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Predictivity Approach for Quantitative Structure-Property Models. Application for Blood-Brain Barrier Permeation of Diverse Drug-Like Compounds

机译:定量结构属性模型的预测方法。多种药物样化合物在血脑屏障渗透中的应用

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摘要

The goal of the present research was to present a predictivity statistical approach applied on structure-based prediction models. The approach was applied to the domain of blood-brain barrier (BBB) permeation of diverse drug-like compounds. For this purpose, 15 statistical parameters and associated 95% confidence intervals computed on a 2 × 2 contingency table were defined as measures of predictivity for binary quantitative structure-property models. The predictivity approach was applied on a set of compounds comprised of 437 diverse molecules, 122 with measured BBB permeability and 315 classified as active or inactive. A training set of 81 compounds (~2/3 of 122 compounds assigned randomly) was used to identify the model and a test set of 41 compounds was used as the internal validation set. The molecular descriptor family on vertices cutting was the computation tool used to generate and calculate structural descriptors for all compounds. The identified model was assessed using the predictivity approach and compared to one model previously reported. The best-identified classification model proved to have an accuracy of 69% in the training set (95%CI [58.53–78.37]) and of 73% in the test set (95%CI [58.32–84.77]). The predictive accuracy obtained on the external set proved to be of 73% (95%CI [67.58–77.39]). The classification model proved to have better abilities in the classification of inactive compounds (specificity of ~74% [59.20–85.15]) compared to abilities in the classification of active compounds (sensitivity of ~64% [48.47–77.70]) in the training and external sets. The overall accuracy of the previously reported model seems not to be statistically significantly better compared to the identified model (~81% [71.45–87.80] in the training set, ~93% [78.12–98.17] in the test set and ~79% [70.19–86.58] in the external set). In conclusion, our predictivity approach allowed us to characterize the model obtained on the investigated set of compounds as well as compare it with a previously reported model. According to the obtained results, the reported model should be chosen if a correct classification of inactive compounds is desired and the previously reported model should be chosen if a correct classification of active compounds is most wanted.
机译:本研究的目的是提出一种应用于基于结构的预测模型的预测性统计方法。该方法已应用于多种药物样化合物的血脑屏障(BBB)渗透领域。为此,将在2×2列联表上计算出的15个统计参数和相关的95%置信区间定义为二元定量结构属性模型的预测性度量。可预测性方法应用于一组化合物,该化合物由437种不同分子,122种具有测得的BBB渗透性和315种分类为有活性或无活性的化合物组成。使用81种化合物的训练集(随机分配的122种化合物中的约2/3)来识别模型,并将41种化合物的测试集用作内部验证集。顶点切割时的分子描述符族是用于生成和计算所有化合物的结构描述符的计算工具。使用预测性方法评估已识别的模型,并将其与先前报告的一种模型进行比较。最佳识别的分类模型在训练集(95%CI [58.53–78.37])和测试集(95%CI [58.32–84.77])中的准确性为69%。在外部集合上获得的预测准确性证明为73%(95%CI [67.58–77.39])。与训练中的活性化合物分类能力(敏感性约64%[48.47-77.70])相比,分类模型被证明具有更好的非活性化合物分类能力(特异性约74%[59.20–85.15])。和外部装置。与已确定的模型相比,先前报告的模型的总体准确性似乎没有统计学上的显着提高(训练集中为〜81%[71.45–87.80],测试集中为〜93%[78.12–98.17],〜79% [70.19–86.58](外部设置)。总之,我们的预测性方法使我们能够表征在研究的一组化合物上获得的模型,并将其与先前报道的模型进行比较。根据获得的结果,如果需要对无活性化合物进行正确分类,则应选择报告的模型;如果最需要对活性化合物进行正确分类,则应选择先前报告的模型。

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