Department of Computer Science, Rice University, Houston, TX 77005, USA.
Emerg Top Life Sci. 2021 Dec 21;5(6):815-827. doi: 10.1042/ETLS20210213.
Associations between the human gut microbiome and expression of host illness have been noted in a variety of conditions ranging from gastrointestinal dysfunctions to neurological deficits. Machine learning (ML) methods have generated promising results for disease prediction from gut metagenomic information for diseases including liver cirrhosis and irritable bowel disease, but have lacked efficacy when predicting other illnesses. Here, we review current ML methods designed for disease classification from microbiome data. We highlight the computational challenges these methods have effectively overcome and discuss the biological components that have been overlooked to offer perspectives on future work in this area.
在从胃肠道功能障碍到神经功能缺陷等各种情况下,都已经注意到人类肠道微生物组与宿主疾病表现之间的关联。机器学习 (ML) 方法已经为从肠道宏基因组信息预测包括肝硬化和肠易激综合征在内的疾病提供了有希望的结果,但在预测其他疾病方面缺乏疗效。在这里,我们回顾了目前为从微生物组数据进行疾病分类而设计的 ML 方法。我们强调了这些方法有效克服的计算挑战,并讨论了被忽视的生物学成分,为该领域的未来工作提供了思路。