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BindN: a web-based tool for efficient prediction of DNA and RNA binding sites in amino acid sequences

机译:BindN:基于网络的工具,可有效预测氨基酸序列中的DNA和RNA结合位点

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BindN (http://bioinformatics.ksu.edu/bindn/) takes an amino acid sequence as input and predicts potential DNA or RNA-binding residues with support vector machines (SVMs). Protein datasets with known DNA or RNA-binding residues were selected from the Protein Data Bank (PDB), and SVM models were constructed using data instances encoded with three sequence features, including the side chain pKa value, hydrophobicity index and molecular mass of an amino acid. The results suggest that DNA-binding residues can be predicted at 69.40% sensitivity and 70.47% specificity, while prediction of RNA-binding residues achieves 66.28% sensitivity and 69.84% specificity. When compared with previous studies, the SVM models appear to be more accurate and more efficient for online predictions. BindN provides a useful tool for understanding the function of DNA and RNA-binding proteins based on primary sequence data.
机译:BindN(http://bioinformatics.ksu.edu/bindn/)将氨基酸序列作为输入,并使用支持向量机(SVM)预测潜在的DNA或RNA结合残基。从蛋白质数据库(PDB)中选择具有已知DNA或RNA结合残基的蛋白质数据集,并使用编码有三个序列特征(包括侧链pK a 值)的数据实例构建SVM模型疏水性指数和氨基酸的分子量。结果表明,可以预测DNA结合残基的灵敏度为69.40%,特异性为70.47%,而预测RNA结合残基的灵敏度为66.28%,特异性为69.84%。与以前的研究相比,SVM模型对于在线预测似乎更准确,更有效。 BindN提供了一个有用的工具,用于根据一级序列数据了解DNA和RNA结合蛋白的功能。

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