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Introducing enzymatic cleavage features and transfer learning realizes accurate peptide half-life prediction across species and organs
Tan, Xiaorong1; Liu, Qianhui1; Fang, Yanpeng1; Yang, Sen1; Chen, Fei1; Wang, Jianmin2; Ouyang, Defang3; Dong, Jie1; Zeng, Wenbin1
2024-07-01
Source PublicationBriefings in Bioinformatics
ISSN1467-5463
Volume25Issue:4Pages:bbae350
Abstract

Peptide drugs are becoming star drug agents with high efficiency and selectivity which open up new therapeutic avenues for various diseases. However, the sensitivity to hydrolase and the relatively short half-life have severely hindered their development. In this study, a new generation artificial intelligence-based system for accurate prediction of peptide half-life was proposed, which realized the half-life prediction of both natural and modified peptides and successfully bridged the evaluation possibility between two important species (human, mouse) and two organs (blood, intestine). To achieve this, enzymatic cleavage descriptors were integrated with traditional peptide descriptors to construct a better representation. Then, robust models with accurate performance were established by comparing traditional machine learning and transfer learning, systematically. Results indicated that enzymatic cleavage features could certainly enhance model performance. The deep learning model integrating transfer learning significantly improved predictive accuracy, achieving remarkable R values: 0.84 for natural peptides and 0.90 for modified peptides in human blood, 0.984 for natural peptides and 0.93 for modified peptides in mouse blood, and 0.94 for modified peptides in mouse intestine on the test set, respectively. These models not only successfully composed the above-mentioned system but also improved by approximately 15% in terms of correlation compared to related works. This study is expected to provide powerful solutions for peptide half-life evaluation and boost peptide drug development.

KeywordDrug Design Enzymatic Cleavage Features Half-life Machine Learning Peptide Drugs Transfer Learning
DOI10.1093/bib/bbae350
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaBiochemistry & Molecular Biology ; Mathematical & Computational Biology
WOS SubjectBiochemical Research Methods ; Mathematical & Computational Biology
WOS IDWOS:001283192500009
PublisherOXFORD UNIV PRESSGREAT CLARENDON ST, OXFORD OX2 6DP, ENGLAND
Scopus ID2-s2.0-85199363259
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Citation statistics
Document TypeJournal article
CollectionInstitute of Chinese Medical Sciences
THE STATE KEY LABORATORY OF QUALITY RESEARCH IN CHINESE MEDICINE (UNIVERSITY OF MACAU)
Corresponding AuthorDong, Jie
Affiliation1.Xiangya School of Pharmaceutical Sciences, Central South University, Changsha, No. 172 Tongzipo Road, Yuelu District, 410083, China
2.The Interdisciplinary Graduate Program in Integrative Biotechnology and TYanslational Medicine, Yonsei University, Incheon, 214, Veritas A Hall, 85 Songdogwahak-ro, 21983, South Korea
3.Institute of Chinese Medical Sciences (ICMS), State Key Laboratory of Quality Research in Chinese Medicine, University of Macau, Taipa, Avenida da Universidade, 999078, Macao
Recommended Citation
GB/T 7714
Tan, Xiaorong,Liu, Qianhui,Fang, Yanpeng,et al. Introducing enzymatic cleavage features and transfer learning realizes accurate peptide half-life prediction across species and organs[J]. Briefings in Bioinformatics, 2024, 25(4), bbae350.
APA Tan, Xiaorong., Liu, Qianhui., Fang, Yanpeng., Yang, Sen., Chen, Fei., Wang, Jianmin., Ouyang, Defang., Dong, Jie., & Zeng, Wenbin (2024). Introducing enzymatic cleavage features and transfer learning realizes accurate peptide half-life prediction across species and organs. Briefings in Bioinformatics, 25(4), bbae350.
MLA Tan, Xiaorong,et al."Introducing enzymatic cleavage features and transfer learning realizes accurate peptide half-life prediction across species and organs".Briefings in Bioinformatics 25.4(2024):bbae350.
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