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Database Profile

predict β-hairpin motifs

General information

URL: http://202.207.29.251
Full name:
Description: β-Hairpins in enzyme, a kind of special protein with catalytic functions, contain many binding sites which are essential for the functions of enzyme. With the increasing number of observed enzyme protein sequences, it is of especial importance to use bioinformatics techniques to quickly and accurately identify the β-hairpin in enzyme protein for further advanced annotation of structure and function of enzyme. In this work, the proposed method was trained and tested on a non-redundant enzyme β-hairpin database containing 2818 β-hairpins and 1098 non-β-hairpins. With 5-fold cross-validation on the training dataset, the overall accuracy of 90.08% and Matthew's correlation coefficient (Mcc) of 0.74 were obtained, while on the independent test dataset, the overall accuracy of 88.93% and Mcc of 0.76 were achieved. Furthermore, the method was validated on 845 β-hairpins with ligand binding sites. With 5-fold cross-validation on the training dataset and independent test on the test dataset, the overall accuracies were 85.82% (Mcc of 0.71) and 84.78% (Mcc of 0.70), respectively. With an integration of mRMR feature selection and SVM algorithm, a reasonable high accuracy was achieved, indicating the method to be an effective tool for the further studies of β-hairpins in enzymes structure. Additionally, as a novelty for function prediction of enzymes, β-hairpins with ligand binding sites were predicted
Year founded: 2017
Last update:
Version:
Accessibility:
Unaccessible
Country/Region: China

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Contact information

University/Institution: Inner Mongolia University of Technology
Address: College of Sciences, Inner Mongolia University of Technology, Hohhot 010051, China
City: Huhehaote
Province/State: Neimenggu
Country/Region: China
Contact name (PI/Team): Xiuzhen Hu
Contact email (PI/Helpdesk): hxz@imut.edu.cn

Publications

28855832
Using feature optimization-based support vector machine method to recognize the β-hairpin motifs in enzymes. [PMID: 28855832]
Li D, Hu X, Liu X, Feng Z, Ding C.

?-Hairpins in enzyme, a kind of special protein with catalytic functions, contain many binding sites which are essential for the functions of enzyme. With the increasing number of observed enzyme protein sequences, it is of especial importance to use bioinformatics techniques to quickly and accurately identify the ?-hairpin in enzyme protein for further advanced annotation of structure and function of enzyme. In this work, the proposed method was trained and tested on a non-redundant enzyme ?-hairpin database containing 2818 ?-hairpins and 1098 non-?-hairpins. With 5-fold cross-validation on the training dataset, the overall accuracy of 90.08% and Matthew's correlation coefficient (Mcc) of 0.74 were obtained, while on the independent test dataset, the overall accuracy of 88.93% and Mcc of 0.76 were achieved. Furthermore, the method was validated on 845 ?-hairpins with ligand binding sites. With 5-fold cross-validation on the training dataset and independent test on the test dataset, the overall accuracies were 85.82% (Mcc of 0.71) and 84.78% (Mcc of 0.70), respectively. With an integration of mRMR feature selection and SVM algorithm, a reasonable high accuracy was achieved, indicating the method to be an effective tool for the further studies of ?-hairpins in enzymes structure. Additionally, as a novelty for function prediction of enzymes, ?-hairpins with ligand binding sites were predicted. Based on this work, a web server was constructed to predict ?-hairpin motifs in enzymes (http://202.207.29.251:8080/).

Saudi J Biol Sci. 2017:24(6) | 1 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
6767/6895 (1.871%)
Structure:
945/967 (2.378%)
6767
Total Rank
1
Citations
0.125
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Record metadata

Created on: 2018-01-28
Curated by:
Lina Ma [2018-04-23]
Syed Sardar [2018-04-11]
Syed Sardar [2018-04-10]
Yang Zhang [2018-01-28]