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Detailed protein sequence alignment based on Spectral Similarity Score (SSS)

机译:基于光谱相似性评分(SSS)的详细蛋白质序列比对

摘要

Background: The chemical property and biological function of a protein is a direct consequence of its primary structure. Several algorithms have been developed which determine alignment and similarity of primary protein sequences. However, character based similarity cannot provide insight into the structural aspects of a protein. We present a method based on spectral similarity to compare subsequences of amino acids that behave similarly but are not aligned well by considering amino acids as mere characters. This approach finds a similarity score between sequences based on any given attribute, like hydrophobicity of amino acids, on the basis of spectral information after partial conversion to the frequency domain.ududResults: Distance matrices of various branches of the human kinome, that is the full complement of human kinases, were developed that matched the phylogenetic tree of the human kinome establishing the efficacy of the global alignment of the algorithm. PKCd and PKCe kinases share close biological properties and structural similarities but do not give high scores with character based alignments. Detailed comparison established close similarities between subsequences that do not have any significant character identity. We compared their known 3D structures to establish that the algorithm is able to pick subsequences that are not considered similar by character based matching algorithms but share structural similarities. Similarly many subsequences with low character identity were picked between xyna-theau and xyna-clotm F/10 xylanases. Comparison of 3D structures of the subsequences confirmed the claim of similarity in structure.ududConclusion: An algorithm is developed which is inspired by successful application of spectral similarity applied to music sequences. The method captures subsequences that do not align by traditional character based alignment tools but give rise to similar secondary and tertiary structures. The Spectral Similarity Score (SSS) is an extension to the conventional similarity methods and results indicate that it holds a strong potential for analysis of various biological sequences and structural variations in proteins.
机译:背景:蛋白质的化学性质和生物学功能是其一级结构的直接结果。已经开发了几种确定初级蛋白质序列的比对和相似性的算法。但是,基于字符的相似性无法提供对蛋白质结构方面的了解。我们提出了一种基于光谱相似性的方法,通过将氨基酸视为单纯的字符来比较行为相似但排列不正确的氨基酸的子序列。该方法基于部分给定频域转换后的​​光谱信息,根据任何给定的属性(如氨基酸的疏水性)在序列之间找到相似度得分。 ud ud结果:人类kinome各个分支的距离矩阵是人激酶的完整补充,已开发出与人kinome的系统树匹配的算法,从而建立了算法整体比对的功效。 PKCd和PKCe激酶具有紧密的生物学特性和结构相似性,但基于特征的比对却无法获得高分。详细的比较在没有任何重要字符标识的子序列之间建立了紧密的相似性。我们比较了他们的已知3D结构,以确定该算法能够选择基于字符的匹配算法认为不相似但共享结构相似性的子序列。类似地,在xyna-theau和xyna-clotm F / 10木聚糖酶之间选择了许多具有较低字符同一性的子序列。子序列的3D结构比较证实了结构相似性。 ud ud结论:开发了一种算法,该算法的灵感是成功地将频谱相似性应用于音乐序列。该方法捕获的子序列不能通过传统的基于字符的对齐工具对齐,但是会产生相似的二级和三级结构。光谱相似性评分(SSS)是常规相似性方法的扩展,结果表明,它具有分析各种生物序列和蛋白质结构变异的强大潜力。

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