Cargando…

The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning

A system was developed to evaluate and predict the interaction between protein pairs by using the widely used shape complementarity search method as the algorithm for docking simulations between the proteins. We used this system, which we call the affinity evaluation and prediction (AEP) system, to...

Descripción completa

Detalles Bibliográficos
Autores principales: Tsukamoto, Koki, Yoshikawa, Tatsuya, Yokota, Kiyonobu, Hourai, Yuichiro, Fukui, Kazuhiko
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove Medical Press 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3169950/
https://www.ncbi.nlm.nih.gov/pubmed/21918611
_version_ 1782211554211528704
author Tsukamoto, Koki
Yoshikawa, Tatsuya
Yokota, Kiyonobu
Hourai, Yuichiro
Fukui, Kazuhiko
author_facet Tsukamoto, Koki
Yoshikawa, Tatsuya
Yokota, Kiyonobu
Hourai, Yuichiro
Fukui, Kazuhiko
author_sort Tsukamoto, Koki
collection PubMed
description A system was developed to evaluate and predict the interaction between protein pairs by using the widely used shape complementarity search method as the algorithm for docking simulations between the proteins. We used this system, which we call the affinity evaluation and prediction (AEP) system, to evaluate the interaction between 20 protein pairs. The system first executes a “round robin” shape complementarity search of the target protein group, and evaluates the interaction between the complex structures obtained by the search. These complex structures are selected by using a statistical procedure that we developed called ‘grouping’. At a prevalence of 5.0%, our AEP system predicted protein–protein interactions with a 50.0% recall, 55.6% precision, 95.5% accuracy, and an F-measure of 0.526. By optimizing the grouping process, our AEP system successfully predicted 10 protein pairs (among 20 pairs) that were biologically relevant combinations. Our ultimate goal is to construct an affinity database that will provide cell biologists and drug designers with crucial information obtained using our AEP system.
format Online
Article
Text
id pubmed-3169950
institution National Center for Biotechnology Information
language English
publishDate 2009
publisher Dove Medical Press
record_format MEDLINE/PubMed
spelling pubmed-31699502011-09-14 The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning Tsukamoto, Koki Yoshikawa, Tatsuya Yokota, Kiyonobu Hourai, Yuichiro Fukui, Kazuhiko Adv Appl Bioinforma Chem Original Research A system was developed to evaluate and predict the interaction between protein pairs by using the widely used shape complementarity search method as the algorithm for docking simulations between the proteins. We used this system, which we call the affinity evaluation and prediction (AEP) system, to evaluate the interaction between 20 protein pairs. The system first executes a “round robin” shape complementarity search of the target protein group, and evaluates the interaction between the complex structures obtained by the search. These complex structures are selected by using a statistical procedure that we developed called ‘grouping’. At a prevalence of 5.0%, our AEP system predicted protein–protein interactions with a 50.0% recall, 55.6% precision, 95.5% accuracy, and an F-measure of 0.526. By optimizing the grouping process, our AEP system successfully predicted 10 protein pairs (among 20 pairs) that were biologically relevant combinations. Our ultimate goal is to construct an affinity database that will provide cell biologists and drug designers with crucial information obtained using our AEP system. Dove Medical Press 2009-01-12 /pmc/articles/PMC3169950/ /pubmed/21918611 Text en © 2009 Tsukamoto et al, publisher and licensee Dove Medical Press Ltd. This is an Open Access article which permits unrestricted noncommercial use, provided the original work is properly cited.
spellingShingle Original Research
Tsukamoto, Koki
Yoshikawa, Tatsuya
Yokota, Kiyonobu
Hourai, Yuichiro
Fukui, Kazuhiko
The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title_full The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title_fullStr The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title_full_unstemmed The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title_short The development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
title_sort development of an affinity evaluation and prediction system by using protein–protein docking simulations and parameter tuning
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3169950/
https://www.ncbi.nlm.nih.gov/pubmed/21918611
work_keys_str_mv AT tsukamotokoki thedevelopmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT yoshikawatatsuya thedevelopmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT yokotakiyonobu thedevelopmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT houraiyuichiro thedevelopmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT fukuikazuhiko thedevelopmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT tsukamotokoki developmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT yoshikawatatsuya developmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT yokotakiyonobu developmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT houraiyuichiro developmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning
AT fukuikazuhiko developmentofanaffinityevaluationandpredictionsystembyusingproteinproteindockingsimulationsandparametertuning