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      Trace Evidence Potential in Postmortem Skin Microbiomes: From Death Scene to Morgue

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          Is Open Access

          EMPeror: a tool for visualizing high-throughput microbial community data

          Background As microbial ecologists take advantage of high-throughput sequencing technologies to describe microbial communities across ever-increasing numbers of samples, new analysis tools are required to relate the distribution of microbes among larger numbers of communities, and to use increasingly rich and standards-compliant metadata to understand the biological factors driving these relationships. In particular, the Earth Microbiome Project drives these needs by profiling the genomic content of tens of thousands of samples across multiple environment types. Findings Features of EMPeror include: ability to visualize gradients and categorical data, visualize different principal coordinates axes, present the data in the form of parallel coordinates, show taxa as well as environmental samples, dynamically adjust the size and transparency of the spheres representing the communities on a per-category basis, dynamically scale the axes according to the fraction of variance each explains, show, hide or recolor points according to arbitrary metadata including that compliant with the MIxS family of standards developed by the Genomic Standards Consortium, display jackknifed-resampled data to assess statistical confidence in clustering, perform coordinate comparisons (useful for procrustes analysis plots), and greatly reduce loading times and overall memory footprint compared with existing approaches. Additionally, ease of sharing, given EMPeror’s small output file size, enables agile collaboration by allowing users to embed these visualizations via emails or web pages without the need for extra plugins. Conclusions Here we present EMPeror, an open source and web browser enabled tool with a versatile command line interface that allows researchers to perform rapid exploratory investigations of 3D visualizations of microbial community data, such as the widely used principal coordinates plots. EMPeror includes a rich set of controllers to modify features as a function of the metadata. By being specifically tailored to the requirements of microbial ecologists, EMPeror thus increases the speed with which insight can be gained from large microbiome datasets.
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            Identifying personal microbiomes using metagenomic codes.

            Community composition within the human microbiome varies across individuals, but it remains unknown if this variation is sufficient to uniquely identify individuals within large populations or stable enough to identify them over time. We investigated this by developing a hitting set-based coding algorithm and applying it to the Human Microbiome Project population. Our approach defined body site-specific metagenomic codes: sets of microbial taxa or genes prioritized to uniquely and stably identify individuals. Codes capturing strain variation in clade-specific marker genes were able to distinguish among 100s of individuals at an initial sampling time point. In comparisons with follow-up samples collected 30-300 d later, ∼30% of individuals could still be uniquely pinpointed using metagenomic codes from a typical body site; coincidental (false positive) matches were rare. Codes based on the gut microbiome were exceptionally stable and pinpointed >80% of individuals. The failure of a code to match its owner at a later time point was largely explained by the loss of specific microbial strains (at current limits of detection) and was only weakly associated with the length of the sampling interval. In addition to highlighting patterns of temporal variation in the ecology of the human microbiome, this work demonstrates the feasibility of microbiome-based identifiability-a result with important ethical implications for microbiome study design. The datasets and code used in this work are available for download from huttenhower.sph.harvard.edu/idability.
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              Microbiota fingerprints lose individually identifying features over time

              Background Humans host individually unique skin microbiota, suggesting that microbiota traces transferred from skin to surfaces could serve as forensic markers analogous to fingerprints. While it is known that individuals leave identifiable microbiota traces on surfaces, it is not clear for how long these traces persist. Moreover, as skin and surface microbiota change with time, even persistent traces may lose their forensic potential as they would cease to resemble the microbiota of the person who left them. We followed skin and surface microbiota within households for four seasons to determine whether accurate microbiota-based matching of individuals to their households could be achieved across long time delays. Results While household surface microbiota traces could be matched to the correct occupant or occupants with 67% accuracy, accuracy decreased substantially when skin and surface samples were collected in different seasons, and particularly when surface samples were collected long after skin samples. Most OTUs persisted on skin or surfaces for less than one season, indicating that OTU loss was the major cause of decreased matching accuracy. OTUs that were more useful for individual identification persisted for less time and were less likely to be deposited from skin to surface, suggesting a trade-off between the longevity and identifying value of microbiota traces. Conclusions While microbiota traces have potential forensic value, unlike fingerprints they are not static and may degrade in a way that preferentially erases features useful in identifying individuals. Electronic supplementary material The online version of this article (doi:10.1186/s40168-016-0209-7) contains supplementary material, which is available to authorized users.
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                Author and article information

                Journal
                Journal of Forensic Sciences
                J Forensic Sci
                Wiley
                0022-1198
                1556-4029
                November 08 2018
                May 2019
                November 08 2018
                May 2019
                : 64
                : 3
                : 791-798
                Affiliations
                [1 ]City and County of Honolulu Department of the Medical Examiner 835 Iwilei Street Honolulu 96817 HI
                [2 ]Laboratory of Forensic Taphonomy, Forensic Sciences Unit Division of Natural Sciences and Mathematics Chaminade University of Honolulu 3140 Waialae Avenue Honolulu 96816 HI
                [3 ]School of Food Science and Technology Nanchang University 235 Nanjing East Road Nanchang City Jiangxi Nanchang China
                [4 ]State Key Laboratory of Food Science and Technology Nanchang University 235 Nanjing East Road Nanchang City Jiangxi Nanchang China
                [5 ]Department of Pediatrics University of California San Diego, 9500 Gilman Drive La Jolla 92093 CA
                [6 ]Department of Animal Sciences Colorado State University 350 W. Pitkin Street Ft. Collins 80523‐1171 CO
                [7 ]Department of Computer Science and Engineering University of California San Diego, 9500 Gilman Drive La Jolla 92093 CA
                [8 ]Center for Microbiome Innovation University of California San Diego, 9500 Gilman Drive La Jolla 92093‐0403 CA
                Article
                10.1111/1556-4029.13949
                30408195
                1ca39749-d770-493f-a115-83e78d2f4ea4
                © 2019

                http://onlinelibrary.wiley.com/termsAndConditions#vor

                http://doi.wiley.com/10.1002/tdm_license_1.1

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