Portraying the expression landscapes of cancer subtypes

L. Hopp, H. Wirth, M. Fasold, H. Binder
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引用次数: 34

Abstract

Self-organizing maps (SOM) portray molecular phenotypes with individual resolution. We present an analysis pipeline based on SOM machine learning which allows the comprehensive study of large scale clinical data. The potency of the method is demonstrated in selected applications studying the diversity of gene expression in Glioblastoma Multiforme (GBM) and prostate cancer progression. Our method characterizes relationships between the samples, disentangles the expression patterns into well separated groups of co-regulated genes, extracts their functional contexts using enrichment techniques, and enables the detection of contaminations and outliers in the samples. We found that the four GBM subtypes can be divided into two “localized” and two “intermediate” ones. The localized subtypes are characterized by the antagonistic activation of processes related to immune response and cell division, commonly observed also in other cancers. In contrast, each of the “intermediate” subtypes forms a heterogeneous continuum of expression states linking the “localized” subtypes. Both “intermediate” subtypes are characterized by distinct expression patterns related to translational activity and innate immunity as well as nervous tissue and cell function. We show that SOM portraits provide a comprehensive framework for the description of the diversity of expression landscapes using concepts of molecular function.
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描绘癌症亚型的表达图景
自组织图谱(SOM)以个体分辨率描绘分子表型。我们提出了一个基于SOM机器学习的分析管道,可以对大规模临床数据进行全面研究。该方法的效力在研究多形性胶质母细胞瘤(GBM)和前列腺癌进展中基因表达多样性的选定应用中得到了证明。我们的方法表征了样品之间的关系,将表达模式分解为分离良好的共调控基因组,使用富集技术提取其功能背景,并能够检测样品中的污染和异常值。我们发现4种GBM亚型可分为2种“局部”亚型和2种“中间”亚型。局部亚型的特点是与免疫反应和细胞分裂相关的过程的拮抗激活,在其他癌症中也经常观察到。相反,每个“中间”亚型形成了连接“局部”亚型的异质连续表达状态。这两种“中间”亚型的特点是与翻译活性、先天免疫以及神经组织和细胞功能相关的不同表达模式。我们表明,SOM肖像为使用分子功能概念描述表达景观的多样性提供了一个全面的框架。
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