Cargando…

An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins

Zinc-binding proteins are the most abundant metalloproteins in the Protein Data Bank where the zinc ions usually have catalytic, regulatory or structural roles critical for the function of the protein. Accurate prediction of zinc-binding sites is not only useful for the inference of protein function...

Descripción completa

Detalles Bibliográficos
Autores principales: Zheng, Cheng, Wang, Mingjun, Takemoto, Kazuhiro, Akutsu, Tatsuya, Zhang, Ziding, Song, Jiangning
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3499040/
https://www.ncbi.nlm.nih.gov/pubmed/23166753
http://dx.doi.org/10.1371/journal.pone.0049716
_version_ 1782249900064374784
author Zheng, Cheng
Wang, Mingjun
Takemoto, Kazuhiro
Akutsu, Tatsuya
Zhang, Ziding
Song, Jiangning
author_facet Zheng, Cheng
Wang, Mingjun
Takemoto, Kazuhiro
Akutsu, Tatsuya
Zhang, Ziding
Song, Jiangning
author_sort Zheng, Cheng
collection PubMed
description Zinc-binding proteins are the most abundant metalloproteins in the Protein Data Bank where the zinc ions usually have catalytic, regulatory or structural roles critical for the function of the protein. Accurate prediction of zinc-binding sites is not only useful for the inference of protein function but also important for the prediction of 3D structure. Here, we present a new integrative framework that combines multiple sequence and structural properties and graph-theoretic network features, followed by an efficient feature selection to improve prediction of zinc-binding sites. We investigate what information can be retrieved from the sequence, structure and network levels that is relevant to zinc-binding site prediction. We perform a two-step feature selection using random forest to remove redundant features and quantify the relative importance of the retrieved features. Benchmarking on a high-quality structural dataset containing 1,103 protein chains and 484 zinc-binding residues, our method achieved >80% recall at a precision of 75% for the zinc-binding residues Cys, His, Glu and Asp on 5-fold cross-validation tests, which is a 10%-28% higher recall at the 75% equal precision compared to SitePredict and zincfinder at residue level using the same dataset. The independent test also indicates that our method has achieved recall of 0.790 and 0.759 at residue and protein levels, respectively, which is a performance better than the other two methods. Moreover, AUC (the Area Under the Curve) and AURPC (the Area Under the Recall-Precision Curve) by our method are also respectively better than those of the other two methods. Our method can not only be applied to large-scale identification of zinc-binding sites when structural information of the target is available, but also give valuable insights into important features arising from different levels that collectively characterize the zinc-binding sites. The scripts and datasets are available at http://protein.cau.edu.cn/zincidentifier/.
format Online
Article
Text
id pubmed-3499040
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-34990402012-11-19 An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins Zheng, Cheng Wang, Mingjun Takemoto, Kazuhiro Akutsu, Tatsuya Zhang, Ziding Song, Jiangning PLoS One Research Article Zinc-binding proteins are the most abundant metalloproteins in the Protein Data Bank where the zinc ions usually have catalytic, regulatory or structural roles critical for the function of the protein. Accurate prediction of zinc-binding sites is not only useful for the inference of protein function but also important for the prediction of 3D structure. Here, we present a new integrative framework that combines multiple sequence and structural properties and graph-theoretic network features, followed by an efficient feature selection to improve prediction of zinc-binding sites. We investigate what information can be retrieved from the sequence, structure and network levels that is relevant to zinc-binding site prediction. We perform a two-step feature selection using random forest to remove redundant features and quantify the relative importance of the retrieved features. Benchmarking on a high-quality structural dataset containing 1,103 protein chains and 484 zinc-binding residues, our method achieved >80% recall at a precision of 75% for the zinc-binding residues Cys, His, Glu and Asp on 5-fold cross-validation tests, which is a 10%-28% higher recall at the 75% equal precision compared to SitePredict and zincfinder at residue level using the same dataset. The independent test also indicates that our method has achieved recall of 0.790 and 0.759 at residue and protein levels, respectively, which is a performance better than the other two methods. Moreover, AUC (the Area Under the Curve) and AURPC (the Area Under the Recall-Precision Curve) by our method are also respectively better than those of the other two methods. Our method can not only be applied to large-scale identification of zinc-binding sites when structural information of the target is available, but also give valuable insights into important features arising from different levels that collectively characterize the zinc-binding sites. The scripts and datasets are available at http://protein.cau.edu.cn/zincidentifier/. Public Library of Science 2012-11-14 /pmc/articles/PMC3499040/ /pubmed/23166753 http://dx.doi.org/10.1371/journal.pone.0049716 Text en © 2012 Zheng et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Zheng, Cheng
Wang, Mingjun
Takemoto, Kazuhiro
Akutsu, Tatsuya
Zhang, Ziding
Song, Jiangning
An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title_full An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title_fullStr An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title_full_unstemmed An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title_short An Integrative Computational Framework Based on a Two-Step Random Forest Algorithm Improves Prediction of Zinc-Binding Sites in Proteins
title_sort integrative computational framework based on a two-step random forest algorithm improves prediction of zinc-binding sites in proteins
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3499040/
https://www.ncbi.nlm.nih.gov/pubmed/23166753
http://dx.doi.org/10.1371/journal.pone.0049716
work_keys_str_mv AT zhengcheng anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT wangmingjun anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT takemotokazuhiro anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT akutsutatsuya anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT zhangziding anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT songjiangning anintegrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT zhengcheng integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT wangmingjun integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT takemotokazuhiro integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT akutsutatsuya integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT zhangziding integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins
AT songjiangning integrativecomputationalframeworkbasedonatwosteprandomforestalgorithmimprovespredictionofzincbindingsitesinproteins