Machine learning and data-driven inverse modeling of metabolomics unveil key process of active aging

Jiahang Li, martin brenner, iro pierides, barbara wessner, bernhard franzke, eva maria strasser, Steffen Waldherr, karl heinz wagner, Wolfram Weckwerth
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Abstract

Physical inactivity and a weak fitness status have become a global health concern. Metabolomics, as an integrative systematic approach, might link to individual fitness at the molecular level. In this study, we performed blood samples metabolomics analysis of a cohort of elderly people with different treatments. By defining two groups of fitness and corresponding metabolites profiles, we tested several machine learning classification approaches to identify key metabolite biomarkers, which showed robustly aspartate as a dominant negative marker of fitness. Following, the metabolomics data of the two groups were analyzed by a novel approach for metabolic network interaction termed COVRECON. Where we identified the enzyme AST as the most important metabolic regulation between the fit and the less fit groups. Routine blood tests in these two cohorts validated significant differences in AST and ALT. In summary, we combine machine learning classification and COVRECON to identify metabolomics biomarkers and causal processes for fitness of elderly people.
机器学习和数据驱动的代谢组学逆向建模揭示了活跃衰老的关键过程
缺乏运动和体能状况不佳已成为全球关注的健康问题。代谢组学作为一种综合性的系统方法,可能在分子水平上与个人体质有关。在这项研究中,我们对一组接受不同治疗的老年人进行了血液样本代谢组学分析。通过定义两组体质和相应的代谢物特征,我们测试了几种机器学习分类方法,以确定关键的代谢物生物标志物,结果显示天门冬氨酸是体质的主要负标志物。随后,我们采用一种名为 COVRECON 的代谢网络交互新方法对两组的代谢组学数据进行了分析。在此基础上,我们发现氨基转移酶(AST)是调节体能良好组和体能较差组之间代谢的最重要因素。这两个组群的常规血液检测验证了 AST 和 ALT 的显著差异。总之,我们将机器学习分类和 COVRECON 结合起来,确定了老年人体能的代谢组学生物标志物和因果过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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