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质谱非靶向代谢组学的质量保证程序。综述。

Quality assurance procedures for mass spectrometry untargeted metabolomics. a review.

机构信息

Center for Metabolomics and Bioanalysis (CEMBIO), Faculty of Pharmacy, San Pablo CEU University, Boadilla del Monte, ES-28668, Madrid, Spain.

出版信息

J Pharm Biomed Anal. 2018 Jan 5;147:149-173. doi: 10.1016/j.jpba.2017.07.044. Epub 2017 Aug 5.

Abstract

Untargeted metabolomics, as a global approach, has already proven its great potential and capabilities for the investigation of health and disease, as well as the wide applicability for other research areas. Although great progress has been made on the feasibility of metabolomics experiments, there are still some challenges that should be faced and that includes all sources of fluctuations and bias affecting every step involved in multiplatform untargeted metabolomics studies. The identification and reduction of the main sources of unwanted variation regarding the pre-analytical, analytical and post-analytical phase of metabolomics experiments is essential to ensure high data quality. Nowadays, there is still a lack of information regarding harmonized guidelines for quality assurance as those available for targeted analysis. In this review, sources of variations to be considered and minimized along with methodologies and strategies for monitoring and improvement the quality of the results are discussed. The given information is based on evidences from different groups among our own experiences and recommendations for each stage of the metabolomics workflow. The comprehensive overview with tools presented here might serve other researchers interested in monitoring, controlling and improving the reliability of their findings by implementation of good experimental quality practices in the untargeted metabolomics study.

摘要

非靶向代谢组学作为一种全局方法,已经证明了其在研究健康和疾病方面的巨大潜力和能力,以及在其他研究领域的广泛适用性。尽管代谢组学实验的可行性已经取得了很大的进展,但仍有一些挑战需要面对,包括影响多平台非靶向代谢组学研究各个步骤的所有波动和偏差源。鉴定和减少与代谢组学实验的分析前、分析中和分析后阶段有关的主要变化源对于确保高质量的数据至关重要。如今,针对靶向分析可用的质量保证协调指南,仍然缺乏有关信息。在这篇综述中,讨论了需要考虑的变异源以及监测和改进结果质量的方法和策略。所提供的信息基于我们自己的经验和对代谢组学工作流程各个阶段的建议的不同小组的证据。这里提出的全面概述和工具可能会为其他有兴趣通过在非靶向代谢组学研究中实施良好的实验质量实践来监测、控制和提高发现可靠性的研究人员提供服务。

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