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首页> 外文期刊>Journal of chemical information and modeling >In Silico Prediction of Volume of Distribution in Humans. Extensive Data Set and the Exploration of Linear and Nonlinear Methods Coupled with Molecular Interaction Fields Descriptors
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In Silico Prediction of Volume of Distribution in Humans. Extensive Data Set and the Exploration of Linear and Nonlinear Methods Coupled with Molecular Interaction Fields Descriptors

机译:在计算机中人类分布量的预测。广泛的数据集以及结合分子相互作用场描述子的线性和非线性方法的探索

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摘要

We present three in silico volume of distribution at steady state (VDss) models generated on a training set comprising 1096 compounds, which goes well beyond the conventional drug space delineated by the Rule of 5 or similar approaches. We have performed a careful selection of descriptors and kept a homogeneous Molecular Interaction Field-based descriptor set and linear (Partial Least Squares, PLS) and nonlinear (Random Forest, RF) models. We have tested the models, which we deem orthogonal in nature due to different descriptors and statistical approaches, with good results. In particular we tested the RF model, via a leave-class-out approach and by using a set of 34 additional compounds not used for training. We report comparable results against in vivo scaling approaches with geometric mean-fold error at or below 2 (for a set of 60 compounds with animal data available) and discuss the predictive performance based on the ionization states of the compounds. Lastly, we report the findings using a two-tier approach (classification followed by regression) based on VDss ranges, in an attempt to improve the prediction of compounds with very high VDss. We would recommend, overall, the RF model, with 33 descriptors, as the primary choice for VDss prediction in humans.
机译:我们介绍了在包含1096种化合物的训练集上生成的稳态下(VDss)模型的三个计算机模拟体积分布,这远远超出了由5条规则或类似方法界定的常规药物领域。我们对描述符进行了仔细的选择,并保留了基于均质分子相互作用场的描述符集以及线性(偏最小二乘,PLS)和非线性(Random Forest,RF)模型。我们已经测试了这些模型,由于不同的描述符和统计方法,我们认为它们本质上是正交的,具有良好的结果。特别是,我们通过休假淘汰方法以及使用一组34种未用于训练的其他化合物测试了RF模型。我们报告了可比结果,其与体内均值倍数误差在2或以下(对于具有动物数据的60种化合物)的体内缩放方法相比,并讨论了基于化合物电离态的预测性能。最后,我们使用基于VDss范围的两层方法(分类,然后进行回归)报告发现结果,以期改进具有非常高VDss的化合物的预测。总体而言,我们建议将带有33个描述符的RF模型作为人类VDs预测的主要选择。

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