Grover Mani P, Ballouz Sara, Mohanasundaram Kaavya A, George Richard A, Goscinski Andrzej, Crowley Tamsyn M, Sherman Craig D H, Wouters Merridee A
BMC Med Genomics. 2015;8 Suppl 2(Suppl 2):S1. doi: 10.1186/1755-8794-8-S2-S1. Epub 2015 May 29.
Coronary artery disease (CAD), one of the leading causes of death globally, is influenced by both environmental and genetic risk factors. Gene-centric genome-wide association studies (GWAS) involving cases and controls have been remarkably successful in identifying genetic loci contributing to CAD. Modern in silico platforms, such as candidate gene prediction tools, permit a systematic analysis of GWAS data to identify candidate genes for complex diseases like CAD. Subsequent integration of drug-target data from drug databases with the predicted candidate genes can potentially identify novel therapeutics suitable for repositioning towards treatment of CAD.
Previously, we were able to predict 264 candidate genes and 104 potential therapeutic targets for CAD using Gentrepid (http://www.gentrepid.org), a candidate gene prediction platform with two bioinformatic modules to reanalyze Wellcome Trust Case-Control Consortium GWAS data. In an expanded study, using five bioinformatic modules on the same data, Gentrepid predicted 647 candidate genes and successfully replicated 55% of the candidate genes identified by the more powerful CARDIoGRAMplusC4D consortium meta-analysis. Hence, Gentrepid was capable of enhancing lower quality genotype-phenotype data, using an independent knowledgebase of existing biological data. Here, we used our methodology to integrate drug data from three drug databases: the Therapeutic Target Database, PharmGKB and Drug Bank, with the 647 candidate gene predictions from Gentrepid. We utilized known CAD targets, the scientific literature, existing drug data and the CARDIoGRAMplusC4D meta-analysis study as benchmarks to validate Gentrepid predictions for CAD.
Our analysis identified a total of 184 predicted candidate genes as novel therapeutic targets for CAD, and 981 novel therapeutics feasible for repositioning in clinical trials towards treatment of CAD. The benchmarks based on known CAD targets and the scientific literature showed that our results were significant (p < 0.05).
We have demonstrated that available drugs may potentially be repositioned as novel therapeutics for the treatment of CAD. Drug repositioning can save valuable time and money spent on preclinical and phase I clinical studies.
冠状动脉疾病(CAD)是全球主要死因之一,受环境和遗传风险因素的影响。以基因为中心的全基因组关联研究(GWAS),涉及病例和对照,在识别导致CAD的基因座方面取得了显著成功。现代的计算机平台,如候选基因预测工具,允许对GWAS数据进行系统分析,以识别像CAD这样的复杂疾病的候选基因。随后将来自药物数据库的药物靶点数据与预测的候选基因整合,有可能识别出适合重新定位用于治疗CAD的新型疗法。
我们的分析共确定了184个预测的候选基因作为CAD新的治疗靶点,以及981种可在临床试验中重新定位用于治疗CAD的新型疗法。基于已知CAD靶点和科学文献的基准表明我们的结果具有显著性(p < 0.05)。
我们已经证明现有药物可能潜在地重新定位为治疗CAD的新型疗法。药物重新定位可以节省在临床前和I期临床研究上花费的宝贵时间和金钱。