# Network epidemiology and the quantification of behavioral interventions

> **NIH NIH P20** · UNIVERSITY OF VERMONT & ST AGRIC COLLEGE · 2020 · $218,599

## Abstract

Emerging epidemics are a constant threat to global health. The recent Ebola outbreak in West Africa alone took over ten thousand lives 
despite international help nearing $5 billion from 70 countries. In retrospect, two factors stand out: (i) the local health system was illprepared, 
with Ebola-affected countries falling about 80% short of WHO recommendations for numbers of doctors and nurses per capita 
(223/100,000); (ii) the declaration of the Public Health Emergency of International Concern came late, over 4 months after the first 
international transmission event. These apparent systemic failures, however, likely reflect the fact that Ebola outbreaks in Africa are so 
highly unpredictable and variable. Outbreaks prior to the West African Ebola Outbreak occurred in the Democratic Republic of Congo in 
2017, 2014 and 2012, as well as Uganda in 2007, but these outbreaks never exceeded 500 cases. In stark contrast, there were nearly 
30,000 cases caused by the West African epidemic. 
The dynamics of an Ebola outbreak are shaped not only by the biology of the virus, but also in large part by societal and behavioral 
factors. Both factors are heterogeneous and highly variable, as evidenced by contact tracing data from the West African Ebola outbreak. 
These data suggest that less than 5% of Ebola cases caused more than one secondary infection, yet some individuals transmit the virus 
to dozens of others. Theoretical models of disease spread are thus becoming increasingly based on stochastic network representations 
of epidemiological data rather than conventional collections of deterministic well-mixed compartments. We postulate that heterogeneity in 
behavior is not only an important feature of an emerging epidemic, its presence implies that behavioral interventions can be more 
important than biomedical interventions in shaping the spread of disease. 
Here, we propose the development of a modeling framework that combines a stochastic network model with an agent-based model to 
allow the effects of both behavioral and biomedical interventions on a disease epidemic to be investigated. The network model will 
provide stochastic forecasting in the form of distributions of possible disease spread outcomes as functions of patterns of behavior. At the 
same time, agent-based simulations imposed on the network will allow us to quantify the effects of interventions that aim to mitigate 
disease transmission through alterations in either the behavior of individuals or the biology of the virus itself. These different modeling 
approaches are thus complementary. Furthermore, each can be independently validated against available data sets. The results of this 
study will advance our understanding of the modeling and surveillance required in managing infectious diseases, and will have significant 
implications for public health policy by helping to identify improved strategies for responding to emerging pandemics.

## Key facts

- **NIH application ID:** 10369064
- **Project number:** 5P20GM125498-03
- **Recipient organization:** UNIVERSITY OF VERMONT & ST AGRIC COLLEGE
- **Principal Investigator:** Laurent Hébert-Dufresne
- **Activity code:** P20 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $218,599
- **Award type:** 5
- **Project period:** 2018-09-15 → 2023-07-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10369064

## Citation

> US National Institutes of Health, RePORTER application 10369064, Network epidemiology and the quantification of behavioral interventions (5P20GM125498-03). Retrieved via AI Analytics 2026-05-26 from https://api.ai-analytics.org/grant/nih/10369064. Licensed CC0.

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