Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens

<p>Abstract</p> <p>Background</p> <p>In the course of infection, viruses such as HIV-1 must enter a cell, travel to sites where they can hijack host machinery to transcribe their genes and translate their proteins, assemble, and then leave the cell again, all while evad...

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Main Authors: Gomez Shawn M, Doolittle Janet M
Format: Article
Language:English
Published: BMC 2010-04-01
Series:Virology Journal
Online Access:http://www.virologyj.com/content/7/1/82
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spelling doaj-5503efbba7514fffbb5bc038f5a4a35e2020-11-25T01:39:17ZengBMCVirology Journal1743-422X2010-04-01718210.1186/1743-422X-7-82Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiensGomez Shawn MDoolittle Janet M<p>Abstract</p> <p>Background</p> <p>In the course of infection, viruses such as HIV-1 must enter a cell, travel to sites where they can hijack host machinery to transcribe their genes and translate their proteins, assemble, and then leave the cell again, all while evading the host immune system. Thus, successful infection depends on the pathogen's ability to manipulate the biological pathways and processes of the organism it infects. Interactions between HIV-encoded and human proteins provide one means by which HIV-1 can connect into cellular pathways to carry out these survival processes.</p> <p>Results</p> <p>We developed and applied a computational approach to predict interactions between HIV and human proteins based on structural similarity of 9 HIV-1 proteins to human proteins having known interactions. Using functional data from RNAi studies as a filter, we generated over 2000 interaction predictions between HIV proteins and 406 unique human proteins. Additional filtering based on Gene Ontology cellular component annotation reduced the number of predictions to 502 interactions involving 137 human proteins. We find numerous known interactions as well as novel interactions showing significant functional relevance based on supporting Gene Ontology and literature evidence.</p> <p>Conclusions</p> <p>Understanding the interplay between HIV-1 and its human host will help in understanding the viral lifecycle and the ways in which this virus is able to manipulate its host. The results shown here provide a potential set of interactions that are amenable to further experimental manipulation as well as potential targets for therapeutic intervention.</p> http://www.virologyj.com/content/7/1/82
collection DOAJ
language English
format Article
sources DOAJ
author Gomez Shawn M
Doolittle Janet M
spellingShingle Gomez Shawn M
Doolittle Janet M
Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
Virology Journal
author_facet Gomez Shawn M
Doolittle Janet M
author_sort Gomez Shawn M
title Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
title_short Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
title_full Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
title_fullStr Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
title_full_unstemmed Structural similarity-based predictions of protein interactions between HIV-1 and Homo sapiens
title_sort structural similarity-based predictions of protein interactions between hiv-1 and homo sapiens
publisher BMC
series Virology Journal
issn 1743-422X
publishDate 2010-04-01
description <p>Abstract</p> <p>Background</p> <p>In the course of infection, viruses such as HIV-1 must enter a cell, travel to sites where they can hijack host machinery to transcribe their genes and translate their proteins, assemble, and then leave the cell again, all while evading the host immune system. Thus, successful infection depends on the pathogen's ability to manipulate the biological pathways and processes of the organism it infects. Interactions between HIV-encoded and human proteins provide one means by which HIV-1 can connect into cellular pathways to carry out these survival processes.</p> <p>Results</p> <p>We developed and applied a computational approach to predict interactions between HIV and human proteins based on structural similarity of 9 HIV-1 proteins to human proteins having known interactions. Using functional data from RNAi studies as a filter, we generated over 2000 interaction predictions between HIV proteins and 406 unique human proteins. Additional filtering based on Gene Ontology cellular component annotation reduced the number of predictions to 502 interactions involving 137 human proteins. We find numerous known interactions as well as novel interactions showing significant functional relevance based on supporting Gene Ontology and literature evidence.</p> <p>Conclusions</p> <p>Understanding the interplay between HIV-1 and its human host will help in understanding the viral lifecycle and the ways in which this virus is able to manipulate its host. The results shown here provide a potential set of interactions that are amenable to further experimental manipulation as well as potential targets for therapeutic intervention.</p>
url http://www.virologyj.com/content/7/1/82
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