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Protein secondary structure prediction based on an improved support vector machines approach

机译:基于改进的支持向量机方法的蛋白质二级结构预测

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The prediction of protein secondary structure is an important step in the prediction of protein tertiary structure. A new protein secondary structure prediction method, SVMpsi, was developed to improve the current level of prediction by incorporating new tertiary classifiers and their jury decision system, and the PSI-BLAST PSSM profiles. Additionally, efficient methods to handle unbalanced data and a new optimization strategy for maximizing the Q(3) measure were developed. The SVMpsi produces the highest published Q(3) and SOV94 scores on both the RS126 and CB513 data sets to date. For a new KP480 set, the prediction accuracy of SVMpsi was Q(3)=78.5% and SOV94=82.8%. Moreover, the blind test results for 136 non-redundant protein sequences which do not contain homologues of training data sets were Q(3)=77.2% and SOV94=81.8%. The SVMpsi results in CASP5 illustrate that it is another competitive method to predict protein secondary structure. [References: 33]
机译:蛋白质二级结构的预测是蛋白质三级结构预测的重要步骤。开发了一种新的蛋白质二级结构预测方法SVMpsi,以通过合并新的三级分类器及其陪审团决策系统和PSI-BLAST PSSM配置文件来提高当前的预测水平。此外,开发了用于处理不平衡数据的有效方法和一种用于最大化Q(3)度量的新优化策略。 SVMpsi在迄今为止的RS126和CB513数据集上均产生了最高的Q(3)和SOV94评分。对于新的KP480集,SVMpsi的预测精度为Q(3)= 78.5%,SOV94 = 82.8%。此外,不包含训练数据集同源物的136个非冗余蛋白序列的盲测结果为Q(3)= 77.2%和SOV94 = 81.8%。 CASP5中的SVMpsi结果表明,这是预测蛋白质二级结构的另一种竞争方法。 [参考:33]

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