Tpgen: a language model for stable protein design with a specific topology structure
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Published:2024-01-23
Issue:1
Volume:25
Page:
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ISSN:1471-2105
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Container-title:BMC Bioinformatics
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language:en
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Short-container-title:BMC Bioinformatics
Author:
Min Xiaoping,Yang Chongzhou,Xie Jun,Huang Yang,Liu Nan,Jin Xiaocheng,Wang Tianshu,Kong Zhibo,Lu Xiaoli,Ge Shengxiang,Zhang Jun,Xia Ningshao
Abstract
Abstract
Background
Natural proteins occupy a small portion of the protein sequence space, whereas artificial proteins can explore a wider range of possibilities within the sequence space. However, specific requirements may not be met when generating sequences blindly. Research indicates that small proteins have notable advantages, including high stability, accurate resolution prediction, and facile specificity modification.
Results
This study involves the construction of a neural network model named TopoProGenerator(TPGen) using a transformer decoder. The model is trained with sequences consisting of a maximum of 65 amino acids. The training process of TopoProGenerator incorporates reinforcement learning and adversarial learning, for fine-tuning. Additionally, it encompasses a stability predictive model trained with a dataset comprising over 200,000 sequences. The results demonstrate that TopoProGenerator is capable of designing stable small protein sequences with specified topology structures.
Conclusion
TPGen has the ability to generate protein sequences that fold into the specified topology, and the pretraining and fine-tuning methods proposed in this study can serve as a framework for designing various types of proteins.
Funder
National Natural Science Foundation of China
Chinese Academy of Medical Sciences Research Unit
the Key Program Foundation of Fujian Province of China
Fundamental Research Funds for the Central Universities
Publisher
Springer Science and Business Media LLC
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