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Identifying Gene Subnetworks Associated with Clinical Outcome in Ovarian Cancer Using Network Based Coalition Game

机译:使用基于网络的联合游戏鉴定与卵巢癌临床结果相关的基因子网络

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The problem of identifying interacting genes that jointly are associated with a phenotype is considered. When the number of features are extremely large compared to the number of samples, there may be several subsets of features that provide acceptable levels of predictability. This is particularly true in cancer genomics, where we are interested in finding functionally related gene sets likely to jointly drive cancer phenotypes. In this paper, a novel game theoretic solution is proposed by modeling genes as players of a Coalition Game. This method discovers and develops informative gene subnetworks by integrating gene expression profiling of cancer tissues with protein-protein interaction (PPI) networks. These subnetworks are gradually developed by selective addition of candidate genes that present maximal Shapely values in coalition with subnetworks of genes. We applied the proposed algorithm to an ovarian cancer dataset (N= 201), in order to identify optimal subnetworks that can predict cancer progression risk in response to platinum-based therapy. We show improved predictive power of the proposed method when compared to state-of-the-art feature selection methods, with the added advantage of identifying potentially functional gene subnetworks that may provide insights into the mechanisms underlying cancer progression.
机译:考虑了鉴定共同与表型相关的相互作用基因的问题。当与样本数量相比,特征数量非常大时,可能存在几个特征子集,可提供可接受的可预测性水平。这在癌症基因组学中尤其如此,我们有兴趣找到功能相关的基因,可能有可能共同驱动癌症表型。本文通过将基因作为联盟游戏的参与者建模,提出了一种新的游戏理论解。该方法通过将癌组织的基因表达分析与蛋白质 - 蛋白质相互作用(PPI)网络集成来发现和开发信息性基因子网。通过选择性添加候选基因逐渐开发这些子网,这些候选基因具有与基因子网的联盟中的最大形状值。我们将所提出的算法应用于卵巢癌数据集(n = 201),以识别最佳的子网,以响应基于铂族的疗法,可以预测癌症进展风险。与最先进的特征选择方法相比,我们显示了所提出的方法的预测力,鉴定可能为癌症进展的潜在机制提供有洞察力的潜在功能基因子网的额外优点。

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