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SVM-Based Approach for Predicting DNA-Binding Residues in Proteins from Amino Acid Sequences

机译:基于SVM的方法,用于预测氨基酸序列中的DNA结合残留物

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Protein-DNA interactions are vitally important in a wide range of biological processes such as gene regulation and DNA replication and repair. We predict DNA-binding residues in proteins from amino acid sequences by support vector machine (SVM) with a novel hybrid feature which incorporates evolutionary information of amino acid sequences and four physical–chemical properties, including the side chain pKa value, hydrophobicity index, molecular mass and lone electron pairs of amino acids. The classifier achieves 79.12% total accuracy with 74.19% sensitivity and 79.20% specificity, respectively. Moreover, an alternative classifier using random forest (RF) is also constructed. Further analysis proves that the hybrid feature shows obvious contribution to our excellent prediction performance, and the evolutionary information contributes most to the prediction improvement.
机译:蛋白质-DNA相互作用在广泛的生物过程中是至关重要的,例如基因调控和DNA复制和修复。我们通过支持载体机(SVM)预测来自氨基酸序列的蛋白质中的DNA结合残留物,其具有新的杂化特征,其含有氨基酸序列的进化信息和四种物理化学性质,包括侧链PKA值,疏水性指数,分子质量和孤立电子对氨基酸。分类器分别达到79.12%的总准确性,分别具有74.19%和79.20%的特异性。此外,还构造了使用随机林(RF)的替代分类器。进一步的分析证明,混合特征对我们出色的预测性能显示出明显的贡献,并且进化信息对预测改进的贡献最大贡献。

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