Comparing transmission potential networks based on social network surveys, close contacts and environmental overlap in rural Madagascar.

dc.contributor.author

Kauffman, Kayla

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Werner, Courtney S

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Titcomb, Georgia

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Pender, Michelle

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Rabezara, Jean Yves

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Herrera, James P

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Shapiro, Julie Teresa

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Solis, Alma

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Soarimalala, Voahangy

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Tortosa, Pablo

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Kramer, Randall

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Moody, James

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Mucha, Peter J

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Nunn, Charles

dc.date.accessioned

2022-02-09T20:03:54Z

dc.date.available

2022-02-09T20:03:54Z

dc.date.issued

2022-01-12

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2022-02-09T20:03:53Z

dc.description.abstract

Social and spatial network analysis is an important approach for investigating infectious disease transmission, especially for pathogens transmitted directly between individuals or via environmental reservoirs. Given the diversity of ways to construct networks, however, it remains unclear how well networks constructed from different data types effectively capture transmission potential. We used empirical networks from a population in rural Madagascar to compare social network survey and spatial data-based networks of the same individuals. Close contact and environmental pathogen transmission pathways were modelled with the spatial data. We found that naming social partners during the surveys predicted higher close-contact rates and the proportion of environmental overlap on the spatial data-based networks. The spatial networks captured many strong and weak connections that were missed using social network surveys alone. Across networks, we found weak correlations among centrality measures (a proxy for superspreading potential). We conclude that social network surveys provide important scaffolding for understanding disease transmission pathways but miss contact-specific heterogeneities revealed by spatial data. Our analyses also highlight that the superspreading potential of individuals may vary across transmission modes. We provide detailed methods to construct networks for close-contact transmission pathogens when not all individuals simultaneously wear GPS trackers.

dc.identifier.issn

1742-5689

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1742-5662

dc.identifier.uri

https://hdl.handle.net/10161/24347

dc.language

eng

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The Royal Society

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Journal of the Royal Society, Interface

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10.1098/rsif.2021.0690

dc.subject

infectious disease transmission

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spatial networks

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superspreading potential

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transmission pathways

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transmission potential networks

dc.title

Comparing transmission potential networks based on social network surveys, close contacts and environmental overlap in rural Madagascar.

dc.type

Journal article

duke.contributor.orcid

Herrera, James P|0000-0002-0633-0575

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Kramer, Randall|0000-0002-1325-7425

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Moody, James|0000-0002-3311-4173

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Nunn, Charles|0000-0001-9330-2873

pubs.begin-page

20210690

pubs.issue

186

pubs.organisational-group

Duke

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Trinity College of Arts & Sciences

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Staff

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Evolutionary Anthropology

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Institutes and Provost's Academic Units

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University Institutes and Centers

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Duke Global Health Institute

pubs.publication-status

Published

pubs.volume

19

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