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Pathway Analysis of Marker Genes for Leukemia Cancer using Enhanced Genetic Algorithm-Neural Network (enGANN)

机译:利用增强遗传算法 - 神经网络(engann)白血病癌症标志基因的途径分析

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The model of gene-gene interaction contributing to the biological insight of disease pathology have received significant attention from both medical and computing communities. Through the modeled interactome map, the biological significant of the mutated genes can be revealed and treatments targeting these genes can be taken to prevent further proliferation of the mutated genes. In this paper we propose a novel computational way to interrogate interaction between genes. We utilize centroid computation in the hybrid genetic algorithm and neural network to model interaction between leukemia-related genes. Results indicated the effectiveness of centroid value in detecting significant interactions of gene. Hub genes were also identified.
机译:对疾病病理生物洞察的基因 - 基因相互作用模型得到了医学和计算社区的重大关注。通过建模的互蛋白图,可以揭示突变基因的生物学意义,可以采取靶向这些基因的处理以防止突变基因的进一步增殖。在本文中,我们提出了一种新颖的计算方法来询问基因之间的相互作用。我们利用混合遗传算法和神经网络中的质心计算来模拟白血病相关基因之间的相互作用。结果表明质心值在检测基因的显着相互作用方面的有效性。还鉴定了轮毂基因。

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