通过copula方法建模具有多基因型和表型的肿瘤基因通路网络

Le Bao, Zhou Zhu, Jingjing Ye
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引用次数: 3

摘要

确定疾病和其他生物过程中分子特征(如突变、基因表达变化)与总体表型之间的相互作用是基因组研究的重要挑战之一。流行的方法,如GSEA,仅限于双变量关联的假设检验。然而,一个特定的表型往往依赖于多个分子特征。因此,为了更精确和真实地表示蜂窝网络,值得共同考虑所有可能的相互作用。为了实现这一目标,本文建立了一种半参数联结模型来联合模拟基因型、途径和表型。描述了网络重构的两步过程。仿真研究表明,该方法对网络重构是有效和准确的。使用NCI60癌细胞系数据的应用确定了作为临床表型预测因子的几个分子特征子集。这种联结模型有望对生物医学研究产生广泛的影响,从癌症治疗到疾病预防。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling oncology gene pathways network with multiple genotypes and phenotypes via a copula method
Identification of interactions between molecular features (e.g. mutation, gene expression change) and gross phenotypes in diseases and other biological processes is one of the important challenges in genomic research. Popular approaches such as GSEA are limited to hypothesis tests of bivariate association. However, a specific phenotype is often dependent upon multiple molecular features. It is thus worth considering all possible interactions jointly for a more precise and realistic representation of the cellular network. In this article, a semiparametric copula model is developed to jointly model genotypes, pathways and phenotypes to accomplish this object. A two-step procedure for reconstruction of the network is described. Simulation studies indicate that the method is effective and accurate for the network reconstruction. Application using NCI60 cancer cell line data identifies several subsets of molecular features that jointly perform as the predictors of clinical phenotypes. The copula model is expected to have a broad impact on biomedical research, ranging from cancer treatment to disease prevention.
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