Spreading potential in disease relevant networks: Predicting centralities in rural Northeast Madagascar
Camille M. M. DeSisto, Raquel A. Binder, Kayla Kauffman, Tyler M. Barrett, Michelle Pender, Randall A. Kramer, Voahangy Soarimalala, Jean Yves Rabezara, Prisca Rahary, James Moody, Charles L. Nunn, Giridhara Rathnaiah Babu, Giridhara Rathnaiah Babu, Giridhara Rathnaiah Babu

TL;DR
This study explores how contact patterns in rural Madagascar influence disease spread, finding that gender and wealth are key factors in transmission potential.
Contribution
The novel contribution is identifying gender and wealth as predictors of centrality in different transmission networks using mixed effects models in rural Madagascar.
Findings
Gender and wealth based on household materials were significant predictors of network centrality.
Men were more central in environmental overlap networks compared to women.
Wealth was positively associated with close contact network centrality.
Abstract
Heterogeneity in contact patterns can have marked effects on disease transmission, including through superspreading where few individuals drive most infections. Networks based on different types of human-human contacts quantify individuals’ centrality, which can be used to identify individuals or sub-populations who are at increased risk of spreading disease. By understanding the predictors of centrality, high-risk individuals and sub-populations can be targeted to improve public health intervention strategies, even when detailed network data are unavailable. This study inferred transmission potential networks representing different pathogen transmission pathways among people living in rural villages of northeast Madagascar. We constructed four network types: social, close contact, household proximity, and environmental overlap using survey data and global positioning system (GPS)…
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Taxonomy
TopicsZoonotic diseases and public health · COVID-19 epidemiological studies · Antibiotic Use and Resistance
