首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >Disease Classification Based on the Activities of Interacting Molecular Modules with Condition-Responsive Correlation
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Disease Classification Based on the Activities of Interacting Molecular Modules with Condition-Responsive Correlation

机译:基于具有条件响应相关性的相互作用分子模块活性的疾病分类

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Genome-wide expression profiles of diseased samples have been exploited to predict disease states. Recently, network-based approaches utilizing molecular interaction networks integrated with gene expression profiles have been proposed to address challenges which arise from smaller number of samples compared to the large number of predictors, and genetic heterogeneity of samples in complex diseases such as cancer. However, previous network-based methods only focus on expression levels of proteins, nodes in the network though the identification of condition-responsive interactions, edges under the phenotype of interest must enlighten another aspect of pathogenic processes. Thus, we propose a novel network-based classification which focuses on both nodes with discriminative expression levels and edges with condition-responsive correlations across two phenotypes. The extracted modules with condition-responsive interactions not only provide candidate molecular models for disease, and their activities inferred from a subset of member genes serve as better predictors in classification compared to the conventional gene-centric method.
机译:已利用患病样品的全基因组表达谱来预测疾病状态。近来,已经提出了利用与基因表达谱相集成的分子相互作用网络的基于网络的方法来解决挑战,该挑战是由与大量预测因子相比样本数量较少以及在诸如癌症的复杂疾病中样本的遗传异质性引起的。但是,以前的基于网络的方法仅关注蛋白质的表达水平,网络中的节点,尽管条件响应性相互作用的识别,目标表型下的边缘必须启发病原过程的另一个方面。因此,我们提出了一种新颖的基于网络的分类,该分类关注于具有区分性表达水平的节点和具有跨两个表型的条件响应相关性的边缘。提取的具有条件响应相互作用的模块不仅提供了候选的疾病分子模型,而且与常规的以基因为中心的方法相比,从成员基因的一个子集推断出的其活性可以更好地预测分类。

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