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A multivariate distance‐based analytic framework for microbial interdependence association test in longitudinal study

机译:纵向研究中的微生物相互依存缔合作基于多变量距离的分析框架

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ABSTRACT Human microbiome is the collection of microbes living in and on the various parts of our body. The microbes living on our body in nature do not live alone. They act as integrated microbial community with massive competing and cooperating and contribute to our human health in a very important way. Most current analyses focus on examining microbial differences at a single time point, which do not adequately capture the dynamic nature of the microbiome data. With the advent of high‐throughput sequencing and analytical tools, we are able to probe the interdependent relationship among microbial species through longitudinal study. Here, we propose a multivariate distance‐based test to evaluate the association between key phenotypic variables and microbial interdependence utilizing the repeatedly measured microbiome data. Extensive simulations were performed to evaluate the validity and efficiency of the proposed method. We also demonstrate the utility of the proposed test using a well‐designed longitudinal murine experiment and a longitudinal human study. The proposed methodology has been implemented in the freely distributed open‐source R package and Python code.
机译:摘要人类微生物犬是生活在我们身体各个部位的微生物的集合。生活在我们身体上的微生物并不独自生活。它们作为集成的微生物群落,具有巨大的竞争和合作,并以非常重要的方式促进我们的人类健康。大多数电流分析专注于在单个时间点检查微生物差异,这不会充分捕获微生物组数据的动态性质。随着高通量测序和分析工具的出现,我们通过纵向研究能够探测微生物物种之间的相互依赖关系。这里,我们提出了一种基于多变量的距离的测试,以评估利用重复测量的微生物组数据的关键表型变量和微生物相互依存之间的关联。进行广泛的模拟以评估所提出的方法的有效性和效率。我们还展示了使用精心设计的纵鼠实验和纵向人类研究的提出测试的效用。所提出的方法已经在自由分布式的开源R包和Python代码中实现。

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