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比较神经网络评分函数和最新技术:在常见文库筛选中的应用。

Comparing neural-network scoring functions and the state of the art: applications to common library screening.

机构信息

Department of Chemistry and Biochemistry, University of California San Diego, La Jolla, California 92093, USA.

出版信息

J Chem Inf Model. 2013 Jul 22;53(7):1726-35. doi: 10.1021/ci400042y. Epub 2013 Jul 11.

Abstract

We compare established docking programs, AutoDock Vina and Schrödinger's Glide, to the recently published NNScore scoring functions. As expected, the best protocol to use in a virtual-screening project is highly dependent on the target receptor being studied. However, the mean screening performance obtained when candidate ligands are docked with Vina and rescored with NNScore 1.0 is not statistically different than the mean performance obtained when docking and scoring with Glide. We further demonstrate that the Vina and NNScore docking scores both correlate with chemical properties like small-molecule size and polarizability. Compensating for these potential biases leads to improvements in virtual screen performance. Composite NNScore-based scoring functions suited to a specific receptor further improve performance. We are hopeful that the current study will prove useful for those interested in computer-aided drug design.

摘要

我们将已建立的对接程序 AutoDock Vina 和 Schrödinger 的 Glide 与最近发布的 NNScore 评分函数进行了比较。正如预期的那样,在虚拟筛选项目中使用的最佳方案高度依赖于正在研究的靶受体。然而,当用 Vina 对接候选配体并用 NNScore 1.0 重新评分时获得的平均筛选性能与用 Glide 对接和评分时获得的平均性能在统计学上没有差异。我们进一步证明,Vina 和 NNScore 的对接评分都与小分子大小和极化率等化学性质相关。补偿这些潜在的偏差会提高虚拟筛选的性能。针对特定受体的基于 NNScore 的组合评分函数进一步提高了性能。我们希望当前的研究将对那些对计算机辅助药物设计感兴趣的人有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a3e/3735370/969fae628ea0/ci-2013-00042y_0001.jpg

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