Microarrays--identifying molecular portraits for prostate tumors with different Gleason patterns.

Alexandre Mendes, Rodney J Scott, Pablo Moscato
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引用次数: 22

Abstract

We present in this chapter the combined use of several recently introduced methodologies for the analysis of microarray datasets. These computational techniques are varied in type and very powerful when combined. We have selected a prostate cancer dataset which is available in the public domain to allow for further comparisons with existing methods. The task is to identify biomarkers that correlate with the clinical phenotype of interest, i.e., Gleason patterns 3, 4, and 5. A supervised method, based on the mathematical formalism of (alpha, beta)-k-feature sets (1), is used to select differentially expressed genes. After these "molecular signatures" are identified, we applied an unsupervised method (a memetic algorithm) to order the samples (2). The objective is to maximize a global measure of correlation in the two-dimensional display of gene expression profiles. With the resulting ordering and taxonomy we are able to identify samples that have been assigned a certain Gleason pattern, and have gene expression patterns different from most of the other samples in the group. We reiterate the approach to obtain molecular signatures that produce coherent patterns of gene expression in each of the three Gleason pattern groups, and we analyze the statistically significant patterns of gene expression that seem to be implicated in these different stages of disease.

微阵列-识别具有不同格里森模式的前列腺肿瘤的分子图谱。
在本章中,我们介绍了几种最近介绍的微阵列数据集分析方法的综合使用。这些计算技术的类型多种多样,结合起来非常强大。我们选择了一个公共领域的前列腺癌数据集,以便与现有方法进行进一步的比较。任务是确定与感兴趣的临床表型相关的生物标志物,即Gleason模式3、4和5。基于(alpha, beta)-k-特征集(1)的数学形式的监督方法用于选择差异表达的基因。在这些“分子特征”被识别后,我们应用了一种无监督的方法(模因算法)来对样本进行排序(2)。目标是在基因表达谱的二维显示中最大化相关性的全局测量。通过最终的排序和分类,我们能够识别出被指定为特定Gleason模式的样本,并且具有与该组中大多数其他样本不同的基因表达模式。我们重申了在三个Gleason模式组中获得产生连贯基因表达模式的分子特征的方法,并且我们分析了似乎与这些不同疾病阶段有关的基因表达的统计显著模式。
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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