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An Ensemble Classifier for Eukaryotic Protein Subcellular Location Prediction Using Gene Ontology Categories and Amino Acid Hydrophobicity

机译:基于基因本体分类和氨基酸疏水性的真核蛋白亚细胞定位预测的整体分类器

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摘要

With the rapid increase of protein sequences in the post-genomic age, it is challenging to develop accurate and automated methods for reliably and quickly predicting their subcellular localizations. Till now, many efforts have been tried, but most of which used only a single algorithm. In this paper, we proposed an ensemble classifier of KNN (k-nearest neighbor) and SVM (support vector machine) algorithms to predict the subcellular localization of eukaryotic proteins based on a voting system. The overall prediction accuracies by the one-versus-one strategy are 78.17%, 89.94% and 75.55% for three benchmark datasets of eukaryotic proteins. The improved prediction accuracies reveal that GO annotations and hydrophobicity of amino acids help to predict subcellular locations of eukaryotic proteins.
机译:随着后基因组时代蛋白质序列的迅速增加,开发准确,自动化的方法来可靠,快速地预测其亚细胞定位是一项挑战。到现在为止,已经尝试了许多尝试,但是大多数尝试仅使用一种算法。在本文中,我们提出了一种基于KNN(k最近邻)和SVM(支持向量机)算法的整体分类器,以基于投票系统预测真核蛋白的亚细胞定位。一对一策略对真核蛋白质的三个基准数据集的总体预测准确性分别为78.17%,89.94%和75.55%。改进的预测准确性表明,GO注释和氨基酸的疏水性有助于预测真核蛋白的亚细胞位置。

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