Predicting Human Papilloma Virus Prevalence and Vaccine Policy Effectiveness - PowerPoint PPT Presentation

1 / 36
About This Presentation
Title:

Predicting Human Papilloma Virus Prevalence and Vaccine Policy Effectiveness

Description:

Bridge the gap between the public health domain and mathematical epidemiologists ... gap between the mathematical epidemiologists and professionals in industry and ... – PowerPoint PPT presentation

Number of Views:76
Avg rating:3.0/5.0
Slides: 37
Provided by: cor18
Category:

less

Transcript and Presenter's Notes

Title: Predicting Human Papilloma Virus Prevalence and Vaccine Policy Effectiveness


1
Predicting Human Papilloma Virus Prevalence and
Vaccine Policy Effectiveness
Courtney Corley and Armin R. Mikler Computational
Epidemiology Research Laboratory Department of
Computer Science and Engineering University of
North Texas
2
Motivation
  • Why is a computer scientist interested in the
    spread of diseases?
  • Infection dynamics in complex networks
  • Bridge the gap between the public health domain
    and mathematical epidemiologists

3
Human Papilloma Virus
  • Sexually Transmitted Virus which can lead to
    cervical dysplasia (cancer).

Found in 99.7 of all cervical cancers
Types 16,18,31,45 account for 75 of cervical
cancer
80 of the sexually active adult population will
contract HPV cdc
U.S. spent over 1.6 billion in treating symptoms
of HPV
2004
5-6 billion spent on screening tests such as pap
smears.
4
Human Papilloma Virus
U.S. estimates 13,000 cases of cervical cancer
2005
More than 5,000 will die from cervical cancer
  • Exciting news!

Several candidate vaccines are in phase III
testing with the FDA and broad phase IV trials
have begun
Drug companies are currently in licensing
arbitration
5
Modeling Epidemics
  • Susceptibles- can be infected
  • Infectives are infectious
  • Removed- incapable of transmitting disease
  • Let ß be the transmission rate based on contact
    rate and infectivity
  • Let ? be the rate of infectives becoming
    non-infectious

Susceptible S
Infectives I
Removed R
6
Sexually Transmitted Disease Modeling
  • Sexual activity and sexually active populations
  • Transmission Dynamics
  • Contact rates and activity groups
  • Risk of Transmission
  • Sexual mixing
  • Demographic Stratification

7
HPV
Total Sexually Active Population (?)
Vaccinated Vkl
Vaccinated Infectious VIkl
Recovered Rkl
  • Note A constant population is maintained. Every
    year/update in the model a proportion of the
    population
  • Enters or ages-in as susceptibles
  • Leaves or ages-out

8
Who do we model?
  • We model the individuals who are currently
    sexually active (?)
  • and able to contract the disease

We define the sexually active population age
range (1/µ) as
The range in years (1/µ) in which an individual
changes sexual partners more than once per year
on average
Age (years)
9
Transmission Dynamics
Contact Rates
  • Modeling sexually transmitted diseases is similar
    to modeling other infectious diseases, they
    depend on

Population Mixing
The contact-rate (cl) is the number of partner
changes per year
High
We define three sexual activity groups by
contact-rates
Moderate
Low
10
Risk of Transmission
  • The risk of transmission (ß) is based on two
    factors

The average number of sexual encounters with one
partner (?)
The risk of transmission in one sexual encounter
(?)
The transmission risk is a binomial with ß(1-
?)?
  • The average is taken to determine the relative
    risk for HPV infection
  • Male-to-Female 80
  • Female-to-Male 70

11
Demographic Stratification
  • To accurately model geographic regions, we
    categorize the population further

Demographics
Low
We have our three activity groups
Moderate
High
  • Now we combine
  • a demographic trait
  • the sexual activity classes
  • to represent the demographically stratified
    population where ?l is the proportion of ? in
    each sub-group

12
Example Stratification
  • HPV
  • Age range 15-30 years
  • Stratify at 5 year intervals (1/?)
  • Different contact rates can be assigned to each
    group
  • The sub-groups (l) are numbered 0 to 8 in this
    example

8
9
9.5
2.5
3.5
3
1
1.25
1.5
13
Population Interaction
  • A contact can take place between an individual in
    a subgroup demographic, sexual activity class
    and an individual
  • In the same subgroup
  • or
  • In a different subgroup
  • Consider our HPV population example

Let ? be a matrix of size l by l Where the entry
in ?lm defines the proportion of interactions
that occur between subgroup l and subgroup m
14
Population Interaction Example
What proportion of interactions will a 23 year
old in the moderate activity class have with the
population?
  • Consider this sample interaction matrix

l4
15
More about mixing and infection
Where e is between 0 and 1
Assortative Mixing (like with like) e 0 Random
Mixing (like with unlike) e 1
  • Where ? is the infectivity of gender k and
    sub-group l

16
  • So far . . .
  • Sexual Activity Classes
  • Demographic Stratification
  • Transmission Dynamics
  • Contact Rates
  • Population Interaction

