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Molecular structural characteristics as determinants of estrogen receptor selectivity.

机译:决定雌激素受体选择性的分子结构特征。

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摘要

Recent reports that a wide variety of natural and man-made compounds are capable of competing with natural hormones for estrogen receptors serve as timely examples of the need to advance screening techniques to support human health and ascertain ecological risk. Quantitative structure-activity relationships (QSARs) can potentially serve as screening tools to identify and prioritize untested compounds for further empirical evaluations. Computer-based QSAR molecular models have been used to describe ligand-receptor interactions and to predict chemical structures that possess desired pharmacological characteristics. These have recently included combined and differential relative binding affinities of potential estrogenic compounds at estrogen receptors (ER) alpha and beta. In the present study, artificial neural network (ANN) QSAR models were developed that were able to predict differential relative binding affinities of a series of structurally diverse compounds with estrogenic activity. The models were constructed with a dataset of 93 compounds and tested with an additional dataset of 30 independent compounds. High training correlations (r2=0.83-0.91) were observed while validation results for the external compounds were encouraging (r2=0.62-0.86). The models were used to identify structural features of phytoestrogens that are responsible for selective ligand binding to ERalpha and ERbeta. Numerous structural characteristics are required for complexation with receptors. In particular, size, shape and polarity of ligands, heterocyclic rings, lipophilicity, hydrogen bonding, presence of quaternary carbon atom, presence, position, length and configuration of a bulky side chain, were identified as the most significant structural features responsible for selective binding to ERalpha and ERbeta.
机译:最近的报道表明,各种各样的天然和人造化合物都能够与天然激素竞争雌激素受体,这些都是及时的例子,说明需要先进的筛查技术以支持人类健康并确定生态风险。定量构效关系(QSAR)可以潜在地用作筛选工具,以鉴定未经测试的化合物并确定其优先级,以进行进一步的经验评估。基于计算机的QSAR分子模型已用于描述配体-受体相互作用并预测具有所需药理特性的化学结构。这些最近包括潜在雌激素化合物在雌激素受体(ER)α和β上的组合和差分相对结合亲和力。在本研究中,人工神经网络(ANN)QSAR模型得以开发,该模型能够预测具有雌激素活性的一系列结构多样的化合物的相对相对结合亲和力。使用93种化合物的数据集构建模型,并使用30种独立化合物的附加数据集进行测试。观察到较高的训练相关性(r2 = 0.83-0.91),而外部化合物的验证结果令人鼓舞(r2 = 0.62-0.86)。该模型用于鉴定负责选择性配体与ERalpha和ERbeta结合的植物雌激素的结构特征。与受体络合需要许多结构特征。特别是,配体的大小,形状和极性,杂环,亲脂性,氢键,季碳原子的存在,庞大侧链的存在,位置,长度和构型被确定为负责选择性结合的最重要的结构特征。 ERalpha和ERbeta。

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