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A simple and fast secondary structure prediction method using hidden neural networks

机译:一种使用隐藏神经网络的简单快速的二级结构预测方法

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MOTIVATION: In this paper, we present a secondary structure prediction method YASPIN that unlike the current state-of-the-art methods utilizes a single neural network for predicting the secondary structure elements in a 7-state local structure scheme and then optimizes the output using a hidden Markov model, which results in providing more information for the prediction. RESULTS: YASPIN was compared with the current top-performing secondary structure prediction methods, such as PHDpsi, PROFsec, SSPro2, JNET and PSIPRED. The overall prediction accuracy on the independent EVA5 sequence set is comparable with that of the top performers, according to the Q3, SOV and Matthew's correlations accuracy measures. YASPIN shows the highest accuracy in terms of Q3 and SOV scores for strand prediction. AVAILABILITY: YASPIN is available on-line at the Centre for Integrative Bioinformatics website (http://ibivu.cs.vu.nl/programs/yaspinwww/) at the Vrije University in Amsterdam and will soon be mirrored on the Mathematical Biology website (http://www.mathbio.nimr.mrc.ac.uk) at the NIMR in London. CONTACT: kxlin@nimr.mrc.ac.uk
机译:动机:本文中,我们介绍了一种二级结构预测方法YASPIN,该方法不同于当前的最新方法,它利用单个神经网络来预测7状态局部结构方案中的二级结构元素,然后优化输出使用隐马尔可夫模型,可以为预测提供更多信息。结果:将YASPIN与目前性能最高的二级结构预测方法(如PHDpsi,PROFsec,SSPro2,JNET和PSIPRED)进行了比较。根据Q3,SOV和Matthew的相关准确度测度,独立EVA5序列集的整体预测准确度可与表现最佳的相媲美。对于链预测,YASPIN在Q3和SOV得分方面显示出最高的准确性。可用性:YASPIN可在阿姆斯特丹的弗里耶大学的集成生物信息学中心网站(http://ibivu.cs.vu.nl/programs/yaspinwww/)上在线获得,并将很快在Mathematical Biology网站( http://www.mathbio.nimr.mrc.ac.uk)在伦敦的NIMR。联系方式:kxlin@nimr.mrc.ac.uk

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