Department of Biological Sciences, University of Texas at Dallas, Dallas, TX 75080, USA.
Department of Neuro-Oncology, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Sci Rep. 2017 Jun 16;7(1):3739. doi: 10.1038/s41598-017-04001-3.
The connection between genetic variation and drug response has long been explored to facilitate the optimization and personalization of cancer therapy. Crucial to the identification of drug response related genetic features is the ability to separate indirect correlations from direct correlations across abundant datasets with large number of variables. Here we analyzed proteomic and pharmacogenomic data in cancer tissues and cell lines using a global statistical model connecting protein pairs, genes and anti-cancer drugs. We estimated this model using direct coupling analysis (DCA), a powerful statistical inference method that has been successfully applied to protein sequence data to extract evolutionary signals that provide insights on protein structure, folding and interactions. We used Direct Information (DI) as a metric of connectivity between proteins as well as gene-drug pairs. We were able to infer important interactions observed in cancer-related pathways from proteomic data and predict potential connectivities in cancer networks. We also identified known and potential connections for anti-cancer drugs and gene mutations using DI in pharmacogenomic data. Our findings suggest that gene-drug connections predicted with direct couplings can be used as a reliable guide to cancer therapy and expand our understanding of the effects of gene alterations on drug efficacies.
长期以来,人们一直在探索遗传变异与药物反应之间的联系,以促进癌症治疗的优化和个性化。确定与药物反应相关的遗传特征的关键是能够在大量变量的丰富数据集中分离间接相关性和直接相关性。在这里,我们使用一种连接蛋白质对、基因和抗癌药物的全局统计模型,分析了癌症组织和细胞系中的蛋白质组学和药物基因组学数据。我们使用直接耦合分析 (DCA) 来估计该模型,这是一种强大的统计推断方法,已成功应用于蛋白质序列数据,以提取提供有关蛋白质结构、折叠和相互作用的见解的进化信号。我们使用直接信息 (DI) 作为蛋白质以及基因-药物对之间连接性的度量。我们能够从蛋白质组学数据中推断出癌症相关途径中观察到的重要相互作用,并预测癌症网络中的潜在连通性。我们还使用药物基因组学数据中的 DI 来识别抗癌药物和基因突变的已知和潜在连接。我们的研究结果表明,使用直接耦合预测的基因-药物连接可以作为癌症治疗的可靠指南,并扩展我们对基因改变对药物疗效影响的理解。