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MicroBVS: Dirichlet-tree multinomial regression models with Bayesian variable selection - an R package

机译:Microbvs:Dirichlet-Tree多项式回归模型,带贝叶斯变量选择 - AR包装

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Understanding the relation between the human microbiome and modulating factors, such as diet, may help researchers design intervention strategies that promote and maintain healthy microbial communities. Numerous analytical tools are available to help identify these relations, oftentimes via automated variable selection methods. However, available tools frequently ignore evolutionary relations among microbial taxa, potential relations between modulating factors, as well as model selection uncertainty. We present MicroBVS, an R package for Dirichlet-tree multinomial models with Bayesian variable selection, for the identification of covariates associated with microbial taxa abundance data. The underlying Bayesian model accommodates phylogenetic structure in the abundance data and various parameterizations of covariates’ prior probabilities of inclusion. While developed to study the human microbiome, our software can be employed in various research applications, where the aim is to generate insights into the relations between a set of covariates and compositional data with or without a known tree-like structure.
机译:了解人类微生物组和调制因素之间的关系,例如饮食,可以帮助研究人员设计促进和维持健康的微生物社区的干预策略。可以通过自动化可变选择方法使用多种分析工具来帮助识别这些关系。然而,可用工具经常忽略微生物分类群之间的进化关系,调制因子之间的潜在关系,以及模型选择不确定性。我们呈现Microbvs,R包用于Dirichlet-Tree多型模型,具有贝叶斯变量选择,用于识别与微生物分类群丰富数据相关的协变量。底层贝叶斯模型在丰富数据和协变者纳入概率的丰富数据中提供系统发育结构。虽然开发学习人类微生物组,但我们的软件可以在各种研究应用中使用,其中目的是产生与或没有已知的树状结构的一组协变量和组成数据之间的关系的洞察。

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