基因组
微生物群
疾病
肠道菌群
生物标志物
肠道微生物群
生物
肝病
计算生物学
生物信息学
机器学习
医学
内科学
免疫学
计算机科学
遗传学
基因
作者
Yang Liu,Guillaume Méric,Aki S. Havulinna,Shu Mei Teo,Fredrik Åberg,Matti O. Ruuskanen,Jon G. Sanders,Qiyun Zhu,Anupriya Tripathi,Karin Verspoor,Susan Cheng,Mohit Jain,Pekka Jousilahti,Yoshiki Vázquez‐Baeza,Rohit Loomba,Leo Lahti,Teemu Niiranen,Veikko Salomaa,Rob Knight,Michael Inouye
出处
期刊:Cell Metabolism
[Elsevier]
日期:2022-05-01
卷期号:34 (5): 719-730.e4
被引量:46
标识
DOI:10.1016/j.cmet.2022.03.002
摘要
The gut microbiome has shown promise as a predictive biomarker for various diseases. However, the potential of gut microbiota for prospective risk prediction of liver disease has not been assessed. Here, we utilized shallow shotgun metagenomic sequencing of a large population-based cohort (N > 7,000) with ∼15 years of follow-up in combination with machine learning to investigate the predictive capacity of gut microbial predictors individually and in conjunction with conventional risk factors for incident liver disease. Separately, conventional and microbial factors showed comparable predictive capacity. However, microbiome augmentation of conventional risk factors using machine learning significantly improved the performance. Similarly, disease-free survival analysis showed significantly improved stratification using microbiome-augmented models. Investigation of predictive microbial signatures revealed previously unknown taxa for liver disease, as well as those previously associated with hepatic function and disease. This study supports the potential clinical validity of gut metagenomic sequencing to complement conventional risk factors for prediction of liver diseases.
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