The objective of this project, Systems analysis of social pathways of epidemics to reduce health disparities is to incorporate social behavior into mathematical models of infectious disease transmission dynamics, with a focus on influenza like illness. The inferences of this project will improve our understanding of the impact of different control and prevention strategies for infectious disease epidemics in general and influenza epidemics in particular. Our hypothesis is that individual behavior, disease dynamics, and interventions coevolve across multiple scales to create statistically and epidemiologically significant differences in the efficacy and social equity of public health policies such as infectious disease control strategies. This hypothesis will be tested by pursuing the following specific aims: 1. Identify social behaviors across communities that strongly a predict transmission dynamics of infectious disease epidemics. 2. Evaluate how the lack of dynamic behavioral response to epidemic evolution affects previous model-based estimates for transmissibility and the efficacy of targeted, layered containment of pandemic influenza. 3. Analyze interactions between behavioral differences and epidemic interventions to facilitate the design of optimal interventions to reduce health disparities. This project extends well studied computational simulations to include people's behaviors relevant to infectious disease epidemics and will be used to determine the consequences of feedback between population-level effects and individual-level behavior. In particular, we will determine the sensitivity of outcomes to particular behaviors. A survey designed to focus on those particular behaviors will be used to estimate variability across communities and to calibrate the simulations. Published models and results on influenza transmissibility and intervention efficacy will be revisited with the improved simulations. Initially, our analysis will describe the mean performance of interventions over the whole population. The analyses will then extend to scenarios reflecting the observed variability in behavior to reveal how health disparities could arise from behavioral differences at the community level. Altogether, the results of the new and comparative analyses will inform the design of optimal epidemic interventions with fewer unintended consequences.

Public Health Relevance

This research project will fill an important gap in understanding individual social behavior, disease dynamics and preventive interventions, especially in the domain of infectious disease spread. The knowledge and methods developed here will enable society to control outbreaks of infectious diseases effectively and equitably.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
5R01GM109718-05
Application #
9484286
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Brazhnik, Paul
Project Start
2014-08-15
Project End
2019-05-31
Budget Start
2018-06-01
Budget End
2019-05-31
Support Year
5
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Virginia Polytechnic Institute and State University
Department
Type
Organized Research Units
DUNS #
003137015
City
Blacksburg
State
VA
Country
United States
Zip Code
24061
Venkatramanan, Srinivasan; Lewis, Bryan; Chen, Jiangzhuo et al. (2018) Using data-driven agent-based models for forecasting emerging infectious diseases. Epidemics 22:43-49
Nath, Madhurima; Ren, Yihui; Khorramzadeh, Yasamin et al. (2018) Determining whether a class of random graphs is consistent with an observed contact network. J Theor Biol 440:121-132
Adiga, Abhijin; Chu, Shuyu; Eubank, Stephen et al. (2018) Disparities in spread and control of influenza in slums of Delhi: findings from an agent-based modelling study. BMJ Open 8:e017353
Chen, Jiangzhuo; Marathe, Achla; Marathe, Madhav (2018) Feedback Between Behavioral Adaptations and Disease Dynamics. Sci Rep 8:12452
Abbas, Kaja M; Kang, Gloria J; Chen, Daniel et al. (2018) Demographics, perceptions, and socioeconomic factors affecting influenza vaccination among adults in the United States. PeerJ 6:e5171
Dorratoltaj, Nargesalsadat; O'Dell, Margaret L; Bordwine, Paige et al. (2018) Epidemiological Effectiveness and Cost of a Fungal Meningitis Outbreak Response in New River Valley, Virginia: Local Health Department and Clinical Perspectives. Disaster Med Public Health Prep 12:38-46
Tabataba, Farzaneh Sadat; Chakraborty, Prithwish; Ramakrishnan, Naren et al. (2017) A framework for evaluating epidemic forecasts. BMC Infect Dis 17:345
Dorratoltaj, Nargesalsadat; Nikin-Beers, Ryan; Ciupe, Stanca M et al. (2017) Multi-scale immunoepidemiological modeling of within-host and between-host HIV dynamics: systematic review of mathematical models. PeerJ 5:e3877
Kang, Gloria J; Culp, Rachel K; Abbas, Kaja M (2017) Facilitators and barriers of parental attitudes and beliefs toward school-located influenza vaccination in the United States: Systematic review. Vaccine 35:1987-1995
Brownstein, John S; Chu, Shuyu; Marathe, Achla et al. (2017) Combining Participatory Influenza Surveillance with Modeling and Forecasting: Three Alternative Approaches. JMIR Public Health Surveill 3:e83

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