Analysis of gene expression data with pathway scores.

A Zien, R Küffner, R Zimmer, T Lengauer
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Abstract

We present a new approach for the evaluation of gene expression data. The basic idea is to generate biologically possible pathways and to score them with respect to gene expression measurements. We suggest sample scoring functions for different problem specifications. We assess the significance of the scores for the investigated pathways by comparison to a number of scores for random pathways. We show that simple scoring functions can assign statistically significant scores to biologically relevant pathways. This suggests that the combination of appropriate scoring functions with the systematic generation of pathways can be used in order to select the most interesting pathways based on gene expression measurements.

基因表达数据的通路评分分析。
我们提出了一种评估基因表达数据的新方法。基本的想法是产生生物学上可能的途径,并根据基因表达测量对它们进行评分。我们建议针对不同的问题规格使用样本评分函数。我们通过与随机路径的一些分数进行比较来评估所调查路径的分数的重要性。我们表明,简单的评分函数可以为生物学相关途径分配具有统计意义的分数。这表明,为了根据基因表达测量选择最有趣的途径,可以使用适当的评分函数和系统的途径生成相结合。
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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