Venkova Larisa, Aliper Alexander, Suntsova Maria, Kholodenko Roman, Shepelin Denis, Borisov Nicolas, Malakhova Galina, Vasilov Raif, Roumiantsev Sergey, Zhavoronkov Alex, Buzdin Anton
Drug Research and Design Department, Pathway Pharmaceuticals, Wan Chai, Hong Kong, Hong Kong SAR.
Department of Personalized Medicine, First Oncology Research and Advisory Center, Moscow, Russia.
Oncotarget. 2015 Sep 29;6(29):27227-38. doi: 10.18632/oncotarget.4507.
Effective choice of anticancer drugs is important problem of modern medicine. We developed a method termed OncoFinder for the analysis of new type of biomarkers reflecting activation of intracellular signaling and metabolic molecular pathways. These biomarkers may be linked with the sensitivity to anticancer drugs. In this study, we compared the experimental data obtained in our laboratory and in the Genomics of Drug Sensitivity in Cancer (GDS) project for testing response to anticancer drugs and transcriptomes of various human cell lines. The microarray-based profiling of transcriptomes was performed for the cell lines before the addition of drugs to the medium, and experimental growth inhibition curves were built for each drug, featuring characteristic IC50 values. We assayed here four target drugs - Pazopanib, Sorafenib, Sunitinib and Temsirolimus, and 238 different cell lines, of which 11 were profiled in our laboratory and 227 - in GDS project. Using the OncoFinder-processed transcriptomic data on ~600 molecular pathways, we identified pathways showing significant correlation between pathway activation strength (PAS) and IC50 values for these drugs. Correlations reflect relationships between response to drug and pathway activation features. We intersected the results and found molecular pathways significantly correlated in both our assay and GDS project. For most of these pathways, we generated molecular models of their interaction with known molecular target(s) of the respective drugs. For the first time, our study uncovered mechanisms underlying cancer cell response to drugs at the high-throughput molecular interactomic level.
有效选择抗癌药物是现代医学的重要问题。我们开发了一种名为OncoFinder的方法,用于分析反映细胞内信号传导和代谢分子途径激活的新型生物标志物。这些生物标志物可能与对抗癌药物的敏感性有关。在本研究中,我们比较了在我们实验室以及癌症药物敏感性基因组学(GDS)项目中获得的实验数据,以测试各种人类细胞系对抗癌药物的反应和转录组。在向培养基中添加药物之前,对细胞系进行基于微阵列的转录组分析,并为每种药物绘制实验生长抑制曲线,其特征为具有IC50值。我们在此检测了四种靶向药物——帕唑帕尼、索拉非尼、舒尼替尼和替西罗莫司,以及238种不同的细胞系,其中11种在我们实验室进行了分析,227种在GDS项目中进行了分析。利用OncoFinder处理的约600条分子途径的转录组数据,我们确定了途径激活强度(PAS)与这些药物的IC50值之间显示出显著相关性的途径。相关性反映了药物反应与途径激活特征之间的关系。我们交叉分析了结果,发现了在我们的检测和GDS项目中均显著相关的分子途径。对于这些途径中的大多数,我们生成了它们与各自药物已知分子靶点相互作用的分子模型。我们的研究首次在高通量分子相互作用组水平上揭示了癌细胞对药物反应的潜在机制。