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Prediction of protein structural classes by decreasing nearest neighbor error rate

机译:通过减少最近邻差错率预测蛋白质结构类

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Prediction of protein structural classes has been proven to be significant in the field of bioinformatics. A good computational prediction technique may improve the prediction accuracy. In this paper, a new predictor from proteins' primary sequences is proposed to determine protein structural classes. Firstly, a feature vector which serially fuses pseudo amino acid composition and pseudo position-specific scoring matrix is constructed. Secondly, the classifier based on nearest neighbor error rate is employed and then a heuristic algorithm is proposed to decrease the error rate. Finally, leave-one-out cross-validation is adopted to evaluate our approach on 4 benchmark datasets (Z277, Z498, C204 and W1189). The experimental results demonstrated that our method achieves satisfactory performance in comparison with other existing methods.
机译:在生物信息学领域,已被证明对蛋白质结构类的预测是显着的。良好的计算预测技术可以提高预测精度。本文提出了来自蛋白质序列的新预测因子来确定蛋白质结构类。首先,构建了串联熔化伪氨基酸组成和伪位置特异性评分基质的特征载体。其次,采用基于最近邻差错率的分类器,然后提出了一种启发式算法来降低错误率。最后,采用休假交叉验证来评估我们在4个基准数据集(Z277,Z498,C204和W1189)上的方法。实验结果表明,与其他现有方法相比,我们的方法达到了令人满意的性能。

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