首页> 外文期刊>Briefings in bioinformatics >Corresponding author. Joel T. Dudley, Institute for Next Generation Healthcare, Department of Genetics and Genomic Sciences, Icahn Institute for Genomics and Multiscale Biology, Icahn School of Medicine at Mount Sinai, Mount Sinai Health System New York, NY; E-mail: joel.dudley@mssm.edu
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Corresponding author. Joel T. Dudley, Institute for Next Generation Healthcare, Department of Genetics and Genomic Sciences, Icahn Institute for Genomics and Multiscale Biology, Icahn School of Medicine at Mount Sinai, Mount Sinai Health System New York, NY; E-mail: joel.dudley@mssm.edu

机译:通讯作者。 Joel T. Dudley,下一代医疗教育学院,遗传学和基因组科学系,ICAHN基因组学院和多尺度生物学研究所,ICAHN Mount Sinai Mount Sinai Health System纽约州纽约州纽约山区纽约; 电子邮件:joel.dudley@mssm.edu

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摘要

The human microbiota is a complex ecological community of commensal, symbiotic and pathogenic microorganisms harboured by the human body. Next-generation sequencing (NGS) technologies, in particular targeted amplicon sequencing of the 16S ribosomal RNA gene (16S-seq), are enabling the identification and quantification of human-resident microorganisms at unprecedented resolution, providing novel insights into the role of the microbiota in health and disease. Once microbial abundances are quantified through NGS data analysis, diversity indices provide valuable mathematical tools to describe the ecological complexity of a single sample or to detect species differences between samples. However, diversity is not a determined physical quantity for which a consensus definition and unit of measure have been established, and several diversity indices are currently available. Furthermore, they were originally developed for macroecology and their robustness to the possible bias introduced by sequencing has not been characterized so far. To assist the reader with the selection and interpretation of diversity measures, we review a panel of broadly used indices, describing their mathematical formulations, purposes and properties, and characterize their behaviour and criticalities in dependence of the data features using simulated data as ground truth. In addition, we make available an R package, DiversitySeq, which implements in a unified framework the full panel of diversity indices and a simulator of 16S-seq data, and thus represents a valuable resource for the analysis of diversity from NGS count data and for the benchmarking of computational methods for 16S-seq.
机译:人类微生物群是人体怀有人体怀有的共生,共生和病原微生物的复杂生态群落。下一代测序(NGS)技术,特别是16S核糖体RNA基因(16S-SEQ)的靶向扩增子测序,可以以前所未有的分辨率识别和定量人居族微生物,为微生物群的作用提供新的见解在健康和疾病中。一旦通过NGS数据分析量化了微生物丰富,多样性指数提供了有价值的数学工具来描述单个样本的生态复杂性或检测样品之间的物种差异。但是,多样性不是确定的身体数量,其中建立了共识定义和措施单位,目前有几种多样性指数。此外,他们最初是为宏观学开发的,并且到目前为止还没有表征通过测序引入的可能偏差的鲁棒性。为了协助读者选择和解释多样性措施,我们审查了一个广泛使用的指数的小组,描述了他们的数学制定,目的和属性,并根据使用模拟数据作为地理特性的数据特征来表征他们的行为和关键性。此外,我们可以提供R包,多样性SEQ,它在统一的框架中实现了整个分集指数和16S-SEQ数据的模拟器,因此代表了从NGS计数数据分析多样性的有价值资源16S-SEQ计算方法的基准测试。

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