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Sparse and Compositionally Robust Inference of Microbial Ecological Networks

机译:微生物生态网络的稀疏和组成稳健的推断

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摘要

16S ribosomal RNA (rRNA) gene and other environmental sequencing techniques provide snapshots of microbial communities, revealing phylogeny and the abundances of microbial populations across diverse ecosystems. While changes in microbial community structure are demonstrably associated with certain environmental conditions (from metabolic and immunological health in mammals to ecological stability in soils and oceans), identification of underlying mechanisms requires new statistical tools, as these datasets present several technical challenges. First, the abundances of microbial operational taxonomic units (OTUs) from amplicon-based datasets are compositional. Counts are normalized to the total number of counts in the sample. Thus, microbial abundances are not independent, and traditional statistical metrics (e.g., correlation) for the detection of OTU-OTU relationships can lead to spurious results. Secondly, microbial sequencing-based studies typically measure hundreds of OTUs on only tens to hundreds of samples; thus, inference of OTU-OTU association networks is severely under-powered, and additional information (or assumptions) are required for accurate inference. Here, we present SPIEC-EASI (>SParse >Invers>E >Covariance Estimation for >Ecological >Association >Inference), a statistical method for the inference of microbial ecological networks from amplicon sequencing datasets that addresses both of these issues. SPIEC-EASI combines data transformations developed for compositional data analysis with a graphical model inference framework that assumes the underlying ecological association network is sparse. To reconstruct the network, SPIEC-EASI relies on algorithms for sparse neighborhood and inverse covariance selection. To provide a synthetic benchmark in the absence of an experimentally validated gold-standard network, SPIEC-EASI is accompanied by a set of computational tools to generate OTU count data from a set of diverse underlying network topologies. SPIEC-EASI outperforms state-of-the-art methods to recover edges and network properties on synthetic data under a variety of scenarios. SPIEC-EASI also reproducibly predicts previously unknown microbial associations using data from the American Gut project.
机译:16S核糖体RNA(rRNA)基因和其他环境测序技术提供了微生物群落的快照,揭示了整个生态系统中的系统发育和微生物种群数量。虽然微生物群落结构的变化显然与某些环境条件有关(从哺乳动物的代谢和免疫健康到土壤和海洋的生态稳定性),但基本机制的识别需要新的统计工具,因为这些数据集提出了若干技术挑战。首先,来自基于扩增子的数据集的大量微生物操作分类单位(OTU)是组成成分。将计数标准化为样本中计数的总数。因此,微生物丰度不是独立的,并且用于检测OTU-OTU关系的传统统计量度(例如,相关性)会导致虚假结果。其次,基于微生物测序的研究通常只对数十到数百个样品测量数百个OTU。因此,OTU-OTU关联网络的推理功能严重不足,并且需要其他信息(或假设)才能进行准确的推理。在这里,我们介绍了SPIEC-EASI(> SP arse > I nvers > E > C > E < / strong> cological > A sociation > I nference),这是一种统计方法,可从扩增子测序数据集中推断出微生物生态网络,从而解决了这两个问题。 SPIEC-EASI将为组成数据分析而开发的数据转换与图形模型推论框架相结合,该模型模型推论了基本的生态协会网络是稀疏的。为了重建网络,SPIEC-EASI依靠稀疏邻域和逆协方差选择算法。为了在没有经过实验验证的金标准网络的情况下提供综合基准,SPIEC-EASI随附了一组计算工具,可从一组不同的基础网络拓扑生成OTU计数数据。 SPIEC-EASI在各种情况下均优于最新方法来在合成数据上恢复边缘和网络属性。 SPIEC-EASI还可以使用American Gut项目的数据可重复地预测以前未知的微生物关联。

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