基于群体的元启发式活动模块识别

Leandro Corrêa, Denis Pallez, Laurent Tichit, O. Soriani, C. Pasquier
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引用次数: 2

摘要

从转录组学实验中鉴定疾病特异性基因集具有重要的生物学应用,从发现不同表型之间改变的途径到选择疾病相关的生物标志物。仅使用基因表达数据的统计方法是基于一个过于简单的假设,即表达变化最大的基因在研究过程中是最重要的。然而,表型很少是单个基因活性的直接结果,而是反映了几个基因在执行某些分子过程中的相互作用。根据我们对分子相互作用的了解,已经提出了许多方法来分析基因活性。在本文中,我们提出了一种基于新的交叉和变异算子的基于种群的元启发式算法。我们的方法在其他研究中使用的独立模拟实验中达到了最先进的性能。应用于肝细胞癌患者的公共转录组数据集,我们的方法能够识别具有有意义的生物学相关性的重要基因模块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Population-based meta-heuristic for active modules identification
The identification of condition specific gene sets from transcriptomic experiments has important biological applications, ranging from the discovery of altered pathways between different phenotypes to the selection of disease-related biomarkers. Statistical approaches using only gene expression data are based on an overly simplistic assumption that the genes with the most altered expressions are the most important in the process under study. However, a phenotype is rarely a direct consequence of the activity of a single gene, but rather reflects the interplay of several genes to perform certain molecular processes. Many methods have been proposed to analyze gene activity in the light of our knowledge about their molecular interactions. We propose, in this article, a population-based meta-heuristics based on new crossover and mutation operators. Our method achieves state of the art performance in an independent simulation experiment used in other studies. Applied to a public transcriptomic dataset of patients afflicted with Hepatocellular carcinoma, our method was able to identify significant modules of genes with meaningful biological relevance.
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