虚拟筛选
化学信息学
对接(动物)
药物发现
小分子
码头
计算机科学
蛋白质-配体对接
蛋白质配体
大分子对接
计算生物学
化学
蛋白质数据库
分子动力学
机器学习
蛋白质结构
计算化学
生物
生物化学
医学
护理部
作者
Congzhou M. Sha,Jian Wang,Nikolay V. Dokholyan
标识
DOI:10.3389/fmolb.2022.867241
摘要
Virtual screening is a cost- and time-effective alternative to traditional high-throughput screening in the drug discovery process. Both virtual screening approaches, structure-based molecular docking and ligand-based cheminformatics, suffer from computational cost, low accuracy, and/or reliance on prior knowledge of a ligand that binds to a given target. Here, we propose a neural network framework, NeuralDock, which accelerates the process of high-quality computational docking by a factor of 106, and does not require prior knowledge of a ligand that binds to a given target. By approximating both protein-small molecule conformational sampling and energy-based scoring, NeuralDock accurately predicts the binding energy, and affinity of a protein-small molecule pair, based on protein pocket 3D structure and small molecule topology. We use NeuralDock and 25 GPUs to dock 937 million molecules from the ZINC database against superoxide dismutase-1 in 21 h, which we validate with physical docking using MedusaDock. Due to its speed and accuracy, NeuralDock may be useful in brute-force virtual screening of massive chemical libraries and training of generative drug models.
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