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Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site

[Image: see text] The mining of antidiabetic dipeptidyl peptidase IV (DPP-IV) inhibitory peptides (DPP-IV-IPs) is currently a costly and laborious process. Due to the absence of rational peptide design rules, it relies on cumbersome screening of unknown enzyme hydrolysates. Here, we present an enhan...

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Autores principales: Guan, Changge, Luo, Jiawei, Li, Shucheng, Tan, Zheng Lin, Wang, Yi, Chen, Haihong, Yamamoto, Naoyuki, Zhang, Chong, Lu, Yuan, Chen, Junjie, Xing, Xin-Hui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10601436/
https://www.ncbi.nlm.nih.gov/pubmed/37901493
http://dx.doi.org/10.1021/acsomega.3c05571
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author Guan, Changge
Luo, Jiawei
Li, Shucheng
Tan, Zheng Lin
Wang, Yi
Chen, Haihong
Yamamoto, Naoyuki
Zhang, Chong
Lu, Yuan
Chen, Junjie
Xing, Xin-Hui
author_facet Guan, Changge
Luo, Jiawei
Li, Shucheng
Tan, Zheng Lin
Wang, Yi
Chen, Haihong
Yamamoto, Naoyuki
Zhang, Chong
Lu, Yuan
Chen, Junjie
Xing, Xin-Hui
author_sort Guan, Changge
collection PubMed
description [Image: see text] The mining of antidiabetic dipeptidyl peptidase IV (DPP-IV) inhibitory peptides (DPP-IV-IPs) is currently a costly and laborious process. Due to the absence of rational peptide design rules, it relies on cumbersome screening of unknown enzyme hydrolysates. Here, we present an enhanced deep learning model called bidirectional encoder representation (BERT)–DPPIV, specifically designed to classify DPP-IV-IPs and explore their design rules to discover potent candidates. The end-to-end model utilizes a fine-tuned BERT architecture to extract structural/functional information from input peptides and accurately identify DPP-IV-Ips from input peptides. Experimental results in the benchmark data set showed BERT–DPPIV yielded state-of-the-art accuracy and MCC of 0.894 and 0.790, surpassing the 0.797 and 0.594 obtained by the sequence-feature model. Furthermore, we leveraged the attention mechanism to uncover that our model could recognize the restriction enzyme cutting site and specific residues that contribute to the inhibition of DPP-IV. Moreover, guided by BERT–DPPIV, proposed design rules for DPP-IV inhibitory tripeptides and pentapeptides were validated, and they can be used to screen potent DPP-IV-IPs.
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spelling pubmed-106014362023-10-27 Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site Guan, Changge Luo, Jiawei Li, Shucheng Tan, Zheng Lin Wang, Yi Chen, Haihong Yamamoto, Naoyuki Zhang, Chong Lu, Yuan Chen, Junjie Xing, Xin-Hui ACS Omega [Image: see text] The mining of antidiabetic dipeptidyl peptidase IV (DPP-IV) inhibitory peptides (DPP-IV-IPs) is currently a costly and laborious process. Due to the absence of rational peptide design rules, it relies on cumbersome screening of unknown enzyme hydrolysates. Here, we present an enhanced deep learning model called bidirectional encoder representation (BERT)–DPPIV, specifically designed to classify DPP-IV-IPs and explore their design rules to discover potent candidates. The end-to-end model utilizes a fine-tuned BERT architecture to extract structural/functional information from input peptides and accurately identify DPP-IV-Ips from input peptides. Experimental results in the benchmark data set showed BERT–DPPIV yielded state-of-the-art accuracy and MCC of 0.894 and 0.790, surpassing the 0.797 and 0.594 obtained by the sequence-feature model. Furthermore, we leveraged the attention mechanism to uncover that our model could recognize the restriction enzyme cutting site and specific residues that contribute to the inhibition of DPP-IV. Moreover, guided by BERT–DPPIV, proposed design rules for DPP-IV inhibitory tripeptides and pentapeptides were validated, and they can be used to screen potent DPP-IV-IPs. American Chemical Society 2023-10-13 /pmc/articles/PMC10601436/ /pubmed/37901493 http://dx.doi.org/10.1021/acsomega.3c05571 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Guan, Changge
Luo, Jiawei
Li, Shucheng
Tan, Zheng Lin
Wang, Yi
Chen, Haihong
Yamamoto, Naoyuki
Zhang, Chong
Lu, Yuan
Chen, Junjie
Xing, Xin-Hui
Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title_full Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title_fullStr Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title_full_unstemmed Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title_short Exploration of DPP-IV Inhibitory Peptide Design Rules Assisted by the Deep Learning Pipeline That Identifies the Restriction Enzyme Cutting Site
title_sort exploration of dpp-iv inhibitory peptide design rules assisted by the deep learning pipeline that identifies the restriction enzyme cutting site
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10601436/
https://www.ncbi.nlm.nih.gov/pubmed/37901493
http://dx.doi.org/10.1021/acsomega.3c05571
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