Genotyping Oral Commensal Bacteria to Predict Social Contact and Structure
Stephen Starko Francis,
Mateusz M Plucinski,
Amelia D Wallace and
Lee W Riley
PLOS ONE, 2016, vol. 11, issue 9, 1-10
Abstract:
Social network structure is a fundamental determinant of human health, from infectious to chronic diseases. However, quantitative and unbiased approaches to measuring social network structure are lacking. We hypothesized that genetic relatedness of oral commensal bacteria could be used to infer social contact between humans, just as genetic relatedness of pathogens can be used to determine transmission chains of pathogens. We used a traditional, questionnaire survey-based method to characterize the contact network of the School of Public Health at a large research university. We then collected saliva from a subset of individuals to analyze their oral microflora using a modified deep sequencing multilocus sequence typing (MLST) procedure. We examined micro-evolutionary changes in the S. viridans group to uncover transmission patterns reflecting social network structure. We amplified seven housekeeping gene loci from the Streptococcus viridans group, a group of ubiquitous commensal bacteria, and sequenced the PCR products using next-generation sequencing. By comparing the generated S. viridans reads between pairs of individuals, we reconstructed the social network of the sampled individuals and compared it to the network derived from the questionnaire survey-based method. The genetic relatedness significantly (p-value
Date: 2016
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0160201
DOI: 10.1371/journal.pone.0160201
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