首页> 美国卫生研究院文献>International Journal of Medicinal Chemistry >The Development of Models Based on Linear and Nonlinear Multivariate Methods to Predict ADME/PK Properties Using Physicochemical Properties of Kinase Protease Inhibitors and GPCR Antagonists
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The Development of Models Based on Linear and Nonlinear Multivariate Methods to Predict ADME/PK Properties Using Physicochemical Properties of Kinase Protease Inhibitors and GPCR Antagonists

机译:基于线性和非线性多元方法的模型开发可利用激酶蛋白酶抑制剂和GPCR拮抗剂的理化特性预测ADME / PK特性

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摘要

Oral bioavailability of a drug compound is the significant property for potential drug candidates. Measuring this property can be costly and time-consuming. Quantitative structure-property relationships (QSPRs) are used to estimate the percentage of oral bioavailability, and they are an attractive alternative to experimental measurements. A data set of 217 drug and drug-like compounds with measured values of the percentage of oral bioavailability taken from the small molecule ChemBioBase database was used to develop and test a QSPR model. Descriptors were calculated for the compounds using Codessa 2.1 tool. Nonlinear general regression neural network model was generated using the DTREG predictive modeling program software. The calculated percentage of oral bioavailability model performs well, with root-mean-square (rms) errors of 4.55% oral bioavailability units for the training set, 14.32% oral bioavailability units for the test set, and 19.12% oral bioavailability units for the external prediction set. Given the structural diversity and bias of the data set, this is a good first attempt at modeling oral bioavailability using QSPR methods. The model can be used as a potential virtual screen or property estimator. With a larger data supply less biased toward the high end values of the percentage of oral bioavailability, a more successful model could likely be developed.
机译:药物化合物的口服生物利用度是潜在候选药物的重要特性。测量此属性可能既昂贵又耗时。定量结构-性质关系(QSPR)用于估计口服生物利用度的百分比,它们是实验测量的一种有吸引力的替代方法。从小分子ChemBioBase数据库中获得的217种药物和类药物的数据集具有口服生物利用度的测量值,用于开发和测试QSPR模型。使用Codessa 2.1工具计算化合物的描述符。非线性通用回归神经网络模型是使用DTREG预测建模程序软件生成的。口服生物利用度模型的计算百分比效果很好,训练集的口服生物利用度单位的均方根(rms)误差为4.55%,测试组的口服生物利用度单位的均方根误差为14.32%,外部测试的口服生物利用度单位的均方根误差为19.12%预测集。考虑到数据集的结构多样性和偏倚,这是使用QSPR方法对口腔生物利用度进行建模的良好尝试。该模型可用作潜在的虚拟屏幕或属性估计器。随着更大的数据供应减少了对口服生物利用度百分比的高端值的偏倚,可能会开发出更成功的模型。

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