通过数据预处理增强对不平衡类的学习:数据驱动在代谢组学数据挖掘中的应用

Ahmed Banimustafa
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引用次数: 8

摘要

本文介绍了数据挖掘在代谢组学中的应用。它旨在建立一个增强的机器学习分类器,可用于诊断恶病质综合征并识别其相关的生物标志物。为了实现这一目标,使用由1H-NMR代谢物谱组成的公共数据集进行数据驱动分析。这个数据集存在不平衡类的问题,这是已知的会降低分类器性能的问题。这也影响了它的有效性和普遍性。本研究使用PLS-DA、MLP、SVM、C4.5和ID3五种机器学习算法构建分类模型。该模型是在进行大量密集的数据预处理过程后建立的,以解决类不平衡的问题,并提高构建的分类器的性能。这些程序包括应用数据转换、规范化、标准化、重新抽样和使用一些变量重要性评分器的数据缩减程序。通过建立一个MLP模型,该模型使用五倍交叉验证进行训练和测试,使用SMOTE方法重新采样数据集,然后使用SVM变量重要性评分器减少数据集,从而获得最佳性能。该模型成功地以极高的准确性对样本进行分类,并识别潜在的疾病生物标志物。结果证实了代谢组学数据挖掘诊断恶病质的有效性。它还强调了数据预处理过程(如采样和数据缩减)对于改善数据挖掘结果的重要性,特别是当数据遭受类不平衡问题时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Learning from Imbalanced Classes via Data Preprocessing: A Data-Driven Application in Metabolomics Data Mining
This paper presents a data mining application in metabolomics. It aims at building an enhanced machine learning classifier that can be used for diagnosing cachexia syndrome and identifying its involved biomarkers. To achieve this goal, a data-driven analysis is carried out using a public dataset consisting of 1H-NMR metabolite profile. This dataset suffers from the problem of imbalanced classes which is known to deteriorate the performance of classifiers. It also influences its validity and generalizablity. The classification models in this study were built using five machine learning algorithms known as PLS-DA, MLP, SVM, C4.5 and ID3. This model is built after carrying out a number of intensive data preprocessing procedures to tackle the problem of imbalanced classes and improve the performance of the constructed classifiers.These procedures involves applying data transformation, normalization, standardization, re-sampling and data reduction procedures using a number of variables importance scorers. The best performance was achieved by building an MLP model that was trained and tested using five-fold cross-validation using datasets that were re-sampled using SMOTE method and then reduced using SVM variable importance scorer. This model was successful in classifying samples with excellent accuracy and also in identifying the potential disease biomarkers. The results confirm the validity of metabolomics data mining for diagnosis of cachexia. It also emphasizes the importance of data preprocessing procedures such as sampling and data reduction for improving data mining results, particularly when data suffers from the problem of imbalanced classes.
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