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Analysis of genome signature strength of SARS coronavirus using Self-Organizing Map neural network

机译:自组织图神经网络分析SARS冠状病毒的基因组签名强度

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The nucleotide usage patterns vary not only from organism to organism, but also between genes in the same genome. Each genome has its own characteristics. This unique identity, called genome signature, of a genome is multidimensional. One of the ways to probe into this area is to analyze the nucleotide sequence composition of the genome. In this paper, the nucleotide compositional structure of SARS Corona virus which is the cause of the Severe Acute Respiratory Syndrome (SARS) is analyzed. Both the mono, di and tri nucleotides compositions are explored to find out the genomic nucleotide pattern. The Kohonen's self-organizing map neural network model is used as a tool to analyze the strengths of different nucleotide signatures of the genome. The analysis reveals that SARS virus is Thymine dominated, AT-rich and has the dinucleotide signature as qualitatively best signature, although codon and RSCU based SOM results in clearer cluster maps.
机译:核苷酸的使用方式不仅因生物而异,而且在同一基因组中的基因之间也不同。每个基因组都有其自己的特征。基因组的这种独特身份(称为基因组签名)是多维的。探查该区域的方法之一是分析基因组的核苷酸序列组成。本文分析了严重急性呼吸系统综合症(SARS)的SARS冠状病毒的核苷酸组成结构。探索单核苷酸,双核苷酸和三核苷酸组成,以找出基因组核苷酸模式。 Kohonen的自组织图神经网络模型被用作分析基因组不同核苷酸特征的强度的工具。分析表明,尽管基于密码子和RSCU的SOM可产生更清晰的簇图,但SARS病毒以胸腺嘧啶为主,富含AT,并具有定性最佳的二核苷酸签名。

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