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Identifying enterotype in human microbiome by decomposing probabilistic topics into components

机译:通过将概率性主题分解为组件来识别人类微生物组中的肠型

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Discovering the global structures of microbial community using large-scale metagenomes is a significant challenge in the era of post-genomics. Data-driven methods such as dimension reduction have shown to be useful when they applied on a metagenomics profile matrix which summarize the abundance of functional or taxonomic categorizations in metagenomic samples. Analogously, model-driven method such as probability topic model (PTM) has been used to build a generative model to simulate the generating of a microbial community based on metagenomic profiles. Data-driven methods are direct and simple, they provide intuitive visualization and understanding of metagenomic profiles. Model-driven methods are often complicated but give a generative mechanism of microbial community which is helpful in understanding the generating process of complex microbial ecology. However, results from model-driven methods are usually hard to visualize and there is less an intuitive understanding of them. We developed a new computational framework to incorporate the strength of data-driven methods into model-based methods and applied the framework to discover and interpret enterotype in human microbiome.
机译:在后基因组学时代,使用大规模元基因组发现微生物群落的全球结构是一项重大挑战。当将数据驱动的方法(例如降维)应用于宏基因组学概况矩阵时,该方法已被证明是有用的,该矩阵总结了宏基因组样本中功能或分类学分类的丰富性。类似地,模型驱动的方法(例如概率主题模型(PTM))已被用于构建生成模型,以基于宏基因组图谱模拟微生物群落的产生。数据驱动的方法既直接又简单,它们提供了直观的可视化和对宏基因组学谱的理解。模型驱动的方法通常很复杂,但却给出了微生物群落的产生机理,这有助于理解复杂微生物生态学的产生过程。但是,模型驱动方法的结果通常很难可视化,因此对它们的直观了解较少。我们开发了一个新的计算框架,将数据驱动方法的优势整合到基于模型的方法中,并将该框架应用于发现和解释人类微生物组中的肠型。

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