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首页> 外文期刊>Pharmaceutical research >New predictive models for blood-brain barrier permeability of drug-like molecules.
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New predictive models for blood-brain barrier permeability of drug-like molecules.

机译:药物样分子血脑屏障通透性的新预测模型。

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PURPOSE: The goals of the present study were to apply a generalized regression model and support vector machine (SVM) models with Shape Signatures descriptors, to the domain of blood-brain barrier (BBB) modeling. MATERIALS AND METHODS: The Shape Signatures method is a novel computational tool that was used to generate molecular descriptors utilized with the SVM classification technique with various BBB datasets. For comparison purposes we have created a generalized linear regression model with eight MOE descriptors and these same descriptors were also used to create SVM models. RESULTS: The generalized regression model was tested on 100 molecules not in the model and resulted in a correlation r2 = 0.65. SVM models with MOE descriptors were superior to regression models, while Shape Signatures SVM models were comparable or better than those with MOE descriptors. The best 2D shape signature models had 10-fold cross validation prediction accuracy between 80-83% and leave-20%-out testing prediction accuracy between 80-82% as well as correctly predicting 84% of BBB+ compounds (n = 95) in an external database of drugs. CONCLUSIONS: Our data indicate that Shape Signatures descriptors can be used with SVM and these models may have utility for predicting blood-brain barrier permeation in drug discovery.
机译:目的:本研究的目的是将具有形状签名描述符的广义回归模型和支持向量机(SVM)模型应用于血脑屏障(BBB)建模领域。材料与方法:Shape Signatures方法是一种新颖的计算工具,可用于通过SVM分类技术生成各种BBB数据集的分子描述符。为了进行比较,我们创建了具有八个MOE描述符的广义线性回归模型,并且这些相同的描述符也用于创建SVM模型。结果:对不在模型中的100个分子进行了广义回归模型测试,相关性r2 = 0.65。具有MOE描述符的SVM模型优于回归模型,而Shape Signatures SVM模型与具有MOE描述符的SVM模型相当或更好。最佳的2D形状签名模型具有80-83%之间的10倍交叉验证预测准确度和80-82%之间的20%外出测试预测准确度,以及正确预测84%的BBB +化合物(n = 95)。药品的外部数据库。结论:我们的数据表明Shape Signatures描述符可与SVM一起使用,并且这些模型可能具有预测药物发现中血脑屏障渗透的效用。

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