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The effective feature representations by integrating PseAAC and PSSM for protein sub-nuclear location

机译:通过整合PSEAAC和PSSM进行蛋白质核位置的有效特征表示

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In molecular biology, many effective representations have been used for sub-nuclear location. However, these representations, containing only single characterize of protein, make the information for classification insufficient. Inspired by this fact, we propose two integrated representations by feature fusion method in the expectation of extracting richer information from the protein sequence. Concretely, we combine pseudo amino acid composition (PseAAC) with position specific scoring matrix (PSSM) and then obtain two fused representations, called briefly PseAACGreyPSSM and PseAACPsePSSM. Both the proposed representations, thus, include the protein amphiphilic factors and the biological evolution information. We, with feature vectors of protein samples, adopt the K nearest neighbor (KNN) classifier for predicting. The final experimental results state that our proposed representations are superior to the single feature representations consistently.
机译:在分子生物学中,许多有效的陈述已被用于亚核位置。然而,这些表示仅包含单一表征蛋白质,使分类信息不足。灵感来自这一事实,我们通过特征融合方法提出了两个综合表示,期望从蛋白质序列提取更丰富的信息。具体地,我们将假氨基酸组合物(PSEAAC)与位置特异性评分矩阵(PSSM)结合,然后获得两个融合表示,称为PseaAcgreypssm和PseAacpseSM。因此,所提出的表示包括蛋白质两亲子因子和生物进化信息。我们使用蛋白质样本的特征载体,采用K最近邻(KNN)分类器进行预测。最后的实验结果表明,我们的提议表示始终如一地优于单一特征表示。

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