Synthesis of a high resolution social contact network for Delhi with application to pandemic planning
Authored by Huadong Xia, Kalyani Nagaraj, Jiangzhuo Chen, Madhav V Marathe
Date Published: 2015
DOI: 10.1016/j.artmed.2015.06.003
Sponsors:
United States National Institutes of Health (NIH)
United States National Science Foundation (NSF)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Objective: We aim to understand quantitatively how targeted-layered
containment (TLC) strategies contain an influenza pandemic in a populous
urban area such as Delhi, India using networked epidemiology.
Methods: A key contribution of our work is a methodology for the
synthesis of a realistic individual-based social contact network for
Delhi using a wide variety of open source and commercial data. New
techniques were developed to infer daily activities for individuals
using aggregate data published in transportation science literature in
combination with human development surveys and targeted local surveys.
The resulting social contact network is the first such network
constructed for any urban region of India. This time varying, spatially
explicit network has over 13 million people and more than 200 million
people-people contacts. The network has several interesting similarities
and differences when compared with similar networks of US cities.
Additionally, we use a high performance agent-based modeling environment
to study how an influenza-like illness would spread over Delhi. We also
analyze well understood pharmaceutical and non-pharmaceutical
containment strategies, or a combination thereof (also known as TLCs), to control a pandemic outbreak.
Results: (i) TLC strategies produce the mildest and most delayed
epidemic out-break than any of the individual interventions; (ii) the
epidemic dynamics of Delhi appear to be strongly influenced by the
activity patterns and the demographic structure of its local residents;
and (iii) a high resolution social contact network helps in analyzing
effective public health policies.
Conclusion: A high resolution synthetic network is constructed based on
surveyed data. It captures the underlying contact structure of a certain
population and can be used to quantitatively analyze public health
policy effectiveness. To the best of our knowledge, this study is the
first of its kind in the Indian sub-continent. (C) 2015 Elsevier B.V.
All rights reserved.
Tags
human mobility
patterns
Model
Strategies
United-states
Virus
Spread
Influenza-a h1n1
Containment