蛋白质结构预测
领域(数学分析)
计算生物学
人工智能
计算机科学
蛋白质结构
化学
生物
数学
生物化学
数学分析
作者
Wei Zheng,Qiqige Wuyun,Yang Li,Quancheng Liu,Xiaogen Zhou,Chunxiang Peng,Yong‐Guan Zhu,Lydia Freddolino,Yang Zhang
标识
DOI:10.1038/s41587-025-02654-4
摘要
The dominant success of deep learning techniques on protein structure prediction has challenged the necessity and usefulness of traditional force field-based folding simulations. We proposed a hybrid approach, deep-learning-based iterative threading assembly refinement (D-I-TASSER), which constructs atomic-level protein structural models by integrating multisource deep learning potentials with iterative threading fragment assembly simulations. D-I-TASSER introduces a domain splitting and assembly protocol for the automated modeling of large multidomain protein structures. Benchmark tests and the most recent critical assessment of protein structure prediction, 15 experiments demonstrate that D-I-TASSER outperforms AlphaFold2 and AlphaFold3 on both single-domain and multidomain proteins. Large-scale folding experiments further show that D-I-TASSER could fold 81% of protein domains and 73% of full-chain sequences in the human proteome with results highly complementary to recently released models by AlphaFold2. These results highlight a new avenue to integrate deep learning with classical physics-based folding simulations for high-accuracy protein structure and function predictions that are usable in genome-wide applications.
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