17
Population States
  • Now, we need to keep track of
  • Who is susceptible to the disease
  • Who has the disease and is infectious
  • Who has recovered from the disease

Also for HPV
  • Who has been Vaccinated
  • Who has the disease and been vaccinated,
    Vaccinated Infectious

18
Total Sexually Active Population (?)
Susceptible Skl
Vaccinated Vkl
Susceptible individuals in the first age-group
Infectious Ikl
Vaccinated Infectious VIkl
Recovered Rkl

19
Susceptible Skl
Vaccinated Vkl
Susceptible individuals in the all other
age-groups Let n be the number of sexual
activity classes
Infectious Ikl
Vaccinated Infectious VIkl
Recovered Rkl

20
Total Sexually Active Population (?)
Individuals in the first age-group
Susceptible Skl
Vaccinated Vkl

Infectious Ikl
Vaccinated Infectious VIkl
Recovered Rkl
21
Individuals in all other age-groups
Susceptible Skl
Vaccinated Vkl

Infectious Ikl
Vaccinated Infectious VIkl
Recovered Rkl
22
Application
  • Our goal is to bridge the gap between the
    mathematical epidemiologists and professionals in
    industry and public health officials

We have developed a computer application
interface to this model, which simulates endemic
prevalence of a disease
23
Application Interface
  • Input parameters
  • Disease
  • Population
  • Vaccine

Output Populations in each state over length
of simulation
24
HPV Application Demo
  • The following parameters are used in this demo
  • Age range 15-30, 5 year group interval
  • Sexual activity classes of low, moderate and high
  • Denton County, TX population data from the 2000
    U.S. Census
  • 75 vaccine efficacy
  • 90 vaccine coverage
  • Vaccine is effective for 10 years

25
Application Start Page
26
Input Parameters
27
Population Parameters
Denton County, 2000 U.S. Census Data
28
Vaccine Parameters
29
Application Output
30
Population Graph Output
31
Population Ratio Graph Output
32
HPV Experiments
Proportion of population with sustained
infection
33
Results
  • Qualitative assessment
  • Denton County would have a larger benefit in
    starting vaccination at age (15-19) than
    vaccinating high-risk minorities

34
Related Material
  • Our paper currently in review with the model
    description in the appendix
  • http//cerl.unt.edu/corley/pub/corley.ieee.bibe.
    2005.pdf
  • link to the web-application demo
  • http//cerl.unt.edu/corley/hpv

35
Conclusion
  • Modeling these diseases with this application
    will maximize resource allocation and utilization
    in the community or population where it is most
    needed

36
References
Thank You!
  • J. Hughes and G. Garnett and L. Koutsky. The
    Theoretical Population-Level Impact of a
    Prophylactic Human Papilloma Virus Vaccine.
    Epidemiology, 13(6)631639, November
  • 2002.
  • N. Bailey. The Mathematical Theory of Epidemics.
    Hafner Publishing Company, NY, USA, 1957.
  • R. Anderson and G. Garnett. Mathematical Models
    of the Transmission and Control of Sexually
    Transmitted Diseases. Sexually Transmitted
    Diseases, 27(10)636643, November 2000.
  • S. Goldie and M. Kohli and D. Grima. Projected
    Clinical Benefits and Cost-effectiveness of a
    Human Papillomavirus 16/18 Vaccine. National
    Cancer Institute, 96(8)604615, April 2004.
  • The Youth Risk Behaviour Website, Centers for
    Disease Control and Prevention, 2005.
    http//www.cdc.gov/HealthyYouth/yrbs
  • M. Katz and J. Gerberding. Postexposure Treatment
    of People Exposed to the Human Immunodeficiency
    Virus through Sexual Contact or Injection-Drug
    Use. New England Journal of Medicine,
    3361097-1100, April 1997.
  • Youth Risk Behaviour Surveillance National
    College Health Risk Behaviour Survey, Centers for
    Disease Control and Prevention, 1995.
  • D. Heymann and G. Rodier. Global Surveillance,
    National Surveillance, and SARS. Emerging
    Infectious Diseases, 10(2), February 2004.
  • E. Allman and J. Rhodes. Mathematical Models in
    Biology An Introduction. Cambridge University
    Press, 2004.
  • G. Garnett and R. Anderson. Contact Tracing and
    the Estimation of Sexual Mixing Patterns The
    Epidemiology of Gonococcal Infections. Sexually
    Transmitted Diseases, 20(4)181191, July-August
    1993.
  • G. Sanders and A. Taira. Cost Effectiveness of a
    Potential Vaccine for Human Papillomavirus.
    Emerging Infectious Diseases, 9(1)3748, January
    2003.
  • J. Aron. Mathematical Modelling The Dynamics of
    Infection, chapter 6. Aspen Publishers,
    Gaithersburg, MD, 2000.
Write a Comment
User Comments (0)
About PowerShow.com