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首页> 外文期刊>Journal of chromatography, B. Analytical technologies in the biomedical and life sciences >Independent component analysis in non-hypothesis driven metabolomics: Improvement of pattern discovery and simplification of biological data interpretation demonstrated with plasma samples of exercising humans
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Independent component analysis in non-hypothesis driven metabolomics: Improvement of pattern discovery and simplification of biological data interpretation demonstrated with plasma samples of exercising humans

机译:非假设驱动的代谢组学中的独立成分分析:锻炼人类血浆样品证明的模式发现改善和生物数据解释简化

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In a non-hypothesis driven metabolomics approach plasma samples collected at six different time points (before, during and after an exercise bout) were analyzed by gas chromatography-time of flight mass spectrometry (GC-TOF MS). Since independent component analysis (ICA) does not need a priori information on the investigated process and moreover can separate statistically independent source signals with non-Gaussian distribution, we aimed to elucidate the analytical power of ICA for the metabolic pattern analysis and the identification of key metabolites in this exercise study. A novel approach based on descriptive statistics was established to optimize ICA model. In the GC-TOF MS data set the number of principal components after whitening and the number of independent components of ICA were optimized and systematically selected by descriptive statistics. The elucidated dominating independent components were involved in fuel metabolism, representing one of the most affected metabolic changes occurring in exercising humans. Conclusive time dependent physiological changes of the metabolic pattern under exercise conditions were detected. We conclude that after optimization ICA can successfully elucidate key metabolite pattern as well as characteristic metabolites in metabolic processes thereby simplifying the explanation of complex biological processes. Moreover, ICA is capable to study time series in complex experiments with multi-levels and multi-factors.
机译:在非假设驱动的代谢组学方法中,通过气相色谱-飞行时间质谱(GC-TOF MS)分析了在六个不同时间点(运动前,运动中和运动后)收集的血浆样品。由于独立成分分析(ICA)不需要有关调查过程的先验信息,而且可以分离具有非高斯分布的统计独立源信号,因此我们旨在阐明ICA在代谢模式分析和关键识别方面的分析能力这项运动研究中的代谢产物。建立了一种基于描述统计的新方法来优化ICA模型。在GC-TOF MS数据集中,通过描述性统计优化并系统地选择了增白后的主要成分数量和ICA的独立成分数量。已阐明的主要独立成分参与了燃料代谢,代表了锻炼人体时受影响最大的代谢变化之一。检测运动条件下代谢模式的结论性的时间依赖性生理变化。我们得出的结论是,经过优化后,ICA可以成功阐明代谢过程中的关键代谢物模式以及特征性代谢物,从而简化了复杂生物过程的解释。此外,ICA能够在具有多个级别和多个因素的复杂实验中研究时间序列。

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