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首页> 外文期刊>Journal of Medicinal Chemistry >In Silico Prediction of Volume of Distribution in Human Using Linear and Nonlinear Models on a 669 Compound Data Set
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In Silico Prediction of Volume of Distribution in Human Using Linear and Nonlinear Models on a 669 Compound Data Set

机译:在669个复合数据集上使用线性和非线性模型对人体分布量进行计算机模拟预测

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The prediction of human pharmacokinetics early in the drug discovery cycle has become of paramount importance, aiding candidate selection and benefit-risk assessment. We present herein computational models to predict human volume of distribution at steady state (VDss) entirely from in silico structural descriptors. Using both linear and nonlinear statistical techniques, partial least-squares (PLS), and random forest (RF) modeling, a data set of human VD,, values for 669 drug compounds recently published (Drug Metab. Disp. 2008, 36, 1385-1405) was explored. Descriptors covering 2D and 3D molecular topology, electronics, and physical properties were calculated using MOE and Volsurf +. Model evaluation was accomplished using a leave-class-out approach oil nine therapeutic or structural classes. The models were assessed using an external test set of 29 additional compounds. Our analysis generated models, both via a single method or consensus which were able to predict human VDss within geometric mean 2-fold error, a predictive accuracy considered good even for more resource-intensive approaches such as those requiring data generated from studies in multiple animal species.
机译:在药物发现周期的早期对人类药代动力学的预测已变得至关重要,这有助于候选者的选择和受益风险评估。我们在此提出计算模型,以完全根据计算机模拟结构描述符来预测稳态下的人体分布量(VDss)。使用线性和非线性统计技术,偏最小二乘(PLS)和随机森林(RF)建模(人类VD数据集),最近发布了669种药物的值(Drug Metab。Disp。2008,36,1385) -1405)。使用MOE和Volsurf +计算涵盖2D和3D分子拓扑,电子学和物理性质的描述符。使用九种治疗或结构分类的离开分类方法完成模型评估。使用包含29种其他化合物的外部测试集评估了模型。我们的分析通过单一方法或共识生成了能够预测几何均值2倍误差内的人类VDs的模型,即使对于更多的资源密集型方法(如那些需要对多只动物进行研究得出的数据),预测准确性也被认为是好的种类。

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