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An optimization approach to predicting protein structural class from amino acid composition.

机译:一种从氨基酸组成预测蛋白质结构分类的优化方法。

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摘要

Proteins are generally classified into four structural classes: all-alpha proteins, all-beta proteins, alpha + beta proteins, and alpha/beta proteins. In this article, a protein is expressed as a vector of 20-dimensional space, in which its 20 components are defined by the composition of its 20 amino acids. Based on this, a new method, the so-called maximum component coefficient method, is proposed for predicting the structural class of a protein according to its amino acid composition. In comparison with the existing methods, the new method yields a higher general accuracy of prediction. Especially for the all-alpha proteins, the rate of correct prediction obtained by the new method is much higher than that by any of the existing methods. For instance, for the 19 all-alpha proteins investigated previously by P.Y. Chou, the rate of correct prediction by means of his method was 84.2%, but the correct rate when predicted with the new method would be 100%! Furthermore, the new method is characterized by an explicable physical picture. This is reflected by the process in which the vector representing a protein to be predicted is decomposed into four component vectors, each of which corresponds to one of the norms of the four protein structural classes.
机译:蛋白质通常分为四个结构类别:全α蛋白质,全β蛋白质,α+β蛋白质和α/β蛋白质。在本文中,蛋白质被表示为20维空间的载体,其中20种成分由其20个氨基酸的组成来定义。基于此,提出了一种新方法,即所谓的最大成分系数法,用于根据蛋白质的氨基酸组成预测蛋白质的结构类别。与现有方法相比,新方法具有更高的一般预测精度。特别是对于全α蛋白,通过新方法获得的正确预测率要比通过任何现有方法获得的正确率高得多。例如,对于P.Y.先前研究的19种全α蛋白。周,用他的方法预测的正确率是84.2%,但是用新方法预测的正确率是100%!此外,新方法的特征在于可解释的物理图像。这反映在以下过程中:代表待预测蛋白质的载体被分解为四个成分载体,每个成分载体对应于四个蛋白质结构类别的规范之一。

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