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A step-by-step classification algorithm of protein secondary structures based on double-layer SVM model

机译:基于双层SVM模型的蛋白质二级结构逐步分类算法

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In this paper, a step-by-step classification algorithm based on double-layer SVM model is constructed to predict the secondary structure of proteins. The most important feature of this algorithm is to improve the prediction accuracy of α+β and α/β classes through transforming the prediction of two classes of proteins, α+β and α/β classes, with low accuracy in the past, into the prediction of all-α and all-β classes with high accuracy. A widely-used dataset, 25PDB dataset with sequence similarity lower than 40%, is used to evaluate this method. The results show that this method has good performance, and on the basis of ensuring the accuracy of other three structural classes of proteins, the accuracy of α+β class proteins is improved significantly.
机译:本文构建了一种基于双层SVM模型的逐步分类算法以预测蛋白质的二次结构。该算法的最重要特征是通过转换两类蛋白质,α+β和α/β类的预测来提高α+β和α/β类的预测精度,以低精度地进入高精度预测全-α和全-β类。使用序列相似性低于40%的广泛使用的数据集,25pdB数据集用于评估此方法。结果表明,该方法具有良好的性能,在确保其他三种结构类别的蛋白质的准确性的基础上,α+β类蛋白的准确性显着提高。

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