纵观全局,利用主题建模观察与疾病相关的微生物群落。

Gut microbes reports Pub Date : 2024-01-01 Epub Date: 2024-08-20 DOI:10.1080/29933935.2024.2378067
Rachel L Fitzjerrells, Nicholas J Ollberding, Ashutosh K Mangalam
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引用次数: 0

摘要

微生物组是一个复杂的微生态系统,帮助宿主完成各种重要的生理过程。微生物组的改变(菌群失调)与多种疾病有关,一般来说,要对健康组和病人组进行差异丰度检测,以确定重要的细菌。然而,为个体提供单一种类的细菌作为治疗手段,并不像粪便微生物群移植疗法那样成功,后者是将健康个体的整个微生物群移植到患者体内。这些观察结果表明,多种细菌的组合可能是产生有益效果的关键。在这里,我们提供了一个框架,利用主题建模(一种无监督的机器学习方法)来识别与健康或疾病相关的细菌群落。具体来说,我们使用了之前发表的多发性硬化症(MS)患者的肠道微生物组数据,这是一种与肠道微生物组失调有关的神经退行性疾病。我们发现了与多发性硬化症相关的细菌群落,其中包括以前发现的菌属,也包括差异丰度测试可能忽略的其他菌属。这种方法是分析微生物组的有用工具,应与常用的丰度差异测试一起考虑,以更好地了解肠道微生物组在健康和疾病中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Looking at the full picture, using topic modeling to observe microbiome communities associated with disease.

The microbiome, a complex micro-ecosystem, helps the host with various vital physiological processes. Alterations of the microbiome (dysbiosis) have been linked with several diseases, and generally, differential abundance testing between the healthy and patient groups is performed to identify important bacteria. However, providing a singular species of bacteria to an individual as treatment has not been as successful as fecal microbiota transplant therapy, where the entire microbiome of a healthy individual is transferred. These observations suggest that a combination of bacteria might be crucial for the beneficial effects. Here we provide the framework to utilize topic modeling, an unsupervised machine learning approach, to identify a community of bacteria related to health or disease. Specifically, we used our previously published gut microbiome data of patients with multiple sclerosis (MS), a neurodegenerative disease linked to a dysbiotic gut microbiome. We identified communities of bacteria associated with MS, including genera previously discovered, but also others that would have been overlooked by differential abundance testing. This method can be a useful tool for analyzing the microbiome, and it should be considered along with the commonly utilized differential abundance tests to better understand the role of the gut microbiome in health and disease.

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