Recognition and analysis of protein-coding genes in severe acute respiratory syndrome associated coronavirus

Sharma, Ramakant ; Maheshwari, Jitendra Kumar ; Prakash, Tulika ; Dash, Debasis ; Brahmachari, Samir K. (2004) Recognition and analysis of protein-coding genes in severe acute respiratory syndrome associated coronavirus Bioinformatics, 20 (7). pp. 1074-1080. ISSN 1367-4803

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Abstract

Motivation: The recent outbreak of severe acute respiratory syndrome (SARS) caused by SARS coronavirus (SARS-CoV) has necessitated an in-depth molecular understanding of the virus to identify new drug targets. The availability of complete genome sequence of several strains of SARS virus provides the possibility of identification of protein-coding genes and defining their functions. Computational approach to identify protein-coding genes and their putative functions will help in designing experimental protocols. Results: In this paper, a novel analysis of SARS genome using gene prediction method GeneDecipher developed in our laboratory has been presented. Each of the 18 newly sequenced SARS-CoV genomes has been analyzed using GeneDecipher. In addition to polyprotein 1ab*, polyprotein 1a and the four genes coding for major structural proteins spike (S), small envelope (E), membrane (M) and nucleocapsid (N), six to eight additional proteins have been predicted depending upon the strain analyzed. Their lengths range between 61 and 274 amino acids. Our method also suggests that polyprotein 1ab, polyprotein 1a, S, M and N are proteins of viral origin and others are of prokaryotic. Putative functions of all predicted protein-coding genes have been suggested using conserved peptides present in their open reading frames.

Item Type:Article
Source:Copyright of this article belongs to Oxford University Press.
ID Code:6413
Deposited On:20 Oct 2010 10:27
Last Modified:16 May 2016 16:45

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