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首页> 外文期刊>Journal of chemical information and modeling >In Silico Binary Classification QSAR Models Based on 4D-Fingerprints and MOE Descriptors for Prediction of hERG Blockage
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In Silico Binary Classification QSAR Models Based on 4D-Fingerprints and MOE Descriptors for Prediction of hERG Blockage

机译:基于4D指纹和MOE描述符的计算机二进制分类QSAR模型用于hERG阻塞预测

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摘要

Blockage of the human ether-a-go-go related gene (hERG) potassium ion channel is a major factor related to cardiotoxicity. Hence, drugs binding to this channel have become an important biological end point in side effects screening. A set of 250 structurally diverse compounds screened for hERG activity from the literature was assembled using a set of reliability filters. This data set was used to construct a set of two-state hERG QSAR models. The descriptor pool used to construct the models consisted of 4D-fingerprints generated from the thermodynamic distribution of conformer states available to a molecule, 204 traditional 2D descriptors and 76 3D VolSurf-like descriptors computed using the Molecular Operating Environment (MOE) software. One model is a continuous partial least-squares (PLS) QSAR hERG binding model. Another related model is an optimized binary classification QSAR model that classifies compounds as active or inactive. This binary model achieves 91% accuracy over a large range of molecular diversity spanning the training set. Two external test sets were constructed. One test set is the condensed PubChem bioassay database containing 876 compounds, and the other test set consists of 106 additional compounds found in the literature. Both of the test sets were used to validate the binary QSAR model. The binary QSAR model permits a structural interpretation of possible sources for hERG activity. In particular, the presence of a polar negative group at a distance of 6-8 angstrom from a hydrogen bond donor in a compound is predicted to be a quite structure-specific pharmacophore that increases hERG blockage. Since a data set of high chemical diversity was used to construct the binary model, it is applicable for performing general virtual hERG screening.
机译:人源去的相关基因(hERG)钾离子通道的阻塞是与心脏毒性有关的主要因素。因此,与该通道结合的药物已成为副作用筛选中重要的生物学终点。使用一组可靠性过滤器组装了从文献中筛选出的250种针对hERG活性的结构多样的化合物。该数据集用于构建一组两种状态的hERG QSAR模型。用于构建模型的描述符池由分子可用的构象异构体状态的热力学分布产生的4D指纹,204个传统2D描述子和使用分子操作环境(MOE)软件计算的76个3D VolSurf样描述符组成。一种模型是连续偏最小二乘(PLS)QSAR hERG绑定模型。另一个相关模型是优化的二元分类QSAR模型,该模型将化合物分类为有活性或无活性。该二元模型在整个训练集上的大分子多样性范围内均可达到91%的准确度。构建了两个外部测试集。一个测试集是浓缩的PubChem生物测定数据库,其中包含876种化合物,而另一个测试集则包含文献中发现的106种其他化合物。这两个测试集都用于验证二进制QSAR模型。二进制QSAR模型可以对hERG活性的可能来源进行结构解释。特别地,化合物中与氢键供体相距6-8埃的极性负性基团的存在被认为是增加hERG阻滞的完全结构特异性的药效团。由于使用了高度化学多样性的数据集来构建二元模型,因此它可用于执行一般的虚拟hERG筛选。

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