Literature DB >> 19486206

Comparison of social networks derived from ecological data: implications for inferring infectious disease dynamics.

Sarah E Perkins1, Francesca Cagnacci, Anna Stradiotto, Daniele Arnoldi, Peter J Hudson.   

Abstract

1. Social network analyses tend to focus on human interactions. However, there is a burgeoning interest in applying graph theory to ecological data from animal populations. Here we show how radio-tracking and capture-mark-recapture data collated from wild rodent populations can be used to generate contact networks. 2. Both radio-tracking and capture-mark-recapture were undertaken simultaneously. Contact networks were derived and the following statistics estimated: mean-contact rate, edge distribution, connectance and centrality. 3. Capture-mark-recapture networks produced more informative and complete networks when the rodent density was high and radio-tracking produced more informative networks when the density was low. Different data collection methods provide more data when certain ecological characteristics of the population prevail. 4. Both sets of data produced networks with comparable edge (contact) distributions that were best described by a negative binomial distribution. Connectance and closeness were statistically different between the two data sets. Only betweenness was comparable. The differences between the networks have important consequences for the transmission of infectious diseases. Care should be taken when extrapolating social networks to transmission networks for inferring disease dynamics.

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Year:  2009        PMID: 19486206     DOI: 10.1111/j.1365-2656.2009.01557.x

Source DB:  PubMed          Journal:  J Anim Ecol        ISSN: 0021-8790            Impact factor:   5.091


  29 in total

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10.  Incorporating genomic methods into contact networks to reveal new insights into animal behavior and infectious disease dynamics.

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