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Performance Evaluation and Online Realization of Data-driven Normalization Methods Used in LC/MS based Untargeted Metabolomics Analysis

机译:基于LC / MS的非目标代谢组学分析中数据驱动归一化方法的性能评估和在线实现

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摘要

In untargeted metabolomics analysis, several factors (e.g., unwanted experimental & biological variations and technical errors) may hamper the identification of differential metabolic features, which requires the data-driven normalization approaches before feature selection. So far, ≥16 normalization methods have been widely applied for processing the LC/MS based metabolomics data. However, the performance and the sample size dependence of those methods have not yet been exhaustively compared and no online tool for comparatively and comprehensively evaluating the performance of all 16 normalization methods has been provided. In this study, a comprehensive comparison on these methods was conducted. As a result, 16 methods were categorized into three groups based on their normalization performances across various sample sizes. The VSN, the Log Transformation and the PQN were identified as methods of the best normalization performance, while the Contrast consistently underperformed across all sub-datasets of different benchmark data. Moreover, an interactive web tool comprehensively evaluating the performance of 16 methods specifically for normalizing LC/MS based metabolomics data was constructed and hosted at . In summary, this study could serve as a useful guidance to the selection of suitable normalization methods in analyzing the LC/MS based metabolomics data.
机译:在非目标代谢组学分析中,几个因素(例如,不必要的实验和生物学变异以及技术错误)可能会阻碍识别差异代谢特征,这需要在选择特征之前采用数据驱动的归一化方法。迄今为止,≥16种标准化方法已广泛用于处理基于LC / MS的代谢组学数据。但是,尚未对这些方法的性能和样本大小依赖性进行详尽的比较,也没有提供用于比较全面地评估所有16种归一化方法的性能的在线工具。在这项研究中,对这些方法进行了全面的比较。结果,根据16种方法在不同样本量下的归一化性能,将其分为三类。 VSN,对数转换和PQN被认为是最佳标准化性能的方法,而对比度在不同基准数据的所有子数据集中始终表现不佳。此外,还构建了一个交互式网络工具,该工具可全面评估16种方法的性能,这些工具专门用于标准化基于LC / MS的代谢组学数据。总而言之,这项研究可以为选择合适的归一化方法提供有用的指导,以分析基于LC / MS的代谢组学数据。

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