Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California, San Diego, La Jolla, California 92093, USA.
J Chem Inf Model. 2012 Oct 22;52(10):2705-14. doi: 10.1021/ci3001088. Epub 2012 Sep 17.
Docking and virtual screening (VS) reach maximum potential when the receptor displays the structural changes needed for accurate ligand binding. Unfortunately, these conformational changes are often poorly represented in experimental structures or homology models, debilitating their docking performance. Recently, we have shown that receptors optimized with our LiBERO method (Ligand-guided Backbone Ensemble Receptor Optimization) were able to better discriminate active ligands from inactives in flexible-ligand VS docking experiments. The LiBERO method relies on the use of ligand information for selecting the best performing individual pockets from ensembles derived from normal-mode analysis or Monte Carlo. Here we present ALiBERO, a new computational tool that has expanded the pocket selection from single to multiple, allowing for automatic iteration of the sampling-selection procedure. The selection of pockets is performed by a dual method that uses exhaustive combinatorial search plus individual addition of pockets, selecting only those that maximize the discrimination of known actives compounds from decoys. The resulting optimized pockets showed increased VS performance when later used in much larger unrelated test sets consisting of biologically active and inactive ligands. In this paper we will describe the design and implementation of the algorithm, using as a reference the human estrogen receptor alpha.
对接和虚拟筛选 (VS) 在受体显示出准确结合配体所需的结构变化时达到最大潜力。不幸的是,这些构象变化在实验结构或同源模型中常常表示不佳,削弱了它们的对接性能。最近,我们已经表明,使用我们的 LiBERO 方法(配体引导的骨干整体受体优化)优化的受体能够在灵活配体 VS 对接实验中更好地区分活性配体和非活性配体。LiBERO 方法依赖于使用配体信息从正常模式分析或蒙特卡罗衍生的集合中选择表现最佳的个体口袋。在这里,我们提出了 ALiBERO,这是一种新的计算工具,它将口袋选择从单个扩展到多个,允许自动迭代采样选择过程。口袋的选择是通过双重方法进行的,该方法使用穷举组合搜索加上口袋的单独添加,仅选择那些最大限度地区分已知活性化合物和诱饵的口袋。当后来在由生物活性和非活性配体组成的更大的、不相关的测试集中使用时,优化后的口袋显示出了更高的 VS 性能。在本文中,我们将描述算法的设计和实现,以人雌激素受体 α 作为参考。