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A feature selection method for classification within functional genomics experiments based on the proportional overlapping score

机译:基于比例重叠分数的功能基因组学实验中的分类特征选择方法

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摘要

BackgroundMicroarray technology, as well as other functional genomics experiments, allow simultaneous measurements of thousands of genes within each sample. Both the prediction accuracy and interpretability of a classifier could be enhanced by performing the classification based only on selected discriminative genes. We propose a statistical method for selecting genes based on overlapping analysis of expression data across classes. This method results in a novel measure, called proportional overlapping score (POS), of a feature’s relevance to a classification task.
机译:背景技术微阵列技术以及其他功能基因组学实验允许同时测量每个样品中的数千个基因。通过仅基于选定的判别基因进行分类,可以提高分类器的预测准确性和可解释性。我们提出了一种统计方法,用于基于跨类的表达数据的重叠分析来选择基因。这种方法可得出一种新颖的量度,称为特征重叠分数(POS),用于衡量要素与分类任务的相关性。

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