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Automated clustering of probe molecules from solvent mapping of protein surfaces: New algorithms applied to hot-spot mapping and structure-based drug design

机译:通过蛋白质表面的溶剂作图自动对探针分子进行聚类:将新算法应用于热点作图和基于结构的药物设计

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摘要

Use of solvent-mapping, based on multiple-copy minimization (MCM) techniques, is common in structure-based drug discovery. The minima of small-molecule probes define locations for complementary interactions within a binding pocket. Here, we present improved methods for MCM. In particular, a Jarvis-Patrick method is outlined for grouping the final locations of minimized probes into physical clusters. This algorithm has been tested through a study of protein-protein interfaces, showing the process to be robust, deterministic, and fast in the mapping of protein “hot spots”. Improvements in the initial placement of probe molecules are also described. A final application to HIV-1 protease shows how our automated technique can be used to partition data too complicated to analyze by hand. These new automated methods may be easily and quickly extended to other protein systems, and our clustering methodology may be readily incorporated into other clustering packages.
机译:基于多拷贝最小化(MCM)技术的溶剂映射在基于结构的药物发现中很常见。小分子探针的最小值定义了结合袋内互补相互作用的位置。在这里,我们提出了MCM的改进方法。特别是概述了Jarvis-Patrick方法,用于将最小化探针的最终位置分组为物理簇。该算法已通过对蛋白质-蛋白质界面的研究进行了测试,显示出该过程对于蛋白质“热点”的映射是可靠,确定性和快速的。还描述了探针分子初始放置的改进。对HIV-1蛋白酶的最终应用显示了如何使用我们的自动化技术对过于复杂而无法手工分析的数据进行分区。这些新的自动化方法可以轻松快速地扩展到其他蛋白质系统,并且我们的聚类方法可以很容易地并入其他聚类程序包中。

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