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Bayesian mixture analysis for metagenomic community profiling

机译:贝叶斯混合分析用于宏基因组分析

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Motivation: Deep sequencing of clinical samples is now an established tool for the detection of infectious pathogens, with direct medical applications. The large amount of data generated produces an opportunity to detect species even at very low levels, provided that computational tools can effectively profile the relevant metagenomic communities. Data interpretation is complicated by the fact that short sequencing reads can match multiple organisms and by the lack of completeness of existing databases, in particular for viral pathogens. Here we present metaMix, a Bayesian mixture model framework for resolving complex metagenomic mixtures. We show that the use of parallel Monte Carlo Markov chains for the exploration of the species space enables the identification of the set of species most likely to contribute to the mixture.
机译:动机:临床样品的深度测序现已成为直接检测医疗传染病原体的成熟工具。只要计算工具可以有效地描述相关的宏基因组群落,生成的大量数据即使在非常低的水平下也有机会检测物种。短测序读段可以匹配多种生物,并且缺乏现有数据库的完整性,特别是对于病毒病原体,数据解释变得复杂。在这里,我们介绍metaMix,贝叶斯混合模型框架,用于解决复杂的宏基因组混合。我们表明,使用并行的蒙特卡洛马尔可夫链进行物种空间的探索可以确定最有可能有助于混合物的物种集。

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