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A novel method for protein secondary structure prediction using dual-layer SVM and profiles.

机译:一种使用双层SVM和配置文件进行蛋白质二级结构预测的新方法。

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摘要

A high-performance method was developed for protein secondary structure prediction based on the dual-layer support vector machine (SVM) and position-specific scoring matrices (PSSMs). SVM is a new machine learning technology that has been successfully applied in solving problems in the field of bioinformatics. The SVM's performance is usually better than that of traditional machine learning approaches. The performance was further improved by combining PSSM profiles with the SVM analysis. The PSSMs were generated from PSI-BLAST profiles, which contain important evolution information. The final prediction results were generated from the second SVM layer output. On the CB513 data set, the three-state overall per-residue accuracy, Q3, reached 75.2%, while segment overlap (SOV) accuracy increased to 80.0%. On the CB396 data set, the Q3 of our method reached 74.0% and the SOV reached 78.1%. A web server utilizing the method has been constructed and is available at http://www.bioinfo.tsinghua.edu.cn/pmsvm.
机译:基于双层支持向量机(SVM)和位置特定得分矩阵(PSSM),开发了一种用于蛋白质二级结构预测的高性能方法。 SVM是一种新的机器学习技术,已成功应用于解决生物信息学领域的问题。 SVM的性能通常优于传统的机器学习方法。通过将PSSM配置文件与SVM分析相结合,可以进一步提高性能。 PSSM是从PSI-BLAST配置文件生成的,其中包含重要的进化信息。从第二个SVM层输出生成最终的预测结果。在CB513数据集上,三态总残基精度Q3达到75.2%,而段重叠(SOV)精度提高到80.0%。在CB396数据集上,我们方法的Q3达到74.0%,SOV达到78.1%。已经构建了使用该方法的Web服务器,并且可以从http://www.bioinfo.tsinghua.edu.cn/pmsvm获得该服务器。

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