on Drug Abuse.

    Tobacco addiction, report , 2011.

    Source

    85% of those who try

    to quit on there own

    relapse within a week

    • CDC. Average annual number of

    deaths, 2000-2004, MMWR

    2008;57(45):1226–8.

    Source

    Modeling Smoking Epidemics Structured Resistance Model

    σj : Prob. of getting infection in state j

    β : Transmission rate

    fij : Prob. with which node in I state

    changes from state i to j upon

    recovery

    γj : Recovery rate in state j

    gj : Susceptibility waining rate

    The model

    Susceptibility is structured into n

    states*

    Susceptibility (or stays same)

    with infection (or σj )

    Recovery rate (or stays same)

    with infection (γj )

    Susceptibility ( or σ ) with

    time based on waning rate gj, j-1

    * We adapt and modify a model defined in Reluga

    et al. Backward bifurcations and multiple equilibria

    in epidemic models with structured immunity.

    Journal of Theoretical Biology, 252, 155-165, 2008.

    Properties of the Model

    State update equations for

    fully mixed population

    S → I transition only if one or more of a node’s neighbors are

    in an I state Contagion spreads from nodes

    in I states to nodes in S states, regardless of the I states the spreaders are in

    Smoking Epidemics

    Starts with small population

    A large percentage gets

    infected after some time

    There exist a peer influence

    network

    Big impact on health

    Backward Bifurcation

    When Q is positive and increasing

    in β then the epidemic bifurcation

    is a backward bifurcation

    disease-free

    unstable

    endemics

    stable

    endemics

    I β

    γ S

    Standard SIS Model

    Bifurcation Diagram

    Simulation Setup and Results Conclusions

    0

    0.2

    0.4

    0.6

    0.8

    120 170 220 270 320 370 420

    Fra

    cti

    on

    of

    po

    pu

    lati

    on

    in

    I S

    tate

    s

    Time Step

    Offspring cohort social network

    spanning years 1971-2008

    Network with children,

    adolescents, and adults

    Edges corresponds to various

    social and familial ties

    Time varying social network

    with edges present at different

    times and for different duration

    We assume each edge to be

    undirected

    Framingham Heart Study

    Social Network

    Degree Distribution of

    the Union Graph

    We choose the prob. of Si → Ii to be increasing with i

    σi ≥ σj , if i > j; σn is highest

    We choose recovery rate γj to be decreasing with i

    γi ≤ γj , if i > j; γ1 is highest

    Infection does not decrease

    susceptibility

    fij = 0, if i > j

    We experiment with three level

    structured resistance model

    Parameters for Simulation Bifurcation Experiment Smoking Prevalence Experiment

    1. Initialize network with random

    5% of nodes in I1 and β = 1.3 2. Run the model until it reaches a

    stationary state

    3. Decrease β slowly to simulate

    increase in awareness

    4. Fract. of nodes in I states decrease along the blue curve

    Two initial conditions: 5% (IC1) and

    65% (IC2) nodes in I states IC1 converges to lower steady state

    IC2 converges to upper steady state

    Lower threshold corresponds to

    upper steady state

    Upper threshold corresponds to

    lower steady state

    Presented an extended SIS model that

    captures the dynamics of addictive

    behavior

    Levels in the model corresponds to

    increasing susceptibility and addiction to

    a behavior

    Presented model exhibits a backward

    bifurcation that suggests a possible

    reason for slow decline of smoking

    prevalence

    Model can be extended to build ecology

    of smoker, i.e., to incorporate: access to

    cigarettes, exposure to advertisement,

    socioeconomic status, prices, policies

    etc.