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An information theoretic method to identify combinations of genomic alterations that promote glioblastoma

机译:一种识别促进胶质母细胞瘤的基因组改变组合的信息理论方法

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Tumors are the result of accumulated genomic alterations that cooperate synergistically to produce uncontrollable cell growth. Although identifying recurrent alterations among large collections of tumors provides a way to pinpoint genes that endow a selective advantage in oncogenesis and progression, it fails to address the genetic interactions behind this selection process. A non-random pattern of co-mutated genes is evidence for selective forces acting on tumor cells that harbor combinations of these genetic alterations. Although existing methods have successfully identified mutually exclusive gene sets, no current method can systematically discover more general genetic relationships. We develop Genomic Alteration Modules using Total Correlation (GAMToC), an information theoretic frameworkthat integrates copy number and mutation data to identify gene modules with any non-random pattern of joint alteration. Additionally, we present the Seed-GAMToC procedure, which uncovers the mutational context of any putative cancer gene. The software is publicly available. Applied to glioblastoma multiforme samples, GAMToC results show distinct subsets of co-occurring mutations, suggesting distinct mutational routes to cancer and providing new insight into mutations associated with proneural, proneural/ G-CIMP, and classical types of the disease. The results recapitulate known relationships such as mutual exclusive mutations, place these alterations in the context of other mutations, and find more complex relationships such as conditional mutual exclusivity.
机译:肿瘤是累积基因组改变的结果,该改变协同作用以产生无法控制的细胞生长。虽然鉴定大量肿瘤中的复发性改变提供了一种方法来定位赋予血管生成和进展中选择性优势的基因,但它未能解决这种选择过程背后的遗传相互作用。共突变基因的非随机模式是作用于涉及这些遗传改变的组合的肿瘤细胞的选择性力的证据。尽管现有方法已成功识别相互排斥的基因集,但没有目前的方法可以系统地发现更一般的遗传关系。我们使用总相关性(Gamtoc)开发基因组改变模块,信息理论框架集成了拷贝数和突变数据,以识别基因模块,以任何非随机的关节改变。此外,我们介绍了种子 - Gamtoc程序,该程序揭示了任何推定的癌症基因的突变语境。该软件公开可用。应用于胶质母细胞瘤多形样品,GAMTOC结果显示了共同发生的突变的不同子集,表明对癌症的不同突变路线,并为与散​​文,散文/ G-CIMP和典型疾病相关的突变提供了新的洞察力。结果概括了已知的关系,例如互斥突变,使这些改变放置在其他突变的上下文中,并找到更复杂的关系,例如条件相互排斥性。

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