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Prediction of enzyme catalytic sites on protein using a graph kernel method

机译:使用曲线图核法预测蛋白质蛋白质催化位点

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Structural Genomics projects are producing structural data for proteins at an unprecedented speed. The functions of many of these protein structures are still unknown. To decipher the functions of these proteins and identify functional sites on their structures have become an urgent task. In this study, we developed an innovative graph method to represent protein surface based on how amino acid residues contact with each other. Then, we implemented a shortest-path graph kernel method to measure the similarities between graphs. We tried three variants of the nearest neighbor method to predict enzyme catalytic sites using the similarity measurement given by the shortest-path graph kernel. The prediction methods were evaluated using the leave-one-out cross validation. The methods achieved accuracy as high as 77.1%. We sorted all examples in the order of decreasing prediction scores. The results revealed that the positive examples (catalytic site residues) were associated with higher prediction scores and they were enriched in the region of top 10 percentile. Our results showed that the proposed methods were able to capture the structural similarity between enzyme catalytic sites and would provide a useful tool for catalytic site prediction.
机译:结构基因组学项目以前所未有的速度生产蛋白质的结构数据。许多这些蛋白质结构的功能仍然未知。破译这些蛋白质的功能并识别其结构上的功能网站已成为紧急任务。在这项研究中,我们开发了一种创新的图表方法,以基于氨基酸残基如何彼此接触的蛋白质表面。然后,我们实现了一个最短路径图形内核方法来测量图之间的相似性。我们尝试了最近邻法的三个变体,以使用最短路径晶圆给出的相似性测量来预测酶催化位点。使用休假交叉验证评估预测方法。该方法实现高达77.1%的精度。我们按照降低预测分数的顺序对所有示例进行了分类。结果表明,阳性实施例(催化位点残基)与更高的预测分数相关,它们富集在前10百分位数的区域。我们的研究结果表明,所提出的方法能够捕获酶催化位点之间的结构相似性,并为催化部位预测提供一种有用的工具。

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