基因选择的理论分析。

Sach Mukherjee, Stephen J Roberts
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引用次数: 0

摘要

最近的大量研究都集中在从微阵列数据中选择差异表达基因(“基因选择”)的挑战性任务上。文献中提出了许多基因选择算法,但通常不清楚这些算法究竟如何应对小样本量或不同方差等条件。因此,在许多情况下,选择合适的算法是很困难的。在本文中,我们提出了一个基因选择的理论分析,其中成功选择相关基因的概率,使用一个给定的基因排序函数,明确地计算根据群体参数。所建立的理论适用于任何已知抽样分布的排序函数,或可以解析近似的排序函数。与经验方法相比,这种分析可以很容易地用于检查基因选择算法在各种条件下的行为,即使涉及的基因数量达到数万个。我们的方法的效用是通过比较三个著名的基因排序函数说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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A theoretical analysis of gene selection.

A great deal of recent research has focused on the challenging task of selecting differentially expressed genes from microarray data ('gene selection'). Numerous gene selection algorithms have been proposed in the literature, but it is often unclear exactly how these algorithms respond to conditions like small sample-sizes or differing variances. Choosing an appropriate algorithm can therefore be difficult in many cases. In this paper we propose a theoretical analysis of gene selection, in which the probability of successfully selecting relevant genes, using a given gene ranking function, is explicitly calculated in terms of population parameters. The theory developed is applicable to any ranking function which has a known sampling distribution, or one which can be approximated analytically. In contrast to empirical methods, the analysis can easily be used to examine the behaviour of gene selection algorithms under a wide variety of conditions, even when the numbers of genes involved runs into the tens of thousands. The utility of our approach is illustrated by comparing three well-known gene ranking functions.

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