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Block-diagonal discriminant analysis and its bias-corrected rules

机译:块对角判别分析及其偏差校正规则

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摘要

High-throughput expression profiling allows simultaneous measure of tens of thousands of genes at once. These data have motivated the development of reliable biomarkers for disease subtypes identification and diagnosis. Many methods have been developed in the literature for analyzing these data, such as diagonal discriminant analysis, support vector machines, and k-nearest neighbor methods. The diagonal discriminant methods have been shown to perform well for high-dimensional data with small sample sizes. Despite its popularity, the independence assumption is unlikely to be true in practice. Recently, a gene module based linear discriminant analysis strategy has been proposed by utilizing the correlation among genes in discriminant analysis. However, the approach can be underpowered when the samples of the two classes are unbalanced. In this paper, we propose to correct the biases in the discriminant scores of block-diagonal discriminant analysis. In simulation studies, our proposed method outperforms other approaches in various settings. We also illustrate our proposed discriminant analysis method for analyzing microarray data studies.
机译:高通量的表达谱分析可一次同时测量数万个基因。这些数据激发了用于疾病亚型鉴定和诊断的可靠生物标志物的发展。文献中已经开发了许多方法来分析这些数据,例如对角判别分析,支持向量机和k最近邻方法。对角判别方法已被证明对于样本量小的高维数据表现良好。尽管它很受欢迎,但在实践中独立性假设不太可能是正确的。最近,已经提出了一种基于基因模块的线性判别分析策略,其利用了判别分析中基因之间的相关性。但是,当两个类别的样本不平衡时,该方法可能会功能不足。在本文中,我们建议纠正块对角线判别分析的判别分数中的偏差。在仿真研究中,我们提出的方法在各种环境下均优于其他方法。我们还说明了我们提出的判别分析方法,用于分析微阵列数据研究。

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