| Literature DB >> 25969737 |
Simon Lax1, Jarrad T Hampton-Marcell2, Sean M Gibbons3, Geórgia Barguil Colares4, Daniel Smith5, Jonathan A Eisen6, Jack A Gilbert7.
Abstract
BACKGROUND: Microbial interaction between human-associated objects and the environments we inhabit may have forensic implications, and the extent to which microbes are shared between individuals inhabiting the same space may be relevant to human health and disease transmission. In this study, two participants sampled the front and back of their cell phones, four different locations on the soles of their shoes, and the floor beneath them every waking hour over a 2-day period. A further 89 participants took individual samples of their shoes and phones at three different scientific conferences.Entities:
Keywords: Forensic microbiology; Microbial time series; Phone microbiome; Shoe microbiome; Source-sink dynamics
Year: 2015 PMID: 25969737 PMCID: PMC4427962 DOI: 10.1186/s40168-015-0082-9
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Figure 1Ordination of samples based on weighted and unweighted phylogenetic dissimilarity in community composition. (A, B) depict principal coordinate (PCoA) plots for all samples in the study based on pairwise weighted UniFrac distance between samples, with sample points colored by surface and person, respectively. (C, D) are similarly colored by surface and person but are based on unweighted UniFrac distance. (E, F) depict UPGMA clustering of pooled and evenly rarified sample groupings based on weighted and unweighted UniFrac distance, respectively. Branches are highlighted to reflect person of origin (colors as in B and D) and group names at branch tips are colored by surface as in A and C.
Summary of predictive accuracy of random forest supervised learning models
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| All phone samples | Person | 104 | 0.037 ± 0.062 | 0.500 | 13.63 |
| All shoe samples | Person | 211 | 0.010 ± 0.020 | 0.479 | 50.26 |
| P1 phone samples | Front/back | 52 | 0.417 ± 0.206 | 0.481 | 1.15 |
| P2 phone samples | Front/back | 52 | 0.268 ± 0.180 | 0.481 | 1.79 |
| P1 shoe samples | Shoe surface | 110 | 0.705 ± 0.125 | 0.736 | 1.05 |
| P2 shoe samples | Shoe surface | 101 | 0.796 ± 0.090 | 0.732 | 0.92 |
Tenfold cross validation models were constructed with 1,000 trees using OTUs from evenly rarified samples as predictors of sample origin. P1, person 1; P2, person 2, SD, standard deviation, N, number.
Figure 2Summary of predictive accuracy of SourceTracker models in determining which of the two study participants a sample was taken from based only on the microbial communities of the floor samples those shoes had interacted with. For the models, all four shoe samples taken by each participant at a given time point were consolidated and treated as individual sinks (N = 29 and 27 for persons 1 and 2, respectively). All floor samples from the two participants’ time series were collapsed and treated as the two possible sources to the shoe sink communities.
Figure 3Immediate impact of floor microbial community on shoe microbial communities. (A) Correlation in the first principal coordinate values of shoe and floor samples taken at the same time point. (B) Principal coordinate plots of all shoe and floor samples, split by individual and colored by floor type and location at time of sampling.
Figure 4Ordination of biogeographic samples based on weighted and unweighted phylogenetic dissimilarity in community composition. Panels A and B depict principal coordinate (PCoA) plots for all biogeographic samples based on pairwaise weighted UniFrac distance between samples, with sample points colored by surface and location respectively. C and D depict ordinations of shoe samples, colored by sampling location, based on weighted and unweighted UniFrac distance, respectively. E and F depict ordinations of phone samples colored by sampling location and are based on weighted and unweighted UniFrac distance, respectively.