MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins

<p>Abstract</p> <p>Background</p> <p>Intrinsically unstructured proteins (IUPs) lack a well-defined three-dimensional structure. Some of them may assume a locally stable structure under specific conditions, e.g. upon interaction with another molecule, while others funct...

Full description

Bibliographic Details
Main Authors: Kozlowski Lukasz P, Bujnicki Janusz M
Format: Article
Language:English
Published: BMC 2012-05-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/13/111
_version_ 1818556653930283008
author Kozlowski Lukasz P
Bujnicki Janusz M
author_facet Kozlowski Lukasz P
Bujnicki Janusz M
author_sort Kozlowski Lukasz P
collection DOAJ
description <p>Abstract</p> <p>Background</p> <p>Intrinsically unstructured proteins (IUPs) lack a well-defined three-dimensional structure. Some of them may assume a locally stable structure under specific conditions, e.g. upon interaction with another molecule, while others function in a permanently unstructured state. The discovery of IUPs challenged the traditional protein structure paradigm, which stated that a specific well-defined structure defines the function of the protein. As of December 2011, approximately 60 methods for computational prediction of protein disorder from sequence have been made publicly available. They are based on different approaches, such as utilizing evolutionary information, energy functions, and various statistical and machine learning methods.</p> <p>Results</p> <p>Given the diversity of existing intrinsic disorder prediction methods, we decided to test whether it is possible to combine them into a more accurate meta-prediction method. We developed a method based on arbitrarily chosen 13 disorder predictors, in which the final consensus was weighted by the accuracy of the methods. We have also developed a disorder predictor GSmetaDisorder3D that used no third-party disorder predictors, but alignments to known protein structures, reported by the protein fold-recognition methods, to infer the potentially structured and unstructured regions. Following the success of our disorder predictors in the CASP8 benchmark, we combined them into a meta-meta predictor called GSmetaDisorderMD, which was the top scoring method in the subsequent CASP9 benchmark.</p> <p>Conclusions</p> <p>A series of disorder predictors described in this article is available as a MetaDisorder web server at <url>http://iimcb.genesilico.pl/metadisorder/</url>. Results are presented both in an easily interpretable, interactive mode and in a simple text format suitable for machine processing.</p>
first_indexed 2024-12-13T23:50:02Z
format Article
id doaj.art-68d886a19bfc4acc979d48f11eba964e
institution Directory Open Access Journal
issn 1471-2105
language English
last_indexed 2024-12-13T23:50:02Z
publishDate 2012-05-01
publisher BMC
record_format Article
series BMC Bioinformatics
spelling doaj.art-68d886a19bfc4acc979d48f11eba964e2022-12-21T23:26:48ZengBMCBMC Bioinformatics1471-21052012-05-0113111110.1186/1471-2105-13-111MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteinsKozlowski Lukasz PBujnicki Janusz M<p>Abstract</p> <p>Background</p> <p>Intrinsically unstructured proteins (IUPs) lack a well-defined three-dimensional structure. Some of them may assume a locally stable structure under specific conditions, e.g. upon interaction with another molecule, while others function in a permanently unstructured state. The discovery of IUPs challenged the traditional protein structure paradigm, which stated that a specific well-defined structure defines the function of the protein. As of December 2011, approximately 60 methods for computational prediction of protein disorder from sequence have been made publicly available. They are based on different approaches, such as utilizing evolutionary information, energy functions, and various statistical and machine learning methods.</p> <p>Results</p> <p>Given the diversity of existing intrinsic disorder prediction methods, we decided to test whether it is possible to combine them into a more accurate meta-prediction method. We developed a method based on arbitrarily chosen 13 disorder predictors, in which the final consensus was weighted by the accuracy of the methods. We have also developed a disorder predictor GSmetaDisorder3D that used no third-party disorder predictors, but alignments to known protein structures, reported by the protein fold-recognition methods, to infer the potentially structured and unstructured regions. Following the success of our disorder predictors in the CASP8 benchmark, we combined them into a meta-meta predictor called GSmetaDisorderMD, which was the top scoring method in the subsequent CASP9 benchmark.</p> <p>Conclusions</p> <p>A series of disorder predictors described in this article is available as a MetaDisorder web server at <url>http://iimcb.genesilico.pl/metadisorder/</url>. Results are presented both in an easily interpretable, interactive mode and in a simple text format suitable for machine processing.</p>http://www.biomedcentral.com/1471-2105/13/111
spellingShingle Kozlowski Lukasz P
Bujnicki Janusz M
MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
BMC Bioinformatics
title MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
title_full MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
title_fullStr MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
title_full_unstemmed MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
title_short MetaDisorder: a meta-server for the prediction of intrinsic disorder in proteins
title_sort metadisorder a meta server for the prediction of intrinsic disorder in proteins
url http://www.biomedcentral.com/1471-2105/13/111
work_keys_str_mv AT kozlowskilukaszp metadisorderametaserverforthepredictionofintrinsicdisorderinproteins
AT bujnickijanuszm metadisorderametaserverforthepredictionofintrinsicdisorderinproteins