微生物群
表型
生物
肠道微生物群
2019年冠状病毒病(COVID-19)
临床表型
免疫学
计算生物学
生物信息学
疾病
遗传学
病理
医学
基因
传染病(医学专业)
作者
Qi Su,Raphaela Iris Lau,Qin Liu,Moses K.T. Li,Joyce Wing Yan Mak,Wenqi Lu,I.S. Lau,Louis Ho Shing Lau,Giann T.Y. Yeung,Chun Pan Cheung,Whitney Tang,Chengyu Liu,Jessica Y. L. Ching,Pui Kuan Cheong,Francis K.L. Chan,Siew C. Ng
标识
DOI:10.1016/j.chom.2024.04.005
摘要
The mechanisms underlying the many phenotypic manifestations of post-acute COVID-19 syndrome (PACS) are poorly understood. Herein, we characterized the gut microbiome in heterogeneous cohorts of subjects with PACS and developed a multi-label machine learning model for using the microbiome to predict specific symptoms. Our processed data covered 585 bacterial species and 500 microbial pathways, explaining 12.7% of the inter-individual variability in PACS. Three gut-microbiome-based enterotypes were identified in subjects with PACS and associated with different phenotypic manifestations. The trained model showed an accuracy of 0.89 in predicting individual symptoms of PACS in the test set and maintained a sensitivity of 86% and a specificity of 82% in predicting upcoming symptoms in an independent longitudinal cohort of subjects before they developed PACS. This study demonstrates that the gut microbiome is associated with phenotypic manifestations of PACS, which has potential clinical utility for the prediction and diagnosis of PACS.
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