Max Planck Institute Biochemistry , Am Klopferspitz 18, 82152 Martinsried, Germany.
J Chem Inf Model. 2014 May 27;54(5):1401-11. doi: 10.1021/ci500028u. Epub 2014 May 14.
In this study, we propose a novel approach to evaluate virtual screening (VS) experiments based on the analysis of docking output data. This approach, which we refer to as docking data feature analysis (DDFA), consists of two steps. First, a set of features derived from the docking output data is computed and assigned to each molecule in the virtually screened library. Second, an artificial neural network (ANN) analyzes the molecule's docking features and estimates its activity. Given the simple architecture of the ANN, DDFA can be easily adapted to deal with information from several docking programs simultaneously. We tested our approach on the Directory of Useful Decoys (DUD), a well-established and highly accepted VS benchmark. Outstanding results were obtained by DDFA not only in comparison with the conventional rankings of the docking programs used in this work but also with respect to other methods found in the literature. Our approach performs with similar good results as the best available methods, which, however, also require substantially more computing time, economic resources, and/or expert intervention. Taken together, DDFA represents an automatic and highly attractive methodology for VS.
在这项研究中,我们提出了一种新的方法来评估虚拟筛选 (VS) 实验,该方法基于对接输出数据的分析。这种方法,我们称之为对接数据特征分析 (DDFA),包括两个步骤。首先,从对接输出数据中计算并分配一组特征给虚拟筛选库中的每个分子。其次,人工神经网络 (ANN) 分析分子的对接特征并估计其活性。由于 ANN 的简单架构,DDFA 可以很容易地适应同时处理来自多个对接程序的信息。我们在目录中的有用诱饵 (DUD) 上测试了我们的方法,这是一个成熟且高度接受的 VS 基准。DDFA 的出色结果不仅与本工作中使用的传统对接程序的排名相比,而且与文献中发现的其他方法相比都得到了体现。我们的方法与最好的可用方法表现出相似的良好结果,但这些方法也需要更多的计算时间、经济资源和/或专家干预。总之,DDFA 代表了一种自动且极具吸引力的 VS 方法。