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Data normalization strategies in metabolomics: Current challenges, approaches, and tools

机译:代谢组学中的数据归一化策略:当前挑战,方法和工具

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摘要

Data normalization is a big challenge in quantitative metabolomics approaches, whether targeted or untargeted. Without proper normalization, the mass-spectrometry and spectroscopy data can provide erroneous, sub-optimal data, which can lead to misleading and confusing biological results and thereby result in failed application to human healthcare, clinical, and other research avenues. To address this issue, a number of statistical approaches and software tools have been proposed in the literature and implemented over the years, thereby providing a multitude of approaches to choose from - either sample-based or data-based normalization strategies. In recent years, new dedicated software tools for metabolomics data normalization have surfaced as well. In this account article, I summarize the existing approaches and the new discoveries and research findings in this area of metabolomics data normalization, and I introduce some recent tools that aid in data normalization.
机译:数据标准化是定量代谢组合方法的大挑战,无论是针对性还是未确定。 如果没有适当的归一化,质谱和光谱数据可以提供错误的次优数据,这可能导致误导性和混淆生物学结果,从而导致人类医疗保健,临床和其他研究途径失败。 为了解决这个问题,文献中已经提出了许多统计方法和软件工具,多年来实施,从而提供了许多方法可以选择 - 基于样本的或基于数据的归一化策略。 近年来,新的专用软件工具对于代谢组学数据标准化也浮出水面。 在本账户文章中,我总结了现有的方法和新发现和新发现和研究结果,在这一领域进行了代谢组合数据规范化,我介绍了一些有助于数据标准化的工具。

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