Chencheng Tang, Dongfang Huang, Xudong Xing, Hua Yang
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引用次数: 0
摘要
在代谢组学研究中,筛选差异代谢物对发现生物标记物具有重要意义。然而,它很容易受到实验过程中引入的不必要变异的影响。以前的归一化方法通过消除系统误差提高了组间分类的准确性。然而,通过这些方法获得的差异代谢物的分类能力仍需进一步提高,而且差异代谢物重要性排序的重现性评估往往被忽视。EigenRF 算法是对之前的代谢组学归一化方法(即 EigenMS)的改进,旨在对代谢组学数据进行归一化。此外,该算法还引入了评分指标,包括局部一致性(LC)和整体差异(OD)得分,以便从双重角度评估差异代谢物重要性排序的可重复性。在对三个可公开获取的数据集进行验证后,EigenRF 方法显示出更强的差异代谢物分类能力和更高的重现性。总之,EigenRF 提高了代谢组学研究中差异代谢物的可靠性,有利于进一步探索复杂基质中生物改变的分子机制。EigenRF 算法是在 R 软件包 https://www.github.com/YangHuaLab/EigenRF 中实现的。
EigenRF: an improved metabolomics normalization method with scores for reproducibility evaluation on importance rankings of differential metabolites.
Screening differential metabolites is of great significance in biomarker discovery in metabolomics research. However, it is susceptible to unwanted variations introduced during experiments. Previous normalization methods have improved the accuracy of inter-group classification by eliminating systematic errors. Nonetheless, the classification ability of differential metabolites obtained through these methods still requires further enhancement, and the reproducibility evaluation on importance rankings of differential metabolites is often disregarded. The EigenRF algorithm was developed as an improvement over the previous metabolomics normalization method referred to as EigenMS, which aims to normalize metabolomics data. Furthermore, scoring metrics, including the local consistency (LC) and overall difference (OD) scores, were introduced to evaluate the reproducibility of importance rankings of differential metabolites from a dual perspective. After conducting validation on three publicly accessible datasets, the EigenRF method has demonstrated enhanced classification ability of differential metabolites as well as improved reproducibility. In summary, EigenRF enhances the reliability of differential metabolites in metabolomics research, benefiting the further exploration of molecular mechanisms underlying biological alterations in complex matrices. The EigenRF algorithm was implemented in an R package: https://www.github.com/YangHuaLab/EigenRF.