A genetic algorithm approach to active subnetwork search applied to GWAS data

Ozan Ozisik, Burcu Bakir-Gungor, B. Diri, O. U. Sezerman
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引用次数: 1

Abstract

An active subnetwork is a group of interconnected genes that show condition-specific differences. It has been observed that the gene products that have alterations associated with a disease of interest, incline to be part of the subnetworks among the overall interaction network. Hence, the integration of the interaction data with the genotypic data underlying disease states facilitates the separation of the subnetworks perturbed in a given disorder from the rest of the network. In the literature, active subnetwork search is used to discover disease related regulatory pathways, dysregulated genes, functional modules, cancer markers, to classify diseases, and to predict response to treatment. In this study, a genetic algorithm based method is developed for active subnetwork search and applied to WTCCC Rheumatoid Arthritis genome-wide association study dataset. The relevance of the identified subnetworks against the disease is compared in terms of biological pathways. Our results show that the proposed method works well in detecting the significant RA associated subnetworks, and it is also applicable to recognize subnetworks of other complex diseases.
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遗传算法在主动子网搜索中的应用
活跃的子网络是一组相互连接的基因,它们表现出特定条件的差异。已经观察到,与感兴趣的疾病相关的基因产物具有改变,倾向于成为整个相互作用网络中的子网络的一部分。因此,将相互作用数据与疾病状态下的基因型数据整合起来,有助于将在给定疾病中受干扰的子网与网络的其余部分分离开来。在文献中,主动子网络搜索用于发现疾病相关的调控通路、失调基因、功能模块、癌症标志物,对疾病进行分类,预测对治疗的反应。本研究提出了一种基于遗传算法的主动子网络搜索方法,并将其应用于WTCCC类风湿性关节炎全基因组关联研究数据集。从生物学途径的角度比较了已确定的子网络与疾病的相关性。我们的研究结果表明,该方法可以很好地检测RA相关的重要子网,并且也适用于识别其他复杂疾病的子网。
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