肝硬化
微生物群
基因组
生物
肠道微生物群
计算生物学
医学
胃肠病学
生物信息学
遗传学
基因
作者
Tae Gyu Oh,Susy M. Kim,Cyrielle Caussy,Ting Fu,Jian Guo,Shirin Bassirian,Seema Singh,Egbert Madamba,Ricki Bettencourt,Lisa Richards,Ruth T. Yu,Annette R. Atkins,Tao Huan,David A. Brenner,Claude B. Sirlin,Michael Downes,Ronald M. Evans,Rohit Loomba
出处
期刊:Cell Metabolism
[Cell Press]
日期:2020-06-30
卷期号:32 (5): 878-888.e6
被引量:234
标识
DOI:10.1016/j.cmet.2020.06.005
摘要
Dysregulation of the gut microbiome has been implicated in the progression of non-alcoholic fatty liver disease (NAFLD) to advanced fibrosis and cirrhosis. To determine the diagnostic capacity of this association, we compared stool microbiomes across 163 well-characterized participants encompassing non-NAFLD controls, NAFLD-cirrhosis patients, and their first-degree relatives. Interrogation of shotgun metagenomic and untargeted metabolomic profiles by using the random forest machine learning algorithm and differential abundance analysis identified discrete metagenomic and metabolomic signatures that were similarly effective in detecting cirrhosis (diagnostic accuracy 0.91, area under curve [AUC]). Combining the metagenomic signature with age and serum albumin levels accurately distinguished cirrhosis in etiologically and genetically distinct cohorts from geographically separated regions. Additional inclusion of serum aspartate aminotransferase levels, which are increased in cirrhosis patients, enabled discrimination of cirrhosis from earlier stages of fibrosis. These findings demonstrate that a core set of gut microbiome species might offer universal utility as a non-invasive diagnostic test for cirrhosis.
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