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Multidomain analyses of a longitudinal human microbiome intestinal cleanout perturbation experiment

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2017

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Public Library of Science
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Fukuyama, Julia, Laurie Rumker, Kris Sankaran, Pratheepa Jeganathan, Les Dethlefsen, David A. Relman, and Susan P. Holmes. 2017. “Multidomain analyses of a longitudinal human microbiome intestinal cleanout perturbation experiment.” PLoS Computational Biology 13 (8): e1005706. doi:10.1371/journal.pcbi.1005706. http://dx.doi.org/10.1371/journal.pcbi.1005706.

Abstract

Our work focuses on the stability, resilience, and response to perturbation of the bacterial communities in the human gut. Informative flash flood-like disturbances that eliminate most gastrointestinal biomass can be induced using a clinically-relevant iso-osmotic agent. We designed and executed such a disturbance in human volunteers using a dense longitudinal sampling scheme extending before and after induced diarrhea. This experiment has enabled a careful multidomain analysis of a controlled perturbation of the human gut microbiota with a new level of resolution. These new longitudinal multidomain data were analyzed using recently developed statistical methods that demonstrate improvements over current practices. By imposing sparsity constraints we have enhanced the interpretability of the analyses and by employing a new adaptive generalized principal components analysis, incorporated modulated phylogenetic information and enhanced interpretation through scoring of the portions of the tree most influenced by the perturbation. Our analyses leverage the taxa-sample duality in the data to show how the gut microbiota recovers following this perturbation. Through a holistic approach that integrates phylogenetic, metagenomic and abundance information, we elucidate patterns of taxonomic and functional change that characterize the community recovery process across individuals. We provide complete code and illustrations of new sparse statistical methods for high-dimensional, longitudinal multidomain data that provide greater interpretability than existing methods.

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Biology and Life Sciences, Evolutionary Biology, Evolutionary Systematics, Phylogenetics, Taxonomy, Computer and Information Sciences, Data Management, Genetics, Genomics, Metagenomics, Organisms, Bacteria, Gut Bacteria, Ruminococcus, Bacteroides, Phylogenetic Analysis, Medicine and Health Sciences, Gastroenterology and Hepatology, Diarrhea, Diagnostic Medicine, Signs and Symptoms, Pathology and Laboratory Medicine

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