College of Information Engineering, Zhejiang University of Technology, HangZhou, 310023, China.
Genome Biol. 2024 Jun 11;25(1):152. doi: 10.1186/s13059-024-03291-x.
Protein folding has become a tractable problem with the significant advances in deep learning-driven protein structure prediction. Here we propose FoldPAthreader, a protein folding pathway prediction method that uses a novel folding force field model by exploring the intrinsic relationship between protein evolution and folding from the known protein universe. Further, the folding force field is used to guide Monte Carlo conformational sampling, driving the protein chain fold into its native state by exploring potential intermediates. On 30 example targets, FoldPAthreader successfully predicts 70% of the proteins whose folding pathway is consistent with biological experimental data.
随着深度学习驱动的蛋白质结构预测技术的显著进步,蛋白质折叠已成为一个可行的问题。在这里,我们提出了 FoldPAthreader,这是一种蛋白质折叠途径预测方法,它通过从已知的蛋白质宇宙中探索蛋白质进化和折叠之间的内在关系,使用一种新颖的折叠力场模型。此外,该折叠力场还用于指导蒙特卡罗构象采样,通过探索潜在的中间体,将蛋白质链折叠到其天然状态。在 30 个示例目标中,FoldPAthreader 成功预测了 70%的折叠途径与生物实验数据一致的蛋白质。