trRosettaRNA: automated prediction of RNA 3D structure with transformer network

Wenkai Wang(Nankai University), Chenjie Feng(Shandong University), Renmin Han(Shandong University), Ziyi Wang(Shandong University), Lisha Ye(Nankai University), Zongyang Du(Nankai University), Hong Wei(Nankai University), Fa Zhang(Beijing Institute of Technology), Zhenling Peng(Institut des Sciences Moléculaires), Jianyi Yang(Shandong University of Science and Technology)
Nature Communications
November 9, 2023
Cited by 198Open Access
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Abstract

Abstract RNA 3D structure prediction is a long-standing challenge. Inspired by the recent breakthrough in protein structure prediction, we developed trRosettaRNA, an automated deep learning-based approach to RNA 3D structure prediction. The trRosettaRNA pipeline comprises two major steps: 1D and 2D geometries prediction by a transformer network; and 3D structure folding by energy minimization. Benchmark tests suggest that trRosettaRNA outperforms traditional automated methods. In the blind tests of the 15 th Critical Assessment of Structure Prediction (CASP15) and the RNA-Puzzles experiments, the automated trRosettaRNA predictions for the natural RNAs are competitive with the top human predictions. trRosettaRNA also outperforms other deep learning-based methods in CASP15 when measured by the Z-score of the Root-Mean-Square Deviation. Nevertheless, it remains challenging to predict accurate structures for synthetic RNAs with an automated approach. We hope this work could be a good start toward solving the hard problem of RNA structure prediction with deep learning.


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