牛瘤胃微生物群中微生物共存和互斥网络

Haiying Wang, Huiru Zheng, R. Dewhurst, R. Roehe
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引用次数: 5

摘要

认识到瘤胃微生物组的重要性,激发了大规模研究瘤胃微生物群落组成的努力。通过相关性分析来推断瘤胃微生物群落成员之间的关联和依赖关系是一个重要的研究领域。然而,由于数据的组成性质,简单地应用基于相关性的技术来分析微生物基因的相对丰度可能会产生人为的相关性和信息丢失。为了减轻组成对瘤胃微生物组数据分析的影响,本研究采用了一个框架,包括两个相关度量和三个不相似度量的概要,这些度量本质上对组合性具有鲁棒性。基于显著正相关和负相关的推断,构建了共存在和互斥网络。确定了与甲烷产量相关的相应模块。这些模块富含与甲烷排放相关的微生物基因,并编码参与甲烷产甲烷途径的酶。与之前的研究相比,我们的分析表明,基于相对丰度之间的相关性推导微生物关联不仅可能导致信息缺失,还可能产生虚假的关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Microbial co-presence and mutual-exclusion networks in the Bovine rumen microbiome
The recognized significance of rumen microbiome has inspired efforts to examine the composition of rumen microbial communities in a large scale. One of the key research areas is to infer association and dependencies between members of rumen microbial communities through correlation analysis. However, it has been found that due to the compositional nature of data, simply applying correlation-based techniques to the analysis of relative abundance of microbial genes may produce artefactual correlation and loss of information. In an attempt to mitigate the compositional effect on the analysis of rumen microbiome data, this study applied a framework including a compendium of two correlation measures and three dissimilarity metrics that are intrinsically robust to compositionality. Based on the inference of significant positive and negative associations, co-presence and mutual-exclusion networks were constructed. The corresponding modules associated with methane production were identified. The modules are highly enriched with microbial genes associated with methane emissions and encoding enzymes involved in the methane methanogensis pathway. In comparisons to previous studies, our analysis demonstrates that deriving microbial associations based on the correlations between relative abundances may not only lead to missing information but also produce spurious associations.
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