Xing L, Welsh W J, Tong W, Perkins R, Sheehan D M
Department of Chemistry, University of Missouri-St. Louis 63121, USA.
SAR QSAR Environ Res. 1999;10(2-3):215-37. doi: 10.1080/10629369908039177.
A substantial body of evidence indicates that both humans and wildlife suffer adverse health effects from exposure to environmental chemicals that are capable of interacting with the endocrine system. The recent cloning of the estrogen receptor beta subtype (ER-beta) suggests that the selective effects of estrogenic compounds may arise in part by the control of different subsets of estrogen-responsive promoters by the two ER subtypes, ER-alpha and ER-beta. In order to identify the structural prerequisites for ligand-ER binding and to discriminate ER-alpha and ER-beta in terms of their ligand-binding specificities, Comparative Molecular Field Analysis (CoMFA) was employed to construct a three-dimensional Quantitative Structure-Activity Relationship (3D-QSAR) model on a data set of 31 structurally-diverse compounds for which competitive binding affinities have been measured against both ER-alpha and ER-beta. Structural alignment of the molecules in CoMFA was achieved by maximizing overlap of their steric and electrostatic fields using the Steric and Electrostatic ALignment (SEAL) algorithm. The final CoMFA models, generated by correlating the calculated 3D steric and electrostatic fields with the experimentally observed binding affinities using partial least-squares (PLS) regression, exhibited excellent self-consistency (r2 > 0.99) as well as high internal predictive ability (q2 > 0.65) based on cross-validation. CoMFA-predicted values of RBA for a test set of compounds outside of the training set were consistent with experimental observations. These CoMFA models can serve as guides for the rational design of ER ligands that possess preferential binding affinities for either ER-alpha or ER-beta. These models can also prove useful in risk assessment programs to identify real or suspected EDCs.
大量证据表明,人类和野生动物都会因接触能够与内分泌系统相互作用的环境化学物质而受到不良健康影响。雌激素受体β亚型(ER-β)的近期克隆表明,雌激素化合物的选择性作用可能部分源于两种ER亚型(ER-α和ER-β)对不同雌激素反应性启动子亚群的控制。为了确定配体与ER结合的结构先决条件,并根据其配体结合特异性区分ER-α和ER-β,采用比较分子场分析(CoMFA)对31种结构各异的化合物数据集构建三维定量构效关系(3D-QSAR)模型,这些化合物针对ER-α和ER-β的竞争性结合亲和力已被测定。CoMFA中分子的结构比对是通过使用空间和静电比对(SEAL)算法使它们的空间和静电场重叠最大化来实现的。最终的CoMFA模型通过使用偏最小二乘法(PLS)回归将计算出的3D空间和静电场与实验观察到的结合亲和力相关联而生成,基于交叉验证显示出优异的自一致性(r2>0.99)以及高内部预测能力(q2>0.65)。训练集之外的一组测试化合物的CoMFA预测RBA值与实验观察结果一致。这些CoMFA模型可作为合理设计对ER-α或ER-β具有优先结合亲和力的ER配体的指导。这些模型在风险评估程序中也可用于识别实际或疑似的内分泌干扰物。