Ban Fuqiang, Dalal Kush, Li Huifang, LeBlanc Eric, Rennie Paul S, Cherkasov Artem
Vancouver Prostate Centre, Department of Urologic Sciences, Faculty of Medicine, The University of British Columbia , 2660 Oak Street, Vancouver, British Columbia, Canada V6H 3Z6.
J Chem Inf Model. 2017 May 22;57(5):1018-1028. doi: 10.1021/acs.jcim.7b00137. Epub 2017 May 4.
Small-molecule drug design is a complex and iterative decision-making process relying on pre-existing knowledge and driven by experimental data. Low-molecular-weight chemicals represent an attractive therapeutic option, as they are readily accessible to organic synthesis and can easily be characterized.1 Their potency as well as pharmacokinetic and pharmacodynamic properties can be systematically and rationally investigated and ultimately optimized via expert science behind medicinal chemistry and methods of computer-aided drug design (CADD). In recent years, significant advances in molecular modeling techniques have afforded a variety of tools to effectively identify potential binding pockets on prospective targets, to map key interactions between ligands and their binding sites, to construct and assess energetics of the resulting complexes, to predict ADMET properties of candidate compounds, and to systematically analyze experimental and computational data to derive meaningful structure-activity relationships leading to the creation of a drug candidate. This Perspective describes a real case of a drug discovery campaign accomplished in a relatively short time with limited resources. The study integrated an arsenal of available molecular modeling techniques with an array of experimental tools to successfully develop a novel class of potent and selective androgen receptor inhibitors with a novel mode of action. It resulted in the largest academic licensing deal in Canadian history, totaling $142M. This project exemplifies the importance of team science, an integrative approach to drug discovery, and the use of best practices in CADD. We posit that the lessons learned and best practices for executing an effective CADD project can be applied, with similar success, to many drug discovery projects in both academia and industry.
小分子药物设计是一个复杂且迭代的决策过程,它依赖于已有的知识,并由实验数据驱动。低分子量化学物质是一种有吸引力的治疗选择,因为它们易于通过有机合成获得,并且易于表征。它们的效力以及药代动力学和药效学性质可以通过药物化学背后的专业科学和计算机辅助药物设计(CADD)方法进行系统而合理的研究,并最终得到优化。近年来,分子建模技术取得了重大进展,提供了各种工具,可有效地识别潜在靶标上的潜在结合口袋,绘制配体与其结合位点之间的关键相互作用,构建和评估所得复合物的能量学,预测候选化合物的ADMET性质,并系统地分析实验和计算数据,以得出有意义的构效关系,从而创造出候选药物。本观点描述了一个在相对较短的时间内利用有限资源完成的药物发现项目的实际案例。该研究将一系列可用的分子建模技术与一系列实验工具相结合,成功开发出了一类具有新型作用模式的强效和选择性雄激素受体抑制剂。这促成了加拿大历史上最大的学术许可交易,总额达1.42亿美元。该项目体现了团队科学、药物发现的综合方法以及CADD中最佳实践的重要性。我们认为,从这个有效执行CADD项目中学到的经验教训和最佳实践,可以同样成功地应用于学术界和工业界的许多药物发现项目。