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Predicting protein structural classes with pseudo amino acid composition: an approach using geometric moments of cellular automaton image.

机译:用伪氨基酸组成预测蛋白质结构类别:一种使用细胞自动机图像的几何矩的方法。

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摘要

A novel approach was developed for predicting the structural classes of proteins based on their sequences. It was assumed that proteins belonging to the same structural class must bear some sort of similar texture on the images generated by the cellular automaton evolving rule [Wolfram, S., 1984. Cellular automation as models of complexity. Nature 311, 419-424]. Based on this, two geometric invariant moment factors derived from the image functions were used as the pseudo amino acid components [Chou, K.C., 2001. Prediction of protein cellular attributes using pseudo amino acid composition. Proteins: Struct., Funct., Genet. (Erratum: ibid., 2001, vol. 44, 60) 43, 246-255] to formulate the protein samples for statistical prediction. The success rates thus obtained on a previously constructed benchmark dataset are quite promising, implying that the cellular automaton image can help to reveal some inherent and subtle features deeply hidden in a pile of long and complicated amino acid sequences.
机译:开发了一种新颖的方法来根据其序列预测蛋白质的结构类别。假定属于相同结构类别的蛋白质必须在由细胞自动机进化规则生成的图像上具有某种相似的质地[Wolfram,S.,1984。细胞自动化是复杂性的模型。 Nature 311,419-424]。基于此,将来自图像函数的两个几何不变矩因子用作伪氨基酸成分[Chou,K.C.,2001。使用伪氨基酸组成预测蛋白质细胞属性。蛋白质:结构,功能,基因。 (Erratum:同上,2001,vol.44,60)43,246-255]以配制用于统计预测的蛋白质样品。因此,在先前构建的基准数据集上获得的成功率是非常有希望的,这意味着细胞自动机图像可以帮助揭示深深隐藏在一堆长而复杂的氨基酸序列中的某些固有和微妙的特征。

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