Department of Food Chemistry and Toxicology, Faculty of Chemistry, University of Vienna , Währingerstraße 38, 1090 Vienna, Austria.
IBM Almaden Research Lab , 650 Harry Road, San Jose, California 95120, United States.
Anal Chem. 2017 Nov 7;89(21):11505-11513. doi: 10.1021/acs.analchem.7b02759. Epub 2017 Oct 9.
Concurrent exposure to a wide variety of xenobiotics and their combined toxic effects can play a pivotal role in health and disease, yet are largely unexplored. Investigating the totality of these exposures, i.e., the "exposome", and their specific biological effects constitutes a new paradigm for environmental health but still lacks high-throughput, user-friendly technology. We demonstrate the utility of mass spectrometry-based global exposure metabolomics combined with tailored database queries and cognitive computing for comprehensive exposure assessment and the straightforward elucidation of biological effects. The METLIN Exposome database has been redesigned to help identify environmental toxicants, food contaminants and supplements, drugs, and antibiotics as well as their biotransformation products, through its expansion with over 700 000 chemical structures to now include more than 950 000 unique small molecules. More importantly, we demonstrate how the XCMS/METLIN platform now allows for the readout of the biological effect of a toxicant through metabolomic-derived pathway analysis, and further, artificial intelligence provides a means of assessing the role of a potential toxicant. The presented workflow addresses many of the methodological challenges current exposomics research is facing and will serve to gain a deeper understanding of the impact of environmental exposures and combinatory toxic effects on human health.
同时暴露于多种外源化学物及其联合毒性作用可能在健康和疾病中发挥关键作用,但这方面的研究还很不充分。研究这些暴露的总体情况,即“暴露组”,及其特定的生物学效应,是环境健康的一个新范式,但仍缺乏高通量、用户友好的技术。我们展示了基于质谱的全局暴露代谢组学与定制数据库查询和认知计算相结合,用于全面暴露评估和直接阐明生物学效应的应用。METLIN 暴露组数据库经过重新设计,通过扩展超过 700000 个化学结构,现在包含了超过 950000 个独特的小分子,从而有助于识别环境毒物、食物污染物和补充剂、药物和抗生素及其生物转化产物。更重要的是,我们展示了如何通过代谢组学衍生的途径分析,利用 XCMS/METLIN 平台读取毒物的生物学效应,并且人工智能提供了一种评估潜在毒物作用的方法。所提出的工作流程解决了当前暴露组学研究面临的许多方法学挑战,并将有助于更深入地了解环境暴露和组合毒性作用对人类健康的影响。