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Prediction of antioxidant proteins using hybrid feature representation method and random forest

机译:用杂交特征表示法和随机林预测抗氧化蛋白

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Natural antioxidant proteins are mainly found in plants and animals, which interact to eliminate excessive free radicals and protect cells and DNA from damage, prevent and treat some diseases. Therefore, accurate identification of antioxidant proteins is important for the development of new drugs and research of related diseases. This article proposes novel method based on the combination of random forest and hybrid features that can accurately predict antioxidant proteins. Four single feature extraction methods (188D, profile-based Auto-cross covariance (ACC-PSSM), N-gram, and g-gap) and hybrid feature representation methods were used to feature extraction. Three feature selection methods (MRMD, t-SNE, and the optimal feature set selection) were adopted to determine the optimal features. The new hybrid feature vectors derived by combining 188D with the other three features all have indicators ranging from 0.9550 to 0.9990. The novel method showed better performance compared with the other methods.
机译:天然抗氧化蛋白主要在植物和动物中发现,其相互作用,以消除过量的自由基并保护细胞和DNA免受损伤,预防和治疗一些疾病。因此,准确的抗氧化蛋白的鉴定对于开发新药物和对相关疾病的研究是重要的。本文提出了基于随机森林和杂化特征的组合的新方法,其可以准确地预测抗氧化蛋白。四个单一特征提取方法(188D,基于轮廓的自动交叉协方差(ACC-PSSM),N-GRAM和G-GAP)和混合特征表示方法用于特征提取。采用三种特征选择方法(MRMD,T-SNE和最佳特征设置选择)来确定最佳功能。通过将188D与其他三个功能组合的新的混合特征向量所有具有从0.9550到0.9990的指示符。与其他方法相比,该新方法表现出更好的性能。

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