首页> 美国卫生研究院文献>Analytical Cellular Pathology : the Journal of the European Society for Analytical Cellular Pathology >Cluster Analysis of Comparative Genomic Hybridization (CGH) Data Using Self-Organizing Maps: Application to Prostate Carcinomas
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Cluster Analysis of Comparative Genomic Hybridization (CGH) Data Using Self-Organizing Maps: Application to Prostate Carcinomas

机译:使用自组织图的比较基因组杂交(CGH)数据的聚类分析:在前列腺癌中的应用

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摘要

Comparative genomic hybridization (CGH) is a modern genetic method which enables a genome‐wide survey of chromosomal imbalances. For each chromosome region, one obtains the information whether there is a loss or gain of genetic material, or whether there is no change at that region. Usually it is not possible to evaluate all 46 chromosomes of a metaphase, therefore several (up to 20 or more) metaphases are analyzed per individual, and expressed as average. Mostly one does not study one individual alone but groups of 20–30 individuals. Therefore, large amounts of data quickly accumulate which must be put into a logical order. In this paper we present the application of a self‐organizing map (Genecluster) as a tool for cluster analysis of data from pT2N0 prostate cancer cases studied by CGH. Self‐organizing maps are artificial neural networks with the capability to form clusters on the basis of an unsupervised learning rule, i.e., in our examples it gets the CGH data as only information (no clinical data). We studied a group of 40 recent cases without follow‐up, an older group of 20 cases with follow‐up, and the data set obtained by pooling both groups. In all groups good clusterings were found in the sense that clinically similar cases were placed into the same clusters on the basis of the genetic information only. The data indicate that losses on chromosome arms 6q, 8p and 13q are all frequent in pT2N0 prostatic cancer, but the loss on 8p has probably the largest prognostic importance.
机译:比较基因组杂交(CGH)是一种现代遗传方法,可以对染色体不平衡进行全基因组调查。对于每个染色体区域,人们都会获得信息,即遗传物质的损失或增加,或者该区域是否没有变化。通常无法评估一个中期的所有46条染色体,因此每个人都要分析几个(最多20个或更多)中期,并以平均值表示。大多数情况下,一个人学习的不是一个人,而是20-30个人的一组。因此,大量的数据迅速累积,必须将它们置于逻辑顺序中。在本文中,我们介绍了自组织图(Genecluster)作为对CGH研究的pT2N0前列腺癌病例数据进行聚类分析的工具的应用。自组织图是人工神经网络,能够在无监督的学习规则的基础上形成集群,即在我们的示例中,它仅将CGH数据作为信息(没有临床数据)获取。我们研究了一组40例近期未进行随访的病例,一组较老的20例进行了随访的病例,以及通过合并两组而获得的数据集。在所有组中都发现了良好的聚类,就其意义而言,仅基于遗传信息将临床上相似的病例置于相同的聚类中。数据表明,在pT2N0前列腺癌中,染色体臂6q,8p和13q的丢失均很常见,但是8p的丢失可能具有最大的预后重要性。

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