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首页> 外文期刊>PLoS One >Utilizing machine learning with knockoff filtering to extract significant metabolites in Crohn’s disease with a publicly available untargeted metabolomics dataset
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Utilizing machine learning with knockoff filtering to extract significant metabolites in Crohn’s disease with a publicly available untargeted metabolomics dataset

机译:利用机器学习与淘汰赛过滤,通过公开的未确定代谢组合数据集提取克罗恩病中的显着代谢物

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摘要

Metabolomic data processing pipelines have been improving in recent years, allowing for greater feature extraction and identification. Lately, machine learning and robust statistical techniques to control false discoveries are being incorporated into metabolomic data analysis. In this paper, we introduce one such recently developed technique called aggregate knockoff filtering to untargeted metabolomic analysis. When applied to a publicly available dataset, aggregate knockoff filtering combined with typical p-value filtering improves the number of significantly changing metabolites by 25% when compared to conventional untargeted metabolomic data processing. By using this method, features that would normally not be extracted under standard processing would be brought to researchers’ attention for further analysis.
机译:代谢组数据处理管道近年来一直在改善,允许更大的特征提取和鉴定。 最近,控制虚假发现的机器学习和鲁棒统计技术被纳入代谢组数据分析。 在本文中,我们介绍了一个称为聚集淘汰滤波的最近开发的技术的一个,以实现未确定的代谢组分。 当应用于可公开的数据集时,与典型的P值滤波相结合的聚合淘汰过滤改善了与传统未标准的代谢组数据处理相比25%的显着改变代谢物的数量。 通过使用这种方法,将在标准处理下通常不会提取的功能来研究人员注意进一步分析。

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