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Automated supervised learning pipeline for non-targeted GC-MS data analysis

机译:用于非针对性GC-MS数据分析的自动监督学习管道

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摘要

Non-targeted analysis is nowadays applied in many different domains of analytical chemistry such as metabolomics, environmental and food analysis. Conventional processing strategies for GC-MS data include baseline correction, feature detection, and retention time alignment before multivariate modeling. These techniques can be prone to errors and therefore time-consuming manual corrections are generally necessary. We introduce here a novel fully automated approach to non-targeted GC-MS data processing. This new approach avoids feature extraction and retention time alignment. Supervised machine learning on decomposed tensors of segmented chromatographic raw data signal is used to rank regions in the chromatograms contributing to differentiation between sample classes. The performance of this novel data analysis approach is demonstrated on three published datasets.
机译:如今在许多不同的分析化学结构域中应用了非靶向分析,例如代谢组合,环境和食物分析。 GC-MS数据的传统处理策略包括在多变量建模之前的基线校正,特征检测和保留时间对齐。这些技术可以容易出现误差,因此通常需要耗时的手动校正。我们介绍了一种新颖的完全自动化的非针对性GC-MS数据处理方法。这种新方法避免了特征提取和保留时间对齐。监督机器学习分解的分段色谱原始数据信号的张解器用于在贡献样本类之间的差异化的色谱图中的区分中。在三个已发布的数据集上展示了这种新型数据分析方法的性能。

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