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Learning a mixture of microbial networks using minorization–maximization

机译:使用最小化-最大化学习混合微生物网络

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摘要

MotivationThe interactions among the constituent members of a microbial community play a major role in determining the overall behavior of the community and the abundance levels of its members. These interactions can be modeled using a network whose nodes represent microbial taxa and edges represent pairwise interactions. A microbial network is typically constructed from a sample-taxa count matrix that is obtained by sequencing multiple biological samples and identifying taxa counts. From large-scale microbiome studies, it is evident that microbial community compositions and interactions are impacted by environmental and/or host factors. Thus, it is not unreasonable to expect that a sample-taxa matrix generated as part of a large study involving multiple environmental or clinical parameters can be associated with more than one microbial network. However, to our knowledge, microbial network inference methods proposed thus far assume that the sample-taxa matrix is associated with a single network.
机译:动机微生物群落组成成员之间的相互作用在决定群落的整体行为及其成员的丰度水平方面起着重要作用。可以使用网络对这些交互进行建模,该网络的节点表示微生物分类单元,边表示配对交互。微生物网络通常由样品分类单元计数矩阵构成,该矩阵通过对多个生物样品进行测序并识别分类单元计数而获得。从大规模微生物组研究中,很明显,微生物群落的组成和相互作用受环境和/或宿主因素的影响。因此,可以预期,作为涉及多个环境或临床参数的大型研究的一部分而生成的样品分类单元矩阵可以与多个微生物网络相关联。然而,据我们所知,迄今为止提出的微生物网络推论方法假定样本-分类单元矩阵与单个网络相关联。

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