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An evaluation of β-turn prediction methods

机译:β转向预测方法的评估

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Motivation: β-turn is an important element of protein structure. In the past three decades, numerous β-turn prediction methods have been developed based on various strategies. For a detailed discussion about the importance of β-turns and a systematic introduction of the existing prediction algorithms for β-turns and their types, please see a recent review (Chou, Analytical Biochemistry, 286, 1-6, 2000). However at present, it is still difficult to say which method is better than the other. This is because of the fact that these methods were developed on different sets of data. Thus, it is important to evaluate the performance of β-turn prediction methods. Results: We have evaluated the performance of six methods of β-turn prediction. All the methods have been tested on a set of 426 non-homologous protein chains. It has been observed, BTPRED, is significantly better than the statistical methods. One of the reasons for its better performance is that it utilizes the predicted secondary structure information. We have also trained, tested and evaluated the performance of all methods except BTPRED and GORBTURN, on new data set using a 7-fold cross-validation technique. There is a significant improvement in performance of all the methods when secondary structure information is incorporated. Moreover, after incorporating secondary structure information, the Sequence Coupled Model has yielded better results in predicting β-turns as compared with other methods. In this study, both threshold dependent and independent (ROC) measures have been used for evaluation.
机译:动机:β-转角是蛋白质结构的重要元素。在过去的三十年中,已经基于各种策略开发了许多β-转弯预测方法。有关β转弯重要性的详细讨论以及对β转弯及其类型的现有预测算法的系统介绍,请参阅最近的评论(Chou,Analytical Biochemistry,286,1-6,2000)。但是,目前仍然很难说哪种方法比另一种更好。这是因为这些方法是针对不同的数据集开发的。因此,评估β转弯预测方法的性能非常重要。结果:我们评估了6种β转向预测方法的性能。所有方法都在一组426条非同源蛋白质链上进行了测试。已经观察到,BTPRED明显优于统计方法。其更好的性能的原因之一是它利用了预测的二级结构信息。我们还使用7倍交叉验证技术对新数据集进行了训练,测试和评估,除了BTPRED和GORBTURN以外,其他所有方法的性能。当合并二级结构信息时,所有方法的性能都有显着改善。而且,在结合了二级结构信息之后,与其他方法相比,序列耦合模型在预测β-转弯方面产生了更好的结果。在这项研究中,阈值依赖和独立(ROC)措施均已用于评估。

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