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Original Article | Open Access

Generation of functional oligopeptides that promote osteogenesis based on unsupervised deep learning of protein IDRs

Mingxiang Cai1,2Baichuan Xiao3Fujun Jin2,3Xiaopeng Xu4Yuwei Hua5Junhui Li1Pingping Niu1Meijing Liu3Jiaqi Wu3Rui Yue5Yong Zhang5Zuolin Wang1( )Yongbiao Zhang3( )Xiaogang Wang2,3( )Yao Sun1 ( )
Department of Oral Implantology, School of Stomatology, Tongji University, Shanghai Engineering Research Center of Tooth Restoration and Regeneration, Shanghai 200072, China
The First Affiliated Hospital of Jinan University, School of Stomatology, Clinical Research Platform for Interdiscipline of Stomatology, Jinan University, Guangzhou 510630, China
Key Laboratory of Big Data-Based Precision Medicine, School of Engineering Medicine, Beihang University, Beijing 100191, China
Guangzhou Laboratory, Bioland Laboratory, Guangzhou Regenerative Medicine and Health Guangdong Laboratory, Guangzhou 510320, China
Institute for Regenerative Medicine, Shanghai East Hospital, Shanghai Key Laboratory of Signaling and Disease Research, Frontier Science Center for Stem Cell Research, School of Life Sciences and Technology, Tongji University, Shanghai 200092, China

These authors contributed equally: Mingxiang Cai, Baichuan Xiao, Fujun Jin, Xiaopeng Xu.

These authors jointly supervised this work: Zuolin Wang, Yongbiao Zhang, Xiaogang Wang, Yao Sun.

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Abstract

Deep learning (DL) is currently revolutionizing peptide drug development due to both computational advances and the substantial recent expansion of digitized biological data. However, progress in oligopeptide drug development has been limited, likely due to the lack of suitable datasets and difficulty in identifying informative features to use as inputs for DL models. Here, we utilized an unsupervised deep learning model to learn a semantic pattern based on the intrinsically disordered regions of ~171 known osteogenic proteins. Subsequently, oligopeptides were generated from this semantic pattern based on Monte Carlo simulation, followed by in vivo functional characterization. A five amino acid oligopeptide (AIB5P) had strong bone-formation-promoting effects, as determined in multiple mouse models (e.g., osteoporosis, fracture, and osseointegration of implants). Mechanistically, we showed that AIB5P promotes osteogenesis by binding to the integrin α5 subunit and thereby activating FAK signaling. In summary, we successfully established an oligopeptide discovery strategy based on a DL model and demonstrated its utility from cytological screening to animal experimental verification.

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Bone Research
Article number: 23

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Cite this article:
Cai M, Xiao B, Jin F, et al. Generation of functional oligopeptides that promote osteogenesis based on unsupervised deep learning of protein IDRs. Bone Research, 2022, 10: 23. https://doi.org/10.1038/s41413-022-00193-1

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Received: 08 September 2021
Accepted: 21 December 2021
Published: 01 March 2022
© The Author(s) 2022

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