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Combining Multiple Microarray Studies Using Bootstrap Meta-Analysis

机译:使用Bootstrap Meta分析结合多个微阵列研究

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Microarray technology has enabled us to simultaneously measure the expression of thousands of genes. Using this high-throughput data collection, we can examine subtle genetic changes between biological samples and build predictive models for clinical applications. Although microarrays have dramatically increased the rate of data collection, sample size is still a major issue in feature selection. Previous methods show that microarray data combination is successful in improving selection when using z-scores and fold change. We propose a wrapper based gene selection technique that combines bootstrap estimated classification errors for individual genes across multiple datasets. The bootstrap is an unbiased estimator of classification error and has been shown to be effective for small sample data. Coupled with data combination across multiple data sets, we show that this meta-analytic approach improves gene selection.
机译:微阵列技术使我们能够同时测量成千上万基因的表达。使用这种高吞吐量数据收集,我们可以检查生物样品之间的微妙遗传变化,并为临床应用构建预测模型。虽然微阵列大大增加了数据收集率,但是样本大小仍然是特征选择中的主要问题。以前的方法表明,在使用Z分数和折叠变化时,微阵列数据组合成功地改善了选择。我们提出了一种基于包装的基因选择技术,该技术将对多个数据集的单个基因组合了估计的分类误差。 Bootstrap是一个无偏的分类误差估计器,并且已被显示为小样本数据有效。耦合跨多个数据集的数据组合,我们表明该元分析方法改善了基因选择。

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