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Differential Markov random field analysis with an application to detecting differential microbial community networks

机译:差分马尔可夫随机场分析及其在检测微生物群落网络中的应用

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摘要

Micro-organisms such as bacteria form complex ecological community networks that can be greatly influenced by diet and other environmental factors. Differential analysis of microbial community structures aims to elucidate systematic changes during an adaptive response to changes in environment. In this paper, we propose a flexible Markov random field model for microbial network structure and introduce a hypothesis testing framework for detecting differences between networks, also known as differential network analysis. Our global test for differential networks is particularly powerful against sparse alternatives. In addition, we develop a multiple testing procedure with false discovery rate control to identify the structure of the differential network. The proposed method is applied to data from a gut microbiome study on U.K. twins to evaluate how age affects the microbial community network.
机译:诸如细菌之类的微生物形成复杂的生态群落网络,其可能会受到饮食和其他环境因素的极大影响。微生物群落结构的差异分析旨在阐明对环境变化的适应性响应过程中的系统变化。在本文中,我们为微生物网络结构提出了一个灵活的马尔可夫随机场模型,并介绍了一种用于检测网络之间差异的假设测试框架,也称为差分网络分析。对于差分网络,我们针对差分网络的全球测试特别强大。此外,我们开发了具有错误发现率控制的多重测试程序,以识别差分网络的结构。拟议的方法应用于来自英国双胞胎肠道微生物组研究的数据,以评估年龄如何影响微生物群落网络。

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