Shin Woong-Hee, Christoffer Charles W, Wang Jibo, Kihara Daisuke
Department of Biological Science, Purdue University , 249 South Martin Jischke Street, West Lafayette, Indiana 47907, United States.
Department of Computer Science, Purdue University , 305 North University Street, West Lafayette, Indiana 47907, United States.
J Chem Inf Model. 2016 Sep 26;56(9):1676-91. doi: 10.1021/acs.jcim.6b00163. Epub 2016 Aug 19.
Virtual screening has become an indispensable procedure in drug discovery. Virtual screening methods can be classified into two categories: ligand-based and structure-based. While the former have advantages, including being quick to compute, in general they are relatively weak at discovering novel active compounds because they use known actives as references. On the other hand, structure-based methods have higher potential to find novel compounds because they directly predict the binding affinity of a ligand in a target binding pocket, albeit with substantially lower speed than ligand-based methods. Here we report a novel structure-based virtual screening method, PL-PatchSurfer2. In PL-PatchSurfer2, protein and ligand surfaces are represented by a set of overlapping local patches, each of which is represented by three-dimensional Zernike descriptors (3DZDs). By means of 3DZDs, the shapes and physicochemical complementarities of local surface regions of a pocket surface and a ligand molecule can be concisely and effectively computed. Compared with the previous version of the program, the performance of PL-PatchSurfer2 is substantially improved by the addition of two more features, atom-based hydrophobicity and hydrogen-bond acceptors and donors. Benchmark studies showed that PL-PatchSurfer2 performed better than or comparable to popular existing methods. Particularly, PL-PatchSurfer2 significantly outperformed existing methods when apo-form or template-based protein models were used for queries. The computational time of PL-PatchSurfer2 is about 20 times shorter than those of conventional structure-based methods. The PL-PatchSurfer2 program is available at http://www.kiharalab.org/plps2/ .
虚拟筛选已成为药物研发中不可或缺的程序。虚拟筛选方法可分为两类:基于配体的方法和基于结构的方法。虽然前者具有计算速度快等优点,但总体而言,它们在发现新型活性化合物方面相对较弱,因为它们以已知活性物质作为参考。另一方面,基于结构的方法发现新型化合物的潜力更大,因为它们直接预测配体在目标结合口袋中的结合亲和力,尽管其速度比基于配体的方法要低得多。在此,我们报告一种新型的基于结构的虚拟筛选方法——PL-PatchSurfer2。在PL-PatchSurfer2中,蛋白质和配体表面由一组重叠的局部补丁表示,每个局部补丁由三维泽尼克描述符(3DZDs)表示。借助3DZDs,可以简洁而有效地计算口袋表面和配体分子局部表面区域的形状和物理化学互补性。与该程序的先前版本相比,PL-PatchSurfer2通过增加基于原子的疏水性以及氢键受体和供体这两个特征,性能得到了显著提升。基准研究表明,PL-PatchSurfer2的表现优于或可与现有的流行方法相媲美。特别是,当使用无配体形式或基于模板的蛋白质模型进行查询时,PL-PatchSurfer2明显优于现有方法。PL-PatchSurfer2的计算时间比传统的基于结构的方法短约20倍。PL-PatchSurfer2程序可在http://www.kiharalab.org/plps2/获取。