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Protein Fold Prediction In the Context of Fine-Grained Classifications

机译:蛋白质折叠预测在细粒度的分类中

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Predicting a protein fold and implied function from the amino acid sequence is a problem of great interest. We have developed a neural networks (NN) based expert system which, given a classification of protein folds, can assign a protein to a folding class using primary sequence data. It addresses the inverse protein folding problem fro ma taxonometric rathre than threadign perspective. Recent classifications suggest the existence of approx 80-350 differnet folds. The occurrence of several representatives for each fold allows extraction of the common features of its members. Our method (i) provides a global description of a protein sequence in terms of the biochemical and structural properties of the constituent amino acids, (ii) combines the descriptors usign Nns allowing discrimination of members of a given folding class from members of all other folding classes and (iii) uses a voting procedure among predictions based on differnet descriptors to decide on the final assignment.
机译:预测来自氨基酸序列的蛋白质折叠和隐含功能是极大兴趣的问题。我们开发了一种基于神经网络(NN)的专家系统,其给定蛋白质折叠的分类,可以使用主要序列数据将蛋白质分配给折叠类。它地址逆蛋白质折叠问题而不是线性角度来看MA Caraonononometric Rathre。最近的分类表明存在大约80-350个不同的折叠。每个折叠的几个代表的发生允许提取其成员的共同特征。我们的方法(i)在组成氨基酸的生物化学和结构特性方面提供了蛋白质序列的全球描述,(ii)结合了USIGN NNS允许从所有其他折叠成员辨别给定折叠类的成员类和(iii)在基于不同的描述符的预测中使用投票过程来决定最终分配。

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