基于人工神经网络的蛋白质结构类预测性能评价

Bishnupriya Panda, A. P. Mishra, B. Majhi, M. Rout
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引用次数: 0

摘要

蛋白质结构类的预测是近十年来科学界研究的一个新领域。采用和分析了各种方法。然而,表示原氨基酸序列以保持蛋白质的特性是一个很大的挑战。Chou的伪氨基酸组成特征表示方法在这方面引起了广泛关注。在Chou的表示中,每个蛋白质分子都被表示为氨基酸组成信息、两亲性相关因子和蛋白质光谱特征的组合。该方法既保留了原氨基酸序列的顺序信息,又保留了原氨基酸序列的长度信息,对预测具有重要意义。利用功能链接人工网络(FLANN)进行的一组详尽仿真研究表明,该方法具有较高的分类成功率。在基准数据集上进行了自一致性和折刀测试,并与径向基函数(RBF)神经网络的结果进行了比较。结果表明,FLANN模型的精度略低于RBF模型,但其复杂度非常低;RBF模型的精度略高于FLANN模型,但其复杂度高于FLANN模型。
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Performance evaluation of protein structural class prediction using artificial neural networks
Prediction of protein structural class has been a new area of research in the scientific community in the last decade. Various approaches has been adopted and analysed. However representing the raw amino acid sequence to preserve the property of proteins has posed a great challenge. Chou's pseudo amino acid composition feature representation method has fetched wide attention in this regard. In Chou's representation each protein molecule is represented as the combination of amino acid composition information, the amphiphillic correlation factors and the spectral characteristics of the protein. This method preserves both the sequence order and length information of the raw amino acid sequence and this plays a significant role in prediction. A set of exhaustive simulation studies with functional link artificial network(FLANN) demonstrates high success rate of classification. The self-consistency and jackknife test on the benchmark datasets has been performed and a comparison has been done with the results of radial basis function (RBF) neural network. It indicates that the FLANN model's accuracy is little less than RBF, but its complexity is very less whereas the accuracy of RBF is little higher, but it's complexity is high in comparison to FLANN.
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