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Identifying Driver Genomic Alterations in Cancers by Searching Minimum-Weight Mutually Exclusive Sets

机译:通过搜索最小重量互斥集来识别癌症中的驱动程序基因组改变

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摘要

An important goal of cancer genomic research is to identify the driving pathways underlying disease mechanisms and the heterogeneity of cancers. It is well known that somatic genome alterations (SGAs) affecting the genes that encode the proteins within a common signaling pathway exhibit mutual exclusivity, in which these SGAs usually do not co-occur in a tumor. With some success, this characteristic has been utilized as an objective function to guide the search for driver mutations within a pathway. However, mutual exclusivity alone is not sufficient to indicate that genes affected by such SGAs are in common pathways. Here, we propose a novel, signal-oriented framework for identifying driver SGAs. First, we identify the perturbed cellular signals by mining the gene expression data. Next, we search for a set of SGA events that carries strong information with respect to such perturbed signals while exhibiting mutual exclusivity. Finally, we design and implement an efficient exact algorithm to solve an NP-hard problem encountered in our approach. We apply this framework to the ovarian and glioblastoma tumor data available at the TCGA database, and perform systematic evaluations. Our results indicate that the signal-oriented approach enhances the ability to find informative sets of driver SGAs that likely constitute signaling pathways.
机译:癌症基因组研究的一个重要目标是确定潜在的疾病机制和癌症异质性的驱动途径。众所周知,影响共同信号传导途径内编码蛋白质的基因的体细胞基因组改变(SGA)表现出互斥性,其中这些SGA通常不会共同存在于肿瘤中。通过一定的成功,该特性已被用作目标功能,以指导在途径内寻找驱动基因突变。但是,仅相互排斥并不足以表明受此类SGA影响的基因处于共同途径。在这里,我们提出了一种新颖的,面向信号的框架,用于识别驱动程序SGA。首先,我们通过挖掘基因表达数据来识别受干扰的细胞信号。接下来,我们搜索一组SGA事件,这些事件携带有关此类扰动信号的强大信息,同时表现出互斥性。最后,我们设计并实现了一种有效的精确算法,以解决我们的方法中遇到的NP难题。我们将此框架应用于TCGA数据库中可获得的卵巢和胶质母细胞瘤肿瘤数据,并进行系统的评估。我们的结果表明,面向信号的方法增强了查找可能构成信号通路的驱动程序SGA信息集的能力。

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