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PREDICTION OF CONTACT MAPS USING SUPPORT VECTOR MACHINES

机译:使用支持向量机预测接触图

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摘要

Contact map prediction is of great interest for its application in fold recognition and protein 3D structure determination. In this paper we present a contact-map prediction algorithm that employs Support Vector Machines as the machine learning tool and incorporates various features such as sequence profiles and their conservations, correlated mutation analysis based on various amino acid physicochemical properties, and secondary structure. In addition, we evaluated the effectiveness of the different features on contact map prediction for different fold classes. On average, our predictor achieved a prediction accuracy of 0.224 with an improvement over a random predictor of a factor 11.7, which is better than reported studies. Our study showed that predicted secondary structure features play an important roles for the proteins containing beta-structures. Models based on secondary structure features and correlated mutation analysis features produce different sets of predictions. Our study also suggests that models learned separately for different protein fold families may achieve better performance than a unified model.
机译:接触图预测对其在折叠识别和蛋白质3D结构确定中的应用非常感兴趣。在本文中,我们提出了一种接触图预测算法,该算法采用支持向量机作为机器学习工具,并结合了各种功能,例如序列图谱及其保守性,基于各种氨基酸理化特性的相关突变分析和二级结构。此外,我们评估了针对不同折叠类别的联系地图预测中不同功能的有效性。平均而言,我们的预测变量的预测准确度为0.224,比随机预测变量的因子11.7有所提高,这比已报道的研究要好。我们的研究表明,预测的二级结构特征对于包含β结构的蛋白质起着重要作用。基于二级结构特征和相关突变分析特征的模型会产生不同的预测集。我们的研究还表明,针对不同蛋白质折叠家族分别学习的模型可能会比统一模型获得更好的性能。

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