Deep generalizable prediction of RNA secondary structure via base pair motif energy
发布时间:2025-08-26
点击次数:
- DOI码:
- 10.1038/s41467-025-60048-1
- 所属单位:
- 生物医学工程学院,苏州高等研究院
- 发表刊物:
- 自然-通讯
- 刊物所在地:
- 英国伦敦
- 摘要:
- Deep learning methods have demonstrated great performance for RNA secondary structure prediction. However, generalizability is a common unsolved issue on unseen out-of-distribution RNA families, which hinders further improvement of the accuracy and robustness of deep learning methods. Here we construct a base pair motif library that enumerates the complete space of the locally adjacent three-neighbor base pair and records the thermodynamic energy of corresponding base pair motifs through de novo modeling of tertiary structures, and we further develop a deep learning approach for RNA secondary structure prediction, named BPfold, which learns relationship between RNA sequence and the energy map of base pair motif. Experiments on sequence-wise and family-wise datasets have demonstrated the great superiority of BPfold compared to other state-of-the-art approaches in accuracy and generalizability. We hope this work contributes to integrating physical priors and deep learning methods for the further discovery of RNA structures and functionalities.
- 第一作者:
- 朱河勤
- 合写作者:
- Fenghe Tang,Quan Quan,陈珂
- 论文类型:
- 期刊论文
- 通讯作者:
- 熊鹏,周少华
- 卷号:
- 16
- 期号:
- 1
- 页面范围:
- 5856
- ISSN号:
- 2041-1723
- 是否译文:
- 否
- 发表时间:
- 2025-07-01
- 收录刊物:
- SCI