Investigating primary sequence and structural features of viral proteins/genes has revealed molecular mimicry and evolutionary relationship linking viruses to eukaryotes. The continuous improvement in sequencing-techniques makes available almost daily the whole genome/proteome of several microorganisms, making now possible systematic analyses of evolutionary correlations and accurate phylogeny investigations. In the present study we set up a methodology to identify significant and relevant similarities between viral and human proteomes. To this aim, the following steps were applied: i) identification of local similarity corresponding to continuous identity over at least 8-residues long fragments; ii) filtering results for statistical significance of the identified similarities, according to BLAST parameters for short sequences; iii) additional filters applied to the BLAST outputs, to select specific viruses. The present study indicates a novel accurate methodology to find relevant similarities among virus and human proteomes, useful to further investigate pathogenic mechanisms underlying infectious and non-infectious diseases.

A computational strategy to investigate relevant similarities between virus and human proteins: Local high similarities between herpes and human proteins / Marabotti, A; Cirielli, C; D'Arcangelo, Da; Giampietri, Claudia; Facchiano, F; Facchiano, A; Facchiano, Am. - (2011), pp. 183-188. (Intervento presentato al convegno International Conference on Bioinformatics Models, Methods and Algorithms, BIOINFORMATICS 2011 tenutosi a Rome; Italy).

A computational strategy to investigate relevant similarities between virus and human proteins: Local high similarities between herpes and human proteins.

GIAMPIETRI, Claudia;
2011

Abstract

Investigating primary sequence and structural features of viral proteins/genes has revealed molecular mimicry and evolutionary relationship linking viruses to eukaryotes. The continuous improvement in sequencing-techniques makes available almost daily the whole genome/proteome of several microorganisms, making now possible systematic analyses of evolutionary correlations and accurate phylogeny investigations. In the present study we set up a methodology to identify significant and relevant similarities between viral and human proteomes. To this aim, the following steps were applied: i) identification of local similarity corresponding to continuous identity over at least 8-residues long fragments; ii) filtering results for statistical significance of the identified similarities, according to BLAST parameters for short sequences; iii) additional filters applied to the BLAST outputs, to select specific viruses. The present study indicates a novel accurate methodology to find relevant similarities among virus and human proteomes, useful to further investigate pathogenic mechanisms underlying infectious and non-infectious diseases.
2011
International Conference on Bioinformatics Models, Methods and Algorithms, BIOINFORMATICS 2011
Autoimmunity; Local similarity; Molecular mimicry
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
A computational strategy to investigate relevant similarities between virus and human proteins: Local high similarities between herpes and human proteins / Marabotti, A; Cirielli, C; D'Arcangelo, Da; Giampietri, Claudia; Facchiano, F; Facchiano, A; Facchiano, Am. - (2011), pp. 183-188. (Intervento presentato al convegno International Conference on Bioinformatics Models, Methods and Algorithms, BIOINFORMATICS 2011 tenutosi a Rome; Italy).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/489519
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