Department of Chemistry, University of Florida, Gainesville, Florida 32611-8435, United States.
J Chem Inf Model. 2011 Jun 27;51(6):1296-306. doi: 10.1021/ci2000665. Epub 2011 May 25.
A central problem in de novo drug design is determining the binding affinity of a ligand with a receptor. A new scoring algorithm is presented that estimates the binding affinity of a protein-ligand complex given a three-dimensional structure. The method, LISA (Ligand Identification Scoring Algorithm), uses an empirical scoring function to describe the binding free energy. Interaction terms have been designed to account for van der Waals (VDW) contacts, hydrogen bonding, desolvation effects, and metal chelation to model the dissociation equilibrium constants using a linear model. Atom types have been introduced to differentiate the parameters for VDW, H-bonding interactions, and metal chelation between different atom pairs. A training set of 492 protein-ligand complexes was selected for the fitting process. Different test sets have been examined to evaluate its ability to predict experimentally measured binding affinities. By comparing with other well-known scoring functions, the results show that LISA has advantages over many existing scoring functions in simulating protein-ligand binding affinity, especially metalloprotein-ligand binding affinity. Artificial Neural Network (ANN) was also used in order to demonstrate that the energy terms in LISA are well designed and do not require extra cross terms.
从头药物设计中的一个核心问题是确定配体与受体的结合亲和力。本文提出了一种新的评分算法,用于根据三维结构预测蛋白质-配体复合物的结合亲和力。该方法称为 LISA(配体识别评分算法),使用经验评分函数来描述结合自由能。设计了相互作用项来考虑范德华(VDW)接触、氢键、去溶剂化效应和金属螯合,以使用线性模型来模拟离解平衡常数。引入了原子类型来区分不同原子对之间的 VDW、氢键相互作用和金属螯合的参数。选择了 492 个蛋白质-配体复合物的训练集进行拟合过程。还检查了不同的测试集,以评估其预测实验测量的结合亲和力的能力。通过与其他知名评分函数进行比较,结果表明 LISA 在模拟蛋白质-配体结合亲和力方面优于许多现有的评分函数,特别是金属蛋白-配体结合亲和力。还使用人工神经网络(ANN)来证明 LISA 中的能量项设计良好,不需要额外的交叉项。