论文标题
用于发现高度有效的GNRH1R拮抗剂来治疗子宫疾病的配体和结构双驱动的深度学习方法
A Ligand-and-structure Dual-driven Deep Learning Method for the Discovery of Highly Potent GnRH1R Antagonist to treat Uterine Diseases
论文作者
论文摘要
促性腺营养蛋白释放激素受体(GNRH1R)是治疗子宫疾病的有前途的治疗靶标。迄今为止,在临床研究中可以使用几个GNRH1R拮抗剂,而无需满足多个财产约束。为了填补这一空白,我们旨在开发一个基于学习的框架,以促进有效,有效地发现具有理想特性的新型口服小分子药物靶向GNRH1R。在目前的工作中,首先通过充分利用有关已知活性化合物的信息和靶蛋白结构的信息,首先提出了配体和结构组合模型,即LS-Molgen,该模型由其出色的性能与基于配体或基于结构的方法分别证明。然后,进行了A中的计算机筛选,包括活性预测,ADMET评估,分子对接和FEP计算,其中约30,000个生成的新型分子被缩小到8,以进行实验合成和验证。体外和体内实验表明,其中三个表现出有效的抑制活性(化合物5 IC50 = 0.856 nm,化合物6 IC50 = 0.901 nm,化合物7 IC50 = 2.54 nm = 2.54 nm)针对GNRH1R,化合物5在基本的PK中表现良好,例如中途生物,或者,诸如中年化的Belive the Belive the Belive the belive the belive the belive the belive the Biobio bioavbavbavbavbavbavb yio.或ppavbavbavb yio bio bio bioavbavbavbavb yio.或配体结构结合的分子生成模型和整个计算机辅助工作流程可能会扩展到从头开始设计或铅优化的类似任务。
Gonadotrophin-releasing hormone receptor (GnRH1R) is a promising therapeutic target for the treatment of uterine diseases. To date, several GnRH1R antagonists are available in clinical investigation without satisfying multiple property constraints. To fill this gap, we aim to develop a deep learning-based framework to facilitate the effective and efficient discovery of a new orally active small-molecule drug targeting GnRH1R with desirable properties. In the present work, a ligand-and-structure combined model, namely LS-MolGen, was firstly proposed for molecular generation by fully utilizing the information on the known active compounds and the structure of the target protein, which was demonstrated by its superior performance than ligand- or structure-based methods separately. Then, a in silico screening including activity prediction, ADMET evaluation, molecular docking and FEP calculation was conducted, where ~30,000 generated novel molecules were narrowed down to 8 for experimental synthesis and validation. In vitro and in vivo experiments showed that three of them exhibited potent inhibition activities (compound 5 IC50 = 0.856 nM, compound 6 IC50 = 0.901 nM, compound 7 IC50 = 2.54 nM) against GnRH1R, and compound 5 performed well in fundamental PK properties, such as half-life, oral bioavailability, and PPB, etc. We believed that the proposed ligand-and-structure combined molecular generative model and the whole computer-aided workflow can potentially be extended to similar tasks for de novo drug design or lead optimization.