Accurate RNA 3D structure prediction using a language model-based deep learning approach

Accurate prediction of RNA three-dimensional (3D) structures remains an unsolved challenge. Determining RNA 3D structures is crucial for understanding their functions and informing RNA-targeting drug development and synthetic biology design. The structural flexibility of RNA, which leads to the scar...

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Veröffentlicht in:Nature methods 2024-11
Hauptverfasser: Shen, Tao, Hu, Zhihang, Sun, Siqi, Liu, Di, Wong, Felix, Wang, Jiuming, Chen, Jiayang, Wang, Yixuan, Hong, Liang, Xiao, Jin, Zheng, Liangzhen, Krishnamoorthi, Tejas, King, Irwin, Wang, Sheng, Yin, Peng, Collins, James J, Li, Yu
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Sprache:eng
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Zusammenfassung:Accurate prediction of RNA three-dimensional (3D) structures remains an unsolved challenge. Determining RNA 3D structures is crucial for understanding their functions and informing RNA-targeting drug development and synthetic biology design. The structural flexibility of RNA, which leads to the scarcity of experimentally determined data, complicates computational prediction efforts. Here we present RhoFold+, an RNA language model-based deep learning method that accurately predicts 3D structures of single-chain RNAs from sequences. By integrating an RNA language model pretrained on ~23.7 million RNA sequences and leveraging techniques to address data scarcity, RhoFold+ offers a fully automated end-to-end pipeline for RNA 3D structure prediction. Retrospective evaluations on RNA-Puzzles and CASP15 natural RNA targets demonstrate the superiority of RhoFold+ over existing methods, including human expert groups. Its efficacy and generalizability are further validated through cross-family and cross-type assessments, as well as time-censored benchmarks. Additionally, RhoFold+ predicts RNA secondary structures and interhelical angles, providing empirically verifiable features that broaden its applicability to RNA structure and function studies.
ISSN:1548-7091
1548-7105
1548-7105
DOI:10.1038/s41592-024-02487-0