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MicroPheno: predicting environments and host phenotypes from 16S rRNA gene sequencing using a k-mer based representation of shallow sub-samples

机译:MicroPheno:使用基于k-mer的浅层子样本表示法从16S rRNA基因测序预测环境和宿主表型

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摘要

MotivationMicrobial communities play important roles in the function and maintenance of various biosystems, ranging from the human body to the environment. A major challenge in microbiome research is the classification of microbial communities of different environments or host phenotypes. The most common and cost-effective approach for such studies to date is 16S rRNA gene sequencing. Recent falls in sequencing costs have increased the demand for simple, efficient and accurate methods for rapid detection or diagnosis with proved applications in medicine, agriculture and forensic science. We describe a reference- and alignment-free approach for predicting environments and host phenotypes from 16S rRNA gene sequencing based on k-mer representations that benefits from a bootstrapping framework for investigating the sufficiency of shallow sub-samples. Deep learning methods as well as classical approaches were explored for predicting environments and host phenotypes.
机译:动机微生物群落在从人体到环境的各种生物系统的功能和维护中起着重要作用。微生物组研究的主要挑战是不同环境或宿主表型的微生物群落的分类。迄今为止,此类研究中最常见且最具成本效益的方法是16S rRNA基因测序。测序成本的最近下降已经增加了对用于快速检测或诊断的简单,有效和准确的方法的需求,并已在医学,农业和法医科学中证明了其应用。我们描述了一种无参考和无比对方法,可从基于k-mer表征的16S rRNA基因测序预测环境和宿主表型中受益,该方法受益于用于研究浅层子样品充足性的自举框架。探索了深度学习方法以及经典方法来预测环境和宿主表型。

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