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A fast and efficient nearest neighbor method for protein secondary structure prediction

机译:一种快速高效的蛋白质二级结构预测方法

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Using PSSM profiles, various machine learning methods have been successfully developed for protein secondary structure prediction. With the steady increase of protein structure data, the probability of having available homologous structural information of the protein in real prediction is now fairly high and will continue to increase. Therefore, how to effectively utilize the ever-growing protein structure data has become a huge challenge and opportunity. In this paper, we propose a novel nearest neighbor method, DPred, to use both homologous and non-homologous information for protein secondary structure prediction. On the dataset composed of new solved proteins, the method achieves the overall Q3 and SOV scores of 87.51% and 86.50%, which is comparable with Porter_H and better than PROTEUS and CDM.
机译:使用PSSM简介,已成功开发了各种机器学习方法,用于蛋白质二级结构预测。随着蛋白质结构数据的稳定增加,现有预测中蛋白质的同源结构信息的可能性现在相当高,并将继续增加。因此,如何有效利用不断增长的蛋白质结构数据已成为巨大的挑战和机遇。在本文中,我们提出了一种新的最近邻法,DPRED,用于使用蛋白质二级结构预测的同源和非同源信息。在由新的溶剂组成的数据集上,该方法实现了87.51%和86.50%的总Q 3 和SOV分数,与Porter_h相当,比Proteus和CDM更好。

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