SUMOhunt: Combining Spatial Staging between Lysine and SUMO with Random Forests to Predict SUMOylation.

ISRN bioinformatics Pub Date : 2013-06-17 eCollection Date: 2013-01-01 DOI:10.1155/2013/671269
Amna Ijaz
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Abstract

Modification with SUMO protein has many key roles in eukaryotic systems which renders the identification of its target proteins and sites of considerable importance. Information regarding the SUMOylation of a protein may tell us about its subcellular localization, function, and spatial orientation. This modification occurs at particular and not all lysine residues in a given protein. In competition with biochemical means of modified-site recognition, computational methods are strong contenders in the prediction of SUMOylation-undergoing sites on proteins. In this research, physicochemical properties of amino acids retrieved from AAIndex, especially those involved in docking of modifier and target proteins and optimal presentation of target lysine, in combination with sequence information and random forest-based classifier presented in WEKA have been used to develop a prediction model, SUMOhunt, with statistics significantly better than all previous predictors. In this model 97.56% accuracy, 100% sensitivity, 94% specificity, and 0.95 MCC have been achieved which shows that proposed amino acid properties have a significant role in SUMO attachment. SUMOhunt will hence bring great reliability and efficiency in SUMOylation prediction.

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SUMOhunt:将赖氨酸和 SUMO 之间的空间分期与随机森林相结合来预测 SUMOylation。
SUMO 蛋白修饰在真核生物系统中发挥着许多关键作用,因此识别其靶蛋白和靶点相当重要。有关蛋白质 SUMO 基化的信息可以让我们了解其亚细胞定位、功能和空间定向。这种修饰发生在特定蛋白质的特定而非全部赖氨酸残基上。在与生化修饰位点识别方法的竞争中,计算方法是预测蛋白质 SUMO 乙基化发生位点的有力竞争者。在这项研究中,我们利用从 AAIndex 中检索到的氨基酸理化特性,特别是涉及修饰蛋白和目标蛋白对接以及目标赖氨酸最佳呈现的理化特性,结合序列信息和 WEKA 中基于随机森林的分类器,开发了一个预测模型 SUMOhunt,其统计结果明显优于之前的所有预测器。该模型达到了 97.56% 的准确率、100% 的灵敏度、94% 的特异性和 0.95 的 MCC,这表明所提出的氨基酸特性在 SUMO 附着中具有重要作用。因此,SUMOhunt 将为 SUMOylation 预测带来极大的可靠性和效率。
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