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Optimizing amino acid groupings for GPCR classification

机译:优化用于GPCR分类的氨基酸分组

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摘要

Motivation: There is much interest in reducing the complexity inherent in the representation of the 20 standard amino acids within bioinformatics algorithms by developing a so-called reduced alphabet. Although there is no universally applicable residue grouping, there are numerous physiochemical criteria upon which one can base groupings. Local descriptors are a form of alignment-free analysis, the efficiency of which is dependent upon the correct selection of amino acid groupings.\udResults: Within the context of G-protein coupled receptor (GPCR) classification, an optimization algorithm was developed, which was able to identify the most efficient grouping when used to generate local descriptors. The algorithm was inspired by the relatively new computational intelligence paradigm of artificial immune systems. A number of amino acid groupings produced by this algorithm were evaluated with respect to their ability to generate local descriptors capable of providing an accurate classification algorithm for GPCRs.
机译:动机:通过开发所谓的简化字母来降低生物信息学算法中20种标准氨基酸表示所固有的复杂性引起了人们极大的兴趣。尽管没有普遍适用的残基分组,但是有许多理化标准可以作为分组依据。局部描述符是无比对分析的一种形式,其效率取决于氨基酸组的正确选择。\ ud结果:在G蛋白偶联受体(GPCR)分类的背景下,开发了一种优化算法,该算法当用于生成本地描述符时,能够识别出最有效的分组。该算法的灵感来自相对较新的人工免疫系统的计算智能范式。评估了由该算法产生的许多氨基酸组的生成本地描述符的能力,这些描述符能够为GPCR提供准确的分类算法。

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