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

IF 36.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Nature Methods Pub Date : 2024-11-21 DOI:10.1038/s41592-024-02487-0
Tao Shen, Zhihang Hu, Siqi Sun, Di Liu, Felix Wong, Jiuming Wang, Jiayang Chen, Yixuan Wang, Liang Hong, Jin Xiao, Liangzhen Zheng, Tejas Krishnamoorthi, Irwin King, Sheng Wang, Peng Yin, James J Collins, Yu Li
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Abstract

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.

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使用基于语言模型的深度学习方法准确预测 RNA 3D 结构。
准确预测 RNA 三维(3D)结构仍是一项尚未解决的挑战。确定 RNA 的三维结构对于了解其功能以及为 RNA 靶向药物开发和合成生物学设计提供信息至关重要。RNA 结构的灵活性导致了实验测定数据的稀缺,从而使计算预测工作变得更加复杂。在这里,我们介绍一种基于 RNA 语言模型的深度学习方法 RhoFold+,它能根据序列准确预测单链 RNA 的三维结构。RhoFold+ 整合了在约 2,370 万条 RNA 序列上预先训练的 RNA 语言模型,并利用各种技术来解决数据稀缺的问题,从而为 RNA 3D 结构预测提供了一个全自动的端到端管道。对 RNA-Puzzles 和 CASP15 天然 RNA 目标的回顾性评估表明,RhoFold+ 优于包括人类专家组在内的现有方法。通过跨家族和跨类型评估以及时间校正基准,进一步验证了其有效性和普适性。此外,RhoFold+ 还能预测 RNA 二级结构和螺旋间角度,提供了可经验验证的特性,从而扩大了其在 RNA 结构和功能研究中的适用性。
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来源期刊
Nature Methods
Nature Methods 生物-生化研究方法
CiteScore
58.70
自引率
1.70%
发文量
326
审稿时长
1 months
期刊介绍: Nature Methods is a monthly journal that focuses on publishing innovative methods and substantial enhancements to fundamental life sciences research techniques. Geared towards a diverse, interdisciplinary readership of researchers in academia and industry engaged in laboratory work, the journal offers new tools for research and emphasizes the immediate practical significance of the featured work. It publishes primary research papers and reviews recent technical and methodological advancements, with a particular interest in primary methods papers relevant to the biological and biomedical sciences. This includes methods rooted in chemistry with practical applications for studying biological problems.
期刊最新文献
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