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On the Interpretation of High Throughput MS Based Metabolomics Fingerprints with Random Forest

机译:基于随机森林的高通量质谱代谢组学指纹图谱的解释

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We discuss application of a machine learning method, Random Forest (RF), for the extraction of relevant biological knowledge from metabolomics fingerprinting experiments. The importance of RF margins and variable significance as well as prediction accuracy is discussed to provide insight into model generalisability and explanatory power. A method' is described for detection of relevant features while conserving the redundant structure of the fingerprint data. The methodology is illustrated using two datasets from electrospray ionisation mass spectrometry from 27 Arabidopsis genotypes and a set of transgenic potato lines.
机译:我们讨论了一种机器学习方法,随机森林(RF)的应用,用于从代谢组学指纹图谱实验中提取相关的生物学知识。讨论了RF余量和变量重要性以及预测准确性的重要性,以提供对模型通用性和解释能力的了解。描述了一种用于检测相关特征同时保留指纹数据的冗余结构的方法。使用来自27个拟南芥基因型和一组转基因马铃薯品系的电喷雾电离质谱的两个数据集说明了该方法。

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