虚拟筛选
计算生物学
生物信息学
对接(动物)
药物发现
计算机科学
标杆管理
化学
组合化学
生物信息学
生物
生物化学
基因
医学
业务
护理部
营销
作者
Yuqi Zhang,Marton Vass,Da Shi,Esam Abualrous,Jenny Chambers,Nikita Chopra,Chris Higgs,Koushik Kasavajhala,Hubert Li,Prajwal P. Nandekar,Hideyuki Sato,Edward B. Miller,Matt Repasky,Steven V. Jerome
标识
DOI:10.26434/chemrxiv-2022-kcn0d-v2
摘要
The recently developed AlphaFold2 (AF2) algorithm predicts proteins’ 3D structures from amino acid sequences. The open AlphaFold Protein Structure Database covers the complete human proteome. It shows great potential to provide structural information to enable and enhance existing and new drug discovery projects. Using an industry-leading molecular docking method (Glide), we benchmarked the virtual screening performance of 28 common drug targets each with an AF2 structure and known holo and apo structures from the DUD-E dataset. The AF2 structures show comparable early enrichment of known active compounds (avg. EF 1%: 13.16) to apo structures (avg. EF 1%: 11.56), while falling behind early enrichment of the holo structures (avg. EF 1%: 24.81). We also demonstrated that with the IFD-MD induced-fit docking approach, we can refine the AF2 structures using a known binding ligand to improve the performance in structure-based virtual screening (avg. EF 1%: 19.25). Thus, with proper preparation and refinement, AF2 structures show considerable promise for in silico hit identification.
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