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Impact of missing data imputation methods on gene expression clustering and classification

机译:缺失数据插补方法对基因表达聚类和分类的影响

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摘要

BackgroundSeveral missing value imputation methods for gene expression data have been proposed in the literature. In the past few years, researchers have been putting a great deal of effort into presenting systematic evaluations of the different imputation algorithms. Initially, most algorithms were assessed with an emphasis on the accuracy of the imputation, using metrics such as the root mean squared error. However, it has become clear that the success of the estimation of the expression value should be evaluated in more practical terms as well. One can consider, for example, the ability of the method to preserve the significant genes in the dataset, or its discriminative/predictive power for classification/clustering purposes.
机译:背景技术文献中已经提出了几种用于基因表达数据的缺失值插补方法。在过去的几年中,研究人员付出了很大的努力来提出对不同插补算法的系统评估。最初,大多数算法都是使用诸如均方根误差之类的指标来评估推算的准确性。然而,已经清楚的是,也应该以更实际的方式来评估表达值的估计的成功。例如,可以考虑该方法将重要基因保存在数据集中的能力,或出于分类/聚类目的的区分/预测能力。

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