4.6 Article

Spread of infectious disease through clustered populations

期刊

JOURNAL OF THE ROYAL SOCIETY INTERFACE
卷 6, 期 41, 页码 1121-1134

出版社

ROYAL SOC
DOI: 10.1098/rsif.2008.0524

关键词

epidemic; clustering; reproductive ratio; epidemic probability; attack rate

资金

  1. UBC CDC under CIHR [MOP81273, PPR-79231]
  2. BC Ministry of Health
  3. DOE [DE-AC52-06NA25396]
  4. DOE Office of ASCR programme in Applied Mathematical Sciences
  5. Department of Homeland Security
  6. National Institutes of Health

向作者/读者索取更多资源

Networks of person-to-person contacts form the substrate along which infectious diseases spread. Most network-based studies of this spread focus on the impact of variations in degree (the number of contacts an individual has). However, other effects such as clustering, variations in infectiousness or susceptibility, or variations in closeness of contacts may play a significant role. We develop analytic techniques to predict how these effects alter the growth rate, probability and size of epidemics, and validate the predictions with a realistic social network. We find that (for a given degree distribution and average transmissibility) clustering is the dominant factor controlling the growth rate, heterogeneity in infectiousness is the dominant factor controlling the probability of an epidemic and heterogeneity in susceptibility is the dominant factor controlling the size of an epidemic. Edge weights (measuring closeness or duration of contacts) have impact only if correlations exist between different edges. Combined, these effects can play a minor role in reinforcing one another, with the impact of clustering the largest when the population is maximally heterogeneous or if the closer contacts are also strongly clustered. Our most significant contribution is a systematic way to address clustering in infectious disease models, and our results have a number of implications for the design of interventions.

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