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Constructing Predictive Microbial Signatures at Multiple Taxonomic Levels

机译:在多个分类学水平上构建预测性微生物特征

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Recent advances in DNA sequencing technology have enabled rapid advances in our understanding of the contribution of the human microbiome to many aspects of normal human physiology and disease. A major goal of human microbiome studies is the identification of important groups of microbes that are predictive of host phenotypes. However, the large number of bacterial taxa and the compositional nature of the data make this goal difficult to achieve using traditional approaches. Furthermore, the microbiome data are structured in the sense that bacterial taxa are not independent of one another and are related evolutionarily by a phylogenetic tree. To deal with these challenges, we introduce the concept of variable fusion for high-dimensional compositional data and propose a novel tree-guided variable fusion method. Our method is based on the linear regression model with tree-guided penalty functions. It incorporates the tree information node-by-node and is capable of building predictive models comprised of bacterial taxa at different taxonomic levels. A gut microbiome data analysis and simulations are presented to illustrate the good performance of the proposed method. Supplementary materials for this article are available online.
机译:DNA测序技术的最新进展使我们对人类微生物组对正常人类生理学和疾病的许多贡献的理解有了快速的发展。人类微生物组研究的主要目标是鉴定可预测宿主表型的重要微生物。但是,大量的细菌类群和数据的组成性质使得使用传统方法很难实现此目标。此外,微生物组数据的结构是指细菌类群彼此不独立,而是由系统树进化相关。为了应对这些挑战,我们引入了针对高维成分数据的变量融合的概念,并提出了一种新颖的树引导型变量融合方法。我们的方法基于具有树引导惩罚函数的线性回归模型。它逐节点合并了树信息,并能够建立由不同分类学级别的细菌分类群组成的预测模型。肠道微生物组数据分析和模拟被提出来说明所提出的方法的良好性能。可在线获得本文的补充材料。

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