Department of Biochemistry, University of Washington, Seattle, WA, USA.
Institute for Protein Design, University of Washington, Seattle, WA, USA.
Nat Commun. 2024 Sep 5;15(1):7761. doi: 10.1038/s41467-024-52061-7.
Structure-based virtual screening is a key tool in early drug discovery, with growing interest in the screening of multi-billion chemical compound libraries. However, the success of virtual screening crucially depends on the accuracy of the binding pose and binding affinity predicted by computational docking. Here we develop a highly accurate structure-based virtual screen method, RosettaVS, for predicting docking poses and binding affinities. Our approach outperforms other state-of-the-art methods on a wide range of benchmarks, partially due to our ability to model receptor flexibility. We incorporate this into a new open-source artificial intelligence accelerated virtual screening platform for drug discovery. Using this platform, we screen multi-billion compound libraries against two unrelated targets, a ubiquitin ligase target KLHDC2 and the human voltage-gated sodium channel Na1.7. For both targets, we discover hit compounds, including seven hits (14% hit rate) to KLHDC2 and four hits (44% hit rate) to Na1.7, all with single digit micromolar binding affinities. Screening in both cases is completed in less than seven days. Finally, a high resolution X-ray crystallographic structure validates the predicted docking pose for the KLHDC2 ligand complex, demonstrating the effectiveness of our method in lead discovery.
基于结构的虚拟筛选是药物早期发现的关键工具,对筛选数十亿化合物库的兴趣日益浓厚。然而,虚拟筛选的成功在很大程度上取决于计算对接预测的结合构象和结合亲和力的准确性。在这里,我们开发了一种高度准确的基于结构的虚拟筛选方法 RosettaVS,用于预测对接构象和结合亲和力。我们的方法在广泛的基准测试中优于其他最先进的方法,部分原因是我们能够模拟受体的灵活性。我们将其纳入了一个新的用于药物发现的开源人工智能加速虚拟筛选平台。使用该平台,我们针对两个不相关的靶标,泛素连接酶靶标 KLHDC2 和人电压门控钠离子通道 Na1.7,对数十亿化合物库进行了筛选。对于这两个靶标,我们都发现了命中化合物,其中 KLHDC2 有 7 个(14%的命中率),Na1.7 有 4 个(44%的命中率),结合亲和力均在个位数微摩尔范围内。两种情况下的筛选都在不到七天的时间内完成。最后,高分辨率 X 射线晶体学结构验证了 KLHDC2 配体复合物的预测对接构象,证明了我们的方法在发现先导化合物方面的有效性。