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Identifying multi-functional bioactive peptide functions using multi-label deep learning

Identifying multi-functional bioactive peptide functions using multi-label deep learning

https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_proquest_miscellaneous_2582808142

Identifying multi-functional bioactive peptide functions using multi-label deep learning

About this item

Full title

Identifying multi-functional bioactive peptide functions using multi-label deep learning

Publisher

England: Oxford University Press

Journal title

Briefings in bioinformatics, 2022-01, Vol.23 (1)

Language

English

Formats

Publication information

Publisher

England: Oxford University Press

More information

Scope and Contents

Contents

Abstract
The bioactive peptide has wide functions, such as lowering blood glucose levels and reducing inflammation. Meanwhile, computational methods such as machine learning are becoming more and more important for peptide functions prediction. Most of the previous studies concentrate on the single-functional bioactive peptides prediction. However, the number of multi-functional peptides is on the increase; therefore, novel computational methods are needed. In this study, we develop a method MLBP (Multi-Label deep learning approach for determining the multi-functionalities of Bioactive Peptides), which can predict multiple functions including anti-cancer, anti-diabetic, anti-hypertensive, anti-inflammatory and anti-microbial simultaneously. MLBP model takes the peptide sequence vector as input to replace the biological and physiochemical features used in other peptides predictors. Using the embedding layer, the dense continuous feature vector is learnt from the sequence vector. Then, we extract convolution features from the feature vector through the convolutional neural network layer and combine with the bidirectional gated recurrent unit layer to improve the prediction performance. The 5-fold cross-validation experiments are conducted on the training dataset, and the results show that Accuracy and Absolute true are 0.695 and 0.685, respectively. On the test dataset, Accuracy and Absolute true of MLBP are 0.709 and 0.697, with 5.0 and 4.7% higher than those of the suboptimum method, respectively. The results indicate MLBP has superior prediction performance on the multi-functional peptides identification. MLBP is available at https://github.com/xialab-ahu/MLBP and http://bioinfo.ahu.edu.cn/MLBP/....

Alternative Titles

Full title

Identifying multi-functional bioactive peptide functions using multi-label deep learning

Identifiers

Primary Identifiers

Record Identifier

TN_cdi_proquest_miscellaneous_2582808142

Permalink

https://devfeature-collection.sl.nsw.gov.au/record/TN_cdi_proquest_miscellaneous_2582808142

Other Identifiers

ISSN

1467-5463

E-ISSN

1477-4054

DOI

10.1093/bib/bbab414

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