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Protein structure prediction via deep learning: an in-depth review

Affiliation
College of Computer Science and Artificial Intelligence ,Wuhan Textile University ,Wuhan ,China
Meng, Yajie;
Affiliation
College of Computer Science and Artificial Intelligence ,Wuhan Textile University ,Wuhan ,China
Zhang, Zhuang;
Affiliation
College of Computer Science and Artificial Intelligence ,Wuhan Textile University ,Wuhan ,China
Zhou, Chang;
Affiliation
College of Computer Science and Artificial Intelligence ,Wuhan Textile University ,Wuhan ,China
Tang, Xianfang;
Affiliation
College of Computer Science and Artificial Intelligence ,Wuhan Textile University ,Wuhan ,China
Hu, Xinrong;
Affiliation
Geneis Beijing Co ,Beijing ,China
Tian, Geng;
Affiliation
Geneis Beijing Co ,Beijing ,China
Yang, Jialiang;
Affiliation
School of Mathematics and Statistics ,Hainan Normal University ,Haikou ,China
Yao, Yuhua

The application of deep learning algorithms in protein structure prediction has greatly influenced drug discovery and development. Accurate protein structures are crucial for understanding biological processes and designing effective therapeutics. Traditionally, experimental methods like X-ray crystallography, nuclear magnetic resonance, and cryo-electron microscopy have been the gold standard for determining protein structures. However, these approaches are often costly, inefficient, and time-consuming. At the same time, the number of known protein sequences far exceeds the number of experimentally determined structures, creating a gap that necessitates the use of computational approaches. Deep learning has emerged as a promising solution to address this challenge over the past decade. This review provides a comprehensive guide to applying deep learning methodologies and tools in protein structure prediction. We initially outline the databases related to the protein structure prediction, then delve into the recently developed large language models as well as state-of-the-art deep learning-based methods. The review concludes with a perspective on the future of predicting protein structure, highlighting potential challenges and opportunities.

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License Holder: Copyright © 2025 Meng, Zhang, Zhou, Tang, Hu, Tian, Yang and Yao.

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