The knowledge of protein subnuclear location in eukaryotic cells plays a very important role for understanding the biological functions of proteins. As it is very difficult and challenging to predict it at the subnuclear level using compu-tational methods, a method which combines Auto Cross Covariance(ACC)transformation and Recursive Feature Elimina-tion(RFE)has been proposed. ACC transformation is first employed to extract features to represent the proteins based on Position Specific Scoring Matrix(PSSM). Then, RFE is adopted to select the optimal features. Finally, the reduced fea-tures are input to a Support Vector Machine(SVM)to perform the prediction. Jackknife tests on two widely used datasets (SC714 and LD504)show that the proposed method is very promising and performs better than most of existing methods.%获取真核细胞中细胞核内蛋白质定位的信息对注解蛋白质功能具有非常重要的意义。针对于利用计算方法预测蛋白质在亚核水平上的定位更具挑战性的问题,提出了基于自互协方差变换与递归特征消除预测蛋白质亚核定位的方法。该方法基于位置特异性得分矩阵利用自互协方差变换构建蛋白质序列的特征向量,采用递归特征消除法进行特征选择,选用支持向量机作为预测工具,并在两个经典数据集SC714和LD504上进行了夹克刀测试。实验结果表明,该方法比大多数已报道的预测方法具有更高的预测准确率。
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