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Troubleshooting in Large-Scale LC-ToF-MS Metabolomics Analysis: Solving Complex Issues in Big Cohorts

机译:大规模LC-ToF-MS代谢组学分析中的故障排除:解决大型队列中的复杂问题

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摘要

Metabolomics, understood as the science that manages the study of compounds from the metabolism, is an essential tool for deciphering metabolic changes in disease. The experiments rely on the use of high-throughput analytical techniques such as liquid chromatography coupled to mass spectrometry (LC-ToF MS). This hyphenation has brought positive aspects such as higher sensitivity, specificity and the extension of the metabolome coverage in a single run. The analysis of a high number of samples in a single batch is currently not always feasible due to technical and practical issues (i.e., a drop of the MS signal) which result in the MS stopping during the experiment obtaining more than a single sample batch. In this situation, careful data treatment is required to enable an accurate joint analysis of multi-batch data sets. This paper summarizes the analytical strategies in large-scale metabolomic experiments; special attention has been given to QC preparation troubleshooting and data treatment. Moreover, labeled internal standards analysis and their aim in data treatment, and data normalization procedures (intra- and inter-batch) are described. These concepts are exemplified using a cohort of 165 patients from a study in asthma.
机译:代谢组学是一门管理新陈代谢化合物研究的科学,是解密疾病代谢变化的重要工具。实验依赖于高通量分析技术的使用,例如液相色谱与质谱联用(LC-ToF MS)。这种连接带来了积极的方面,例如更高的敏感性,特异性和一次代谢组代谢覆盖率的扩展。由于技术和实际问题(即MS信号下降),单批次分析大量样品目前并不总是可行的,这会导致MS在实验过程中停止获取多于一个的样品批次。在这种情况下,需要进行仔细的数据处理才能对多批次数据集进行准确的联合分析。本文总结了大规模代谢组学实验中的分析策略。尤其关注质量控制准备故障排除和数据处理。此外,还介绍了带标签的内部标准分析及其在数据处理中的目标,以及数据标准化程序(批内和批间)。这些概念以哮喘研究中的165名患者为例。

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