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Analytical challenges of untargeted GC-MS-based metabolomics and the critical issues in selecting the data processing strategy

机译:基于目标的基于GC-MS的代谢组学的分析挑战以及选择数据处理策略时的关键问题

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摘要

>Background: A challenge of metabolomics is data processing the enormous amount of information generated by sophisticated analytical techniques. The raw data of an untargeted metabolomic experiment are composited with unwanted biological and technical variations that confound the biological variations of interest. The art of data normalisation to offset these variations and/or eliminate experimental or biological biases has made significant progress recently. However, published comparative studies are often biased or have omissions. >Methods: We investigated the issues with our own data set, using five different representative methods of internal standard-based, model-based, and pooled quality control-based approaches, and examined the performance of these methods against each other in an epidemiological study of gestational diabetes using plasma. >Results: Our results demonstrated that the quality control-based approaches gave the highest data precision in all methods tested, and would be the method of choice for controlled experimental conditions. But for our epidemiological study, the model-based approaches were able to classify the clinical groups more effectively than the quality control-based approaches because of their ability to minimise not only technical variations, but also biological biases from the raw data. >Conclusions: We suggest that metabolomic researchers should optimise and justify the method they have chosen for their experimental condition in order to obtain an optimal biological outcome.
机译:>背景:代谢组学的一个挑战是数据处理复杂的分析技术所产生的大量信息。非目标代谢组学实验的原始数据与不想要的生物学和技术变异混合在一起,从而混淆了感兴趣的生物学变异。最近,用于抵消这些变化和/或消除实验或生物学偏差的数据归一化技术取得了重大进展。但是,已发表的比较研究经常有偏差或有遗漏。 >方法:我们使用基于内部标准,基于模型和基于集合质量控制的五种不同代表性方法,对自己的数据集进行了调查,并针对这些方法针对在使用血浆进行妊娠糖尿病的流行病学研究中相互交流。 >结果:我们的结果表明,基于质量控制的方法在所有测试方法中均提供了最高的数据精度,将成为受控实验条件下的首选方法。但是对于我们的流行病学研究,基于模型的方法比基于质量控制的方法能够更有效地对临床组进行分类,因为它们不仅能够最大程度地减少技术差异,而且还可以最大程度地减少原始数据的生物学偏差。 >结论:我们建议代谢组学研究人员应针对实验条件优化和证明选择的方法,以获得最佳的生物学结果。

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