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Protein Binding Pocket Optimization for Virtual High-Throughput Screening (vHTS) Drug Discovery

机译:蛋白质为虚拟高通量筛选的口袋优化(VHT)药物发现

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The virtual high-throughput screening (vHTS) approach has been widely used for large database screening to identify potential lead compounds for drug discovery. Due to its high computational demands, docking that allows receptor flexibility has been a challenging problem for virtual screening. Therefore, the selection of protein target conformations is crucial to produce useful vHTS results. Since only a single protein structure is used to screen large databases in most vHTS studies, the main challenge is to reduce false negative rates in selecting compounds for in vitro tests. False negatives are most likely to occur when using apo structures or homology models of protein targets due to the small volume of the binding pocket formed by incorrect side-chain conformations. Even holo protein structures can exhibit high false negative rates due to ligand-induced fit effects, since the shape of the binding pocket highly depends on its bound ligand. To reduce false negative rates and improve success rates for vHTS in drug discovery, we have developed a new Monte Carlo-based approach that optimizes the binding pocket of protein targets. This newly developed Monte Carlo pocket optimization (MCPO) approach was assessed on several datasets showing promising results. The binding pocket optimization approach could be a useful tool for vHTS-based drug discovery, especially in cases when only apo structures or homology models are available.
机译:虚拟高吞吐量筛选(VHT)方法已广泛用于大型数据库筛选,以识别药物发现的潜在铅化合物。由于其高计算需求,对接允许受体灵活性的对接是虚拟筛选的具有挑战性的问题。因此,蛋白质靶构象的选择对于产生有用的VHT结果至关重要。由于仅在大多数VHT的研究中仅使用单个蛋白质结构来筛选大型数据库,因此主要挑战是减少在选择体外测试的化合物方面的假负率。当使用通过不正确的侧链构象形成的粘合口的少量少量的蛋白质靶标,当使用APO结构或蛋白质目标的同源型模型时,最有可能发生假阴性。即使是Holo蛋白结构也可以由于配体诱导的拟合效应表现出高的假阴性速率,因为结合口袋的形状高度取决于其结合的配体。为了减少假负率,提高药物发现中VHT的成功率,我们开发了一种新的基于蒙特卡罗的方法,可优化蛋白质目标的结合口袋。在几个数据集上评估了新开发的蒙特卡罗穴位优化(MCPO)方法,显示了有希望的结果。绑定口袋优化方法可以是基于VHTS的药物发现的有用工具,特别是在仅可用APO结构或同源模型时的情况下。

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