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Gene Expression Profiles for Predicting Metastasis in Breast Cancer: A Cross-Study Comparison of Classification Methods

机译:基因表达谱预测乳腺癌的转移:分类方法的交叉研究比较。

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摘要

Machine learning has increasingly been used with microarray gene expression data and for the development of classifiers using a variety of methods. However, method comparisons in cross-study datasets are very scarce. This study compares the performance of seven classification methods and the effect of voting for predicting metastasis outcome in breast cancer patients, in three situations: within the same dataset or across datasets on similar or dissimilar microarray platforms. Combining classification results from seven classifiers into one voting decision performed significantly better during internal validation as well as external validation in similar microarray platforms than the underlying classification methods. When validating between different microarray platforms, random forest, another voting-based method, proved to be the best performing method. We conclude that voting based classifiers provided an advantage with respect to classifying metastasis outcome in breast cancer patients.
机译:机器学习已越来越多地用于微阵列基因表达数据,并用于使用多种方法开发分类器。但是,跨研究数据集中的方法比较非常少。这项研究比较了三种情况下的七种分类方法的性能以及投票对乳腺癌患者转移结果的预测效果:在相同或不同或相似的微阵列平台上的同一数据集内或跨数据集。在类似芯片阵列平台的内部验证和外部验证期间,将七个分类器的分类结果组合为一个投票决策的效果要比基础分类方法好得多。在不同的微阵列平台之间进行验证时,随机森林是另一种基于投票的方法,被证明是效果最好的方法。我们得出结论,基于投票的分类器在对乳腺癌患者的转移结果进行分类方面提供了优势。

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