首页> 美国卫生研究院文献>Iranian Journal of Pharmaceutical Research : IJPR >QSAR Study of 17β-HSD3 Inhibitors by Genetic Algorithm-Support Vector Machine as a Target Receptor for the Treatment of Prostate Cancer
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QSAR Study of 17β-HSD3 Inhibitors by Genetic Algorithm-Support Vector Machine as a Target Receptor for the Treatment of Prostate Cancer

机译:遗传算法-支持向量机作为靶受体治疗前列腺癌的17β-HSD3抑制剂的QSAR研究

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摘要

The 17β-HSD3 enzyme plays a key role in treatment of prostate cancer and small inhibitors can be used to efficiently target it. In the present study, the multiple linear regression (MLR), and support vector machine (SVM) methods were used to interpret the chemical structural functionality against the inhibition activity of some 17β-HSD3inhibitors. Chemical structural information were described through various types of molecular descriptors and genetic algorithm (GA) was applied to decrease the complexity of inhibition pathway to a few relevant molecular descriptors. Non-linear method (GA-SVM) showed to be better than the linear (GA-MLR) method in terms of the internal and the external prediction accuracy. The SVM model, with high statistical significance (R2train = 0.938; R2test = 0.870), was found to be useful for estimating the inhibition activity of 17β-HSD3 inhibitors. The models were validated rigorously through leave-one-out cross-validation and several compounds as external test set. Furthermore, the external predictive power of the proposed model was examined by considering modified R2 and concordance correlation coefficient values, Golbraikh and Tropsha acceptable model criteriaʹs, and an extra evaluation set from an external data set. Applicability domain of the linear model was carefully defined using Williams plot. Moreover, Euclidean based applicability domain was applied to define the chemical structural diversity of the evaluation set and training set.
机译:17β-HSD3酶在前列腺癌的治疗中起着关键作用,可以使用小型抑制剂有效地靶向它。在本研究中,使用多元线性回归(MLR)和支持向量机(SVM)方法来解释针对某些17β-HSD3抑制剂抑制活性的化学结构功能。通过各种类型的分子描述子描述了化学结构信息,并应用遗传算法(GA)来减少抑制途径的复杂性,以减少一些相关的分子描述子。就内部和外部预测精度而言,非线性方法(GA-SVM)优于线性方法(GA-MLR)。 SVM模型具有较高的统计意义(R 2 train = 0.938; R 2 test = 0.870),可用于评估17β-HSD3的抑制活性抑制剂。通过留一法交叉验证和几种化合物作为外部测试集,对模型进行了严格验证。此外,通过考虑修改后的R 2 和一致性相关系数值,Golbraikh和Tropsha可接受模型标准ʹs,以及来自外部数据集的额外评估集,检验了所提出模型的外部预测能力。线性模型的适用范围是使用Williams图仔细定义的。此外,基于欧几里得的适用域被用来定义评估集和训练集的化学结构多样性。

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