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Kernel Independent Component Analysis-Based Prediction on the Protein O-Glycosylation Sites Using Support Vectors Machine and Ensemble Classifiers

机译:使用支持向量机和集成分类器对蛋白质O-糖基化位点进行基于核独立成分分析的预测

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O-glycosylation means that sugar transferred to the protein. It can adjust the function of protein. To improve the prediction accuracy of O-glycosylation sites in protein, we used a new method of combining kernel independent component analysis with support vectors machine (KICA + SVM). The samples for experiment are encoded by the sparse coding with window size w = 51, 48 kernel independent components (feature) are extracted by kernel independent component analysis (KICA), then the prediction (classification) is done in feature space by support vector machines (SVM). The results of experiment show that the performance of KICA + SVM is better than that of KPCA + SVM, ICA + SVM, and PCA + SVM. Furthermore, we investigated the same protein sequence under various window size (w = 5, 7, 9, 11, 21, 31, 41, 51), and used the sum role to combine all the pre-classifiers to improve the prediction performance. The results indicate that the performance of ensembles of KICA + SVM is superior to that of pre-classifier. The prediction accuracy is about 90 %.
机译:O-糖基化是指糖转移到蛋白质上。它可以调节蛋白质的功能。为了提高蛋白质中O-糖基化位点的预测准确性,我们使用了一种将核独立成分分析与支持向量机(KICA + SVM)相结合的新方法。通过窗口大小为w = 51的稀疏编码对实验样本进行编码,通过核独立成分分析(KICA)提取48个核独立成分(特征),然后通过支持向量机在特征空间中进行预测(分类) (SVM)。实验结果表明,KICA + SVM的性能优于KPCA + SVM,ICA + SVM和PCA + SVM。此外,我们在不同的窗口大小(w = 5、7、9、11、21、31、41、51)下研究了相同的蛋白质序列,并使用求和作用来组合所有预分类器以提高预测性能。结果表明,KICA + SVM的合奏性能优于预分类器。预测精度约为90%。

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