Prasanta Pramanik, J. Das, P. Choudhury
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摘要

在细胞色素A (PPCA)家族蛋白中,只有PPCA蛋白能与脱氧胆酸盐(DXCA)相互作用,其他同源蛋白均不能与DXCA相互作用。本文提出了一种独特的氨基酸编码方案,该方案由六个维度向量组成,其中前三个维度使用氨基酸的化学和物理性质,最后三个维度使用一个数学参数“印象”,该参数先前在解释密码子表的简并性方面非常有效[14]。为了产生“印象”,氨基酸用三元数表示,三元数是按氨基酸的分子量顺序表示的。利用化学性质对氨基酸进行独特编码是我们的首要议程。其次,从嵌入的化学性质出发,结合图论模型,揭示了PPCA能在其同系物之间单独相互作用的原因。
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Studying PPCA and Its Other Homologs in C7 Family towards the Binding with Deoxycholate Based on Unique Encoding of Amino Acids
Among all the proteins of Periplasmic C type cytochrome A (PPCA) family, only PPCA protein can interact with Deoxycholate (DXCA), while its other homologs can not, as observed from the crystal structures. This article presents a unique encoding scheme of amino acids which consists of six dimensional vectors where first three dimensions use the chemical and physical properties of amino acids and last three dimensions use one mathematical parameter "Impression" which has been previously very effective in explaining the degeneracy of Codon Table [14]. For bringing out the "Impression", the amino acids are denoted by ternary numbers which are done using molecular weights of amino acids in order. The use of chemical properties for the purpose of unique encoding of amino acids is our first agenda. Secondly we expose the reason of PPCA being able to interact alone among its homologs with regards to the embedded chemical properties along with graph theoretic model.
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