Modeling Infection Transmission in Primate Networks to Predict Centrality-Based Risk
Authored by Cedric Sueur, Valeria Romano, Julie Duboscq, Cecile Sarabian, Elodie Thomas, Andrew J J Macintosh
Date Published: 2016
DOI: 10.1002/ajp.22542
Sponsors:
Brazilian Ministry of Education (CAPES)
Platforms:
NetLogo
Model Documentation:
Other Narrative
Model Code URLs:
http://onlinelibrary.wiley.com/store/10.1002/ajp.22542/asset/supinfo/ajp22542-sup-0001-SuppData-S1.doc?v=1&s=f32dec2d682299dd2ea7bde41385d10319e24cf8
Abstract
Social structure can theoretically regulate disease risk by mediating
exposure to pathogens via social proximity and contact. Investigating
the role of central individuals within a network may help predict
infectious agent transmission as well as implement disease control
strategies, but little is known about such dynamics in real primate
networks. We combined social network analysis and a modeling approach to
better understand transmission of a theoretical infectious agent in wild
Japanese macaques, highly social animals which form extended but highly
differentiated social networks. We collected focal data from adult
females living on the islands of Koshima and Yakushima, Japan.
Individual identities as well as grooming networks were included in a
Markov graph -based simulation. In this model, the probability that an
individual will transmit an infectious agent depends on the strength of
its relationships with other group members. Similarly, its probability
of being infected depends on its relationships with already infected
group members. We correlated: (i) the percentage of subjects infected
during a latency constrained epidemic; (ii) the mean latency to complete
transmission; (iii) the probability that an individual is infected first
among all group members; and (iv) each individual's mean rank in the
chain of transmission with different individual network centralities
(eigenvector, strength, betweenness). Our results support the hypothesis
that more central individuals transmit infections in a shorter amount of
time and to more subjects but also become infected more quickly than
less central individuals. However, we also observed that the spread of
infectious agents on the Yakushima network did not always differ from
expectations of spread on random networks. Generalizations about the
importance of observed social networks in pathogen flow should thus be
made with caution, since individual characteristics in some real world
networks appear less relevant than they are in others in predicting
disease spread. (C) 2016 Wiley Periodicals, Inc.
Tags
Social networks
Epidemiology
behavior
population
disease
Organization
Contact networks
Consequences
Great apes
Japanese macaques