Molecular Biotechnology and Health Sciences Department, University of Torino, Via Quarello, 15, 10135 Torino, Italy.
Molecules. 2023 Jan 26;28(3):1206. doi: 10.3390/molecules28031206.
Proteolysis-Targeting Chimeras (PROTACs) have recently emerged as a promising technology in the drug discovery landscape. Large interest in the degradation of the androgen receptor (AR) as a new anti-prostatic cancer strategy has resulted in several papers focusing on PROTACs against AR. This study explores the potential of a few in silico tools to extract drug design information from AR degradation data in the format often reported in the literature. After setting up a dataset of 92 PROTACs with consistent AR degradation values, we employed the Bemis-Murcko method for their classification. The resulting clusters were not informative in terms of structure-degradation relationship. Subsequently, we performed Degradation Cliff analysis and identified some key aspects conferring a positive contribution to activity, as well as some methodological limits when applying this approach to PROTACs. Linker structure degradation relationships were also investigated. Then, we built and characterized ternary complexes to validate previous results. Finally, we implemented machine learning classification models and showed that AR degradation for VHL-based but not CRBN-based PROTACs can be predicted from simple permeability-related 2D molecular descriptors.
蛋白水解靶向嵌合体(PROTACs)最近作为一种有前途的药物发现技术而出现。人们对雄激素受体(AR)的降解作为一种新的抗前列腺癌策略产生了浓厚的兴趣,这导致了一些专注于针对 AR 的 PROTACs 的论文。本研究探讨了一些计算工具从文献中经常报道的 AR 降解数据中提取药物设计信息的潜力。在建立了一个包含 92 个具有一致 AR 降解值的 PROTAC 数据集后,我们采用了 Bemis-Murcko 方法对其进行分类。结果表明,根据结构降解关系对聚类没有帮助。随后,我们进行了 Degradation Cliff 分析,并确定了一些对活性有积极贡献的关键方面,以及在将这种方法应用于 PROTACs 时的一些方法学限制。我们还研究了连接体结构降解关系。然后,我们构建并表征了三元复合物,以验证之前的结果。最后,我们实现了机器学习分类模型,并表明可以从简单的与渗透性相关的二维分子描述符预测基于 VHL 的而非基于 CRBN 的 PROTACs 的 AR 降解。