Refining protein subcellular localization.

The study of protein subcellular localization is important to elucidate protein function. Even in well-studied organisms such as yeast, experimental methods have not been able to provide a full coverage of localization. The development of bioinformatic predictors of localization can bridge this gap....

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Main Authors: Michelle S Scott, Sara J Calafell, David Y Thomas, Michael T Hallett
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2005-11-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC1289393?pdf=render
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spelling doaj-e5a4ec6138af4cb7be3f6a6f740271b92020-11-24T22:02:03ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582005-11-0116e6610.1371/journal.pcbi.0010066Refining protein subcellular localization.Michelle S ScottSara J CalafellDavid Y ThomasMichael T HallettThe study of protein subcellular localization is important to elucidate protein function. Even in well-studied organisms such as yeast, experimental methods have not been able to provide a full coverage of localization. The development of bioinformatic predictors of localization can bridge this gap. We have created a Bayesian network predictor called PSLT2 that considers diverse protein characteristics, including the combinatorial presence of InterPro motifs and protein interaction data. We compared the localization predictions of PSLT2 to high-throughput experimental localization datasets. Disagreements between these methods generally involve proteins that transit through or reside in the secretory pathway. We used our multi-compartmental predictions to refine the localization annotations of yeast proteins primarily by distinguishing between soluble lumenal proteins and soluble proteins peripherally associated with organelles. To our knowledge, this is the first tool to provide this functionality. We used these sub-compartmental predictions to characterize cellular processes on an organellar scale. The integration of diverse protein characteristics and protein interaction data in an appropriate setting can lead to high-quality detailed localization annotations for whole proteomes. This type of resource is instrumental in developing models of whole organelles that provide insight into the extent of interaction and communication between organelles and help define organellar functionality.http://europepmc.org/articles/PMC1289393?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Michelle S Scott
Sara J Calafell
David Y Thomas
Michael T Hallett
spellingShingle Michelle S Scott
Sara J Calafell
David Y Thomas
Michael T Hallett
Refining protein subcellular localization.
PLoS Computational Biology
author_facet Michelle S Scott
Sara J Calafell
David Y Thomas
Michael T Hallett
author_sort Michelle S Scott
title Refining protein subcellular localization.
title_short Refining protein subcellular localization.
title_full Refining protein subcellular localization.
title_fullStr Refining protein subcellular localization.
title_full_unstemmed Refining protein subcellular localization.
title_sort refining protein subcellular localization.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2005-11-01
description The study of protein subcellular localization is important to elucidate protein function. Even in well-studied organisms such as yeast, experimental methods have not been able to provide a full coverage of localization. The development of bioinformatic predictors of localization can bridge this gap. We have created a Bayesian network predictor called PSLT2 that considers diverse protein characteristics, including the combinatorial presence of InterPro motifs and protein interaction data. We compared the localization predictions of PSLT2 to high-throughput experimental localization datasets. Disagreements between these methods generally involve proteins that transit through or reside in the secretory pathway. We used our multi-compartmental predictions to refine the localization annotations of yeast proteins primarily by distinguishing between soluble lumenal proteins and soluble proteins peripherally associated with organelles. To our knowledge, this is the first tool to provide this functionality. We used these sub-compartmental predictions to characterize cellular processes on an organellar scale. The integration of diverse protein characteristics and protein interaction data in an appropriate setting can lead to high-quality detailed localization annotations for whole proteomes. This type of resource is instrumental in developing models of whole organelles that provide insight into the extent of interaction and communication between organelles and help define organellar functionality.
url http://europepmc.org/articles/PMC1289393?pdf=render
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AT sarajcalafell refiningproteinsubcellularlocalization
AT davidythomas refiningproteinsubcellularlocalization
AT michaelthallett refiningproteinsubcellularlocalization
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