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首页> 外文期刊>International Journal of Molecular Sciences >High-Dimensional Descriptor Selection and Computational QSAR Modeling for Antitumor Activity of ARC-111 Analogues Based on Support Vector Regression (SVR)
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High-Dimensional Descriptor Selection and Computational QSAR Modeling for Antitumor Activity of ARC-111 Analogues Based on Support Vector Regression (SVR)

机译:基于支持向量回归(SVR)的ARC-111类似物抗肿瘤活性的高维描述符选择和计算QSAR建模

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摘要

To design ARC-111 analogues with improved efficiency, we constructed the QSAR of 22 ARC-111 analogues with RPMI8402 tumor cells. First, the optimized support vector regression (SVR) model based on the literature descriptors and the worst descriptor elimination multi-roundly (WDEM) method had similar generalization as the artificial neural network (ANN) model for the test set. Secondly, seven and 11 more effective descriptors out of 2,923 features were selected by the high-dimensional descriptor selection nonlinearly (HDSN) and WDEM method, and the SVR models (SVR3 and SVR4) with these selected descriptors resulted in better evaluation measures and a more precise predictive power for the test set. The interpretability system of better SVR models was further established. Our analysis offers some useful parameters for designing ARC-111 analogues with enhanced antitumor activity.
机译:为了设计具有更高效率的ARC-111类似物,我们构建了具有RPMI8402肿瘤细胞的22种ARC-111类似物的QSAR。首先,基于文献描述符和最差描述符多次舍弃(WDEM)方法的优化支持向量回归(SVR)模型具有与测试集的人工神经网络(ANN)模型相似的通用性。其次,通过高维描述符非线性选择(HDSN)和WDEM方法,从2,923个特征中选择了7个和11个更有效的描述符,并使用具有这些选定描述符的SVR模型(SVR3和SVR4)产生了更好的评估措施,并且测试装置的精确预测能力。进一步建立了更好的SVR模型的解释系统。我们的分析为设计具有增强的抗肿瘤活性的ARC-111类似物提供了一些有用的参数。

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