首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >Sequence-Based Prediction of Protein Folding Rates Using Contacts, Secondary Structures and Support Vector Machines
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Sequence-Based Prediction of Protein Folding Rates Using Contacts, Secondary Structures and Support Vector Machines

机译:使用接触,二级结构和支持向量机的基于序列的蛋白质折叠率预测

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Predicting protein folding rate is useful for understanding protein folding process and guiding protein design. Most previous methods of predicting folding rate require the tertiary structure of a protein as an input. And most methods do not distinguish the different kinetic natures (two-state folding and multi-state folding) of the proteins. Here we developed a method, SeqRate, to predict both protein folding kinetic type (two-state versus multi-state) and real-value folding rate using features extracted from only protein sequence with support vector machines. On a standard benchmark dataset, the accuracy of folding kinetic type classification is 80%. The Pearson correlation coefficient and the mean absolute difference between predicted and experimental folding rates (sec-1) in the base-10 logarithmic scale are 0.81 and 0.79 for two-state protein folders, and 0.80 and 0.68 for three-state protein folders. SeqRate is the first sequence-based method for protein folding type classification and its accuracy of fold rate prediction is improved over previous sequence-based methods. Both the web server and software of predicting folding rate are publicly available at http://casp.rnet.missouri.edu/fold_rate/index.html.
机译:预测蛋白质折叠速率有助于理解蛋白质折叠过程和指导蛋白质设计。以前大多数预测折叠率的方法都需要蛋白质的三级结构作为输入。而且大多数方法不能区分蛋白质的不同动力学性质(两态折叠和多态折叠)。在这里,我们开发了一种方法SeqRate,使用支持向量机仅从蛋白质序列中提取的特征来预测蛋白质折叠动力学类型(两种状态对多态)和实际值折叠率。在标准基准数据集上,折叠动力学类型分类的准确性为80%。基态10对数标度中的Pearson相关系数以及预测折叠率和实验折叠率(sec-1)之间的平均绝对差值对于两种状态的蛋白折叠分别为0.81和0.79,对于三种状态的蛋白折叠分别为0.80和0.68。 SeqRate是第一个基于序列的蛋白质折叠类型分类方法,其折叠率预测的准确性比以前的基于序列的方法有所提高。 Web服务器和预测折叠速度的软件均可在http://casp.rnet.missouri.edu/fold_rate/index.html上公开获得。

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