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On the estimation of metabolic profiles in metagenomics

机译:估计偏心神经学中代谢谱的估计

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Metagenomics enables the characterization of the specific metabolic potential of a microbial community. The common approach towards a quantitative representation of this potential is to count the number of metagenomic sequence fragments that can be assigned to metabolic pathways by means of predicted gene functions. The resulting pathway abundances make up the metabolic profile of the metagenome and several different schemes for computing these profiles have been used. So far, none of the existing approaches actually estimates the proportion of sequences that can be assigned to a particular pathway. In most publications of metagenomic studies, the utilized abundance scores lack a clear statistical meaning and usually cannot be compared across different studies. Here, we introduce a mixture model-based approach to the estimation of pathway abundances that provides a basis for statistical interpretation and fast computation of metabolic profiles. Using the KEGG database our results on a large-scale analysis of data from the Human Microbiome Project show a good representation of metabolic differences between different body sites. Further, the results indicate that our mixture model even provides a better representation than the dedicated HUMAnN tool which has been developed for metabolic analysis of human microbiome data.
机译:Metagenomics使得能够表征微生物群落的特定代谢潜力。朝向该潜力的定量表示的常见方法是通过预测的基因函数计数可以分配给代谢途径的偏见序列片段的数量。所得到的途径丰富构成了Metagenome的代谢曲线,并且已经使用了用于计算这些轮廓的几种不同方案。到目前为止,现有方法均实际上没有估计可以分配给特定途径的序列的比例。在Meteragenomic研究的大多数出版物中,利用丰度得分缺乏明确的统计学意义,并且通常不能在不同的研究中进行比较。这里,我们介绍基于混合模型的方法来估计途径丰富,为统计解释和新代谢配置的快速计算提供了基础。使用KEGG数据库我们的结果对来自人类微生物组项目的大规模分析的数据显示出良好的不同体位之间代谢差异的良好代表性。此外,结果表明,我们的混合模型甚至提供比专用垃圾工具更好的表示,该工具已开发用于人类微生物组数据的代谢分析。

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