微生物群
基因组
背景(考古学)
深度学习
人工智能
人类微生物组计划
计算机科学
肠道微生物群
粪便
计算生物学
人体微生物群
领域(数学)
口腔微生物群
数据科学
生物
机器学习
生物信息学
生态学
遗传学
数学
基因
古生物学
纯数学
作者
Simone Rampelli,Marco Fabbrini,Marco Candela,Elena Biagi,Patrizia Brigidi,Silvia Turroni
标识
DOI:10.3389/fgene.2021.644516
摘要
Deep learning methodologies have revolutionized prediction in many fields and show the potential to do the same in microbial metagenomics. However, deep learning is still unexplored in the field of microbiology, with only a few software designed to work with microbiome data. Within the meta-community theory, we foresee new perspectives for the development and application of deep learning algorithms in the field of the human microbiome. In this context, we developed G2S, a bioinformatic tool for taxonomic prediction of the human fecal microbiome directly from the oral microbiome data of the same individual. The tool uses a deep convolutional neural network trained on paired oral and fecal samples from populations across the globe, which allows inferring the stool microbiome at the family level more accurately than other available approaches. The tool can be used in retrospective studies, where fecal sampling was not performed, and especially in the field of paleomicrobiology, as a unique opportunity to recover data related to ancient gut microbiome configurations. G2S was validated on already characterized oral and fecal sample pairs, and then applied to ancient microbiome data from dental calculi, to derive putative intestinal components in medieval subjects.
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