Estimating within-school contact networks to understand influenza transmission

Abstract

Many epidemic models approximate social contact behavior by assuming random mixing within mixing groups. The effect of more realistic social network structure on estimates of epidemic parameters is an open area of exploration. We develop a detailed statistical model to estimate the social contact network within a high school using friendship network data and a survey of contact behavior. Our contact network model includes classroom structure, longer durations of contacts to friends than nonfriends and more frequent contacts with friends, based on reports in the contact survey. We performed simulation studies to explore which network structures are relevant to influenza transmission. These studies yield two key findings. First, we found that the friendship network structure important to the transmission process can be adequately represented by a dyad-independent exponential random graph model. This means that individual-level sampled data is sufficient to characterize the entire friendship network. Second, we found that contact behavior was adequately represented by a static rather than dynamic contact network. We then compare a targeted antiviral prophylaxis intervention strategy and a grade closure intervention strategy under random mixing and network-based mixing. We find that random mixing overestimates the effect of targeted antiviral prophylaxis on the probability of an epidemic when the probability of transmission in 10 minutes of contact is less than 0.004 and underestimates it when this transmission probability is greater than 0.004. We found the same pattern for the final size of an epidemic, with a threshold transmission probability of 0.005. We also find random mixing overestimates the effect of a grade closure intervention on the probability of an epidemic and final size for all transmission probabilities. Our findings have implications for policy recommendations based on models assuming random mixing, and can inform further development of network-based models. © 2012 Institute of Mathematical Statistics.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 92,283

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

  • Only published works are available at libraries.

Similar books and articles

Social network size in humans.R. A. Hill & R. I. M. Dunbar - 2003 - Human Nature 14 (1):53-72.
Affection of contact and transcendental telepathy in schizophrenia and autism.Yasuhiko Murakami - 2013 - Phenomenology and the Cognitive Sciences 12 (1):179-194.
Social network structure and the achievement of consensus.Kevin J. S. Zollman - 2012 - Politics, Philosophy and Economics 11 (1):26-44.

Analytics

Added to PP
2017-06-02

Downloads
4 (#1,628,455)

6 months
2 (#1,206,802)

Historical graph of downloads
How can I increase my downloads?

Citations of this work

No citations found.

Add more citations

References found in this work

No references found.

Add more references