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A new method for identifying bivariate differential expression in high dimensional microarray data using quadratic discriminant analysis

机译:利用二次判别分析识别高维微阵列数据中双变量差异表达的新方法

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摘要

BackgroundOne of the drawbacks we face up when analyzing gene to phenotype associations in genomic data is the ugly performance of the designed classifier due to the small sample-high dimensional data structures (n ≪ p) at hand. This is known as the peaking phenomenon, a common situation in the analysis of gene expression data. Highly predictive bivariate gene interactions whose marginals are useless for discrimination are also affected by such phenomenon, so they are commonly discarded by state of the art sequential search algorithms. Such patterns are known as weak/marginal strong bivariate interactions. This paper addresses the problem of uncovering them in high dimensional settings.
机译:背景技术分析基因组数据中的基因与表型关联时,我们面临的缺点之一是设计的分类器的丑陋表现,原因在于手头的样本-高维数据结构较小(n≪ p)。这被称为峰化现象,这是基因表达数据分析中的常见情况。其边缘对鉴别无用的高度预测性的双变量基因相互作用也受到这种现象的影响,因此它们通常被现有技术的顺序搜索算法所丢弃。这种模式被称为弱/边际强二元相互作用。本文解决了在高尺寸环境中发现它们的问题。

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