Hajduk Philip J, Huth Jeffrey R, Fesik Stephen W
Global Pharmaceutical Research and Development, Abbott Laboratories, Abbott Park, Illinois 60064, USA.
J Med Chem. 2005 Apr 7;48(7):2518-25. doi: 10.1021/jm049131r.
An analysis of heteronuclear-NMR-based screening data is used to derive relationships between the ability of small molecules to bind to a protein and various parameters that describe the protein binding site. It is found that a simple model including terms for polar and apolar surface area, surface complexity, and pocket dimensions accurately predicts the experimental screening hit rates with an R(2) of 0.72, an adjusted R(2) of 0.65, and a leave-one-out Q(2) of 0.56. Application of the model to predict the druggability of protein targets not used in the training set correctly classified 94% of the proteins for which high-affinity, noncovalent, druglike leads have been reported. In addition to understanding the pocket characteristics that contribute to high-affinity binding, the relationships that have been defined allow for quantitative comparative analyses of protein binding sites for use in target assessment and validation, virtual ligand screening, and structure-based drug design.
基于异核核磁共振的筛选数据的分析被用于推导小分子与蛋白质结合能力和描述蛋白质结合位点的各种参数之间的关系。研究发现,一个包含极性和非极性表面积、表面复杂性以及口袋尺寸项的简单模型能够准确预测实验筛选命中率,其决定系数R(2)为0.72,调整后的决定系数为0.65,留一法交叉验证系数Q(2)为0.56。将该模型应用于预测训练集中未使用的蛋白质靶点的可成药性,正确分类了94%已报道有高亲和力、非共价、类药物先导物的蛋白质。除了理解有助于高亲和力结合的口袋特征外,所定义的这些关系还允许对蛋白质结合位点进行定量比较分析,以用于靶点评估和验证、虚拟配体筛选以及基于结构的药物设计。