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Support Vector Machine Classification and Regression Prioritize Different Structural Features for Binary Compound Activity and Potency Value Prediction

机译:支持向量机分类和回归优先考虑不同的结构特征,以进行二元化合物活性和效价预测

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In computational chemistry and chemoinformatics, the support vector machine (SVM) algorithm is among the most widely used machine learning methods for the identification of new active compounds. In addition, support vector regression (SVR) has become a preferred approach for modeling nonlinear structure–activity relationships and predicting compound potency values. For the closely related SVM and SVR methods, fingerprints (i.e., bit string or feature set representations of chemical structure and properties) are generally preferred descriptors. Herein, we have compared SVM and SVR calculations for the same compound data sets to evaluate which features are responsible for predictions. On the basis of systematic feature weight analysis, rather surprising results were obtained. Fingerprint features were frequently identified that contributed differently to the corresponding SVM and SVR models. The overlap between feature sets determining the predictive performance of SVM and SVR was only very small. Furthermore, features were identified that had opposite effects on SVM and SVR predictions. Feature weight analysis in combination with feature mapping made it also possible to interpret individual predictions, thus balancing the black box character of SVM/SVR modeling.
机译:在计算化学和化学信息学中,支持向量机(SVM)算法是用于识别新活性化合物的最广泛使用的机器学习方法之一。此外,支持向量回归(SVR)已成为建模非线性结构-活性关系和预测化合物效价的首选方法。对于密切相关的SVM和SVR方法,通常首选指纹(即化学结构和性质的位串或特征集表示)。在这里,我们比较了相同复合数据集的SVM和SVR计算,以评估哪些特征负责预测。在系统的特征权重分析的基础上,获得了相当令人惊讶的结果。经常识别出指纹特征,这些特征对相应的SVM和SVR模型做出了不同的贡献。决定SVM和SVR预测性能的功能集之间的重叠非常小。此外,确定了对SVM和SVR预测有相反影响的功能。特征权重分析与特征映射相结合,还可以解释各个预测,从而平衡了SVM / SVR建模的黑匣子特征。

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