School of Computing Science, Simon Fraser University, Burnaby, BC V5A 1S6, Canada.
Vancouver Prostate Centre, University of British Columbia, 2660 Oak St, Vancouver, BC V6H 3Z6, Canada.
Int J Mol Sci. 2020 Aug 14;21(16):5847. doi: 10.3390/ijms21165847.
Gain-of-function mutations in human androgen receptor (AR) are among the major causes of drug resistance in prostate cancer (PCa). Identifying mutations that cause resistant phenotype is of critical importance for guiding treatment protocols, as well as for designing drugs that do not elicit adverse responses. However, experimental characterization of these mutations is time consuming and costly; thus, predictive models are needed to anticipate resistant mutations and to guide the drug discovery process. In this work, we leverage experimental data collected on 68 AR mutants, either observed in the clinic or described in the literature, to train a deep neural network (DNN) that predicts the response of these mutants to currently used and experimental anti-androgens and testosterone. We demonstrate that the use of this DNN, with general 2D descriptors, provides a more accurate prediction of the biological outcome (inhibition, activation, no-response, mixed-response) in AR mutant-drug pairs compared to other machine learning approaches. Finally, the developed approach was used to make predictions of AR mutant response to the latest AR inhibitor darolutamide, which were then validated by in-vitro experiments.
在前列腺癌 (PCa) 中,人类雄激素受体 (AR) 的功能获得性突变是导致耐药性的主要原因之一。鉴定导致耐药表型的突变对于指导治疗方案以及设计不会引起不良反应的药物至关重要。然而,这些突变的实验表征既耗时又昂贵;因此,需要预测模型来预测耐药突变并指导药物发现过程。在这项工作中,我们利用在临床观察到或文献中描述的 68 种 AR 突变体上收集的实验数据,训练一个深度神经网络 (DNN),该网络可预测这些突变体对目前使用的和实验性抗雄激素和睾酮的反应。我们证明,与其他机器学习方法相比,使用具有通用 2D 描述符的这种 DNN 可以更准确地预测 AR 突变体-药物对的生物学结果(抑制、激活、无反应、混合反应)。最后,该方法用于预测 AR 突变体对最新的 AR 抑制剂达罗他胺的反应,然后通过体外实验进行验证。