Determining structures of individual RNA conformers using atomic force microscopy images and deep neural networks.

利用原子力显微镜图像和深度神经网络确定单个 RNA 构象体的结构

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作者:Degenhardt Maximilia F S, Degenhardt Hermann F, Bhandari Yuba R, Lee Yun-Tzai, Ding Jienyu, Heinz William F, Stagno Jason R, Schwieters Charles D, Zhang Jinwei, Wang Yun-Xing
The vast percentage of the human genome is transcribed into RNA, many of which contain various structural elements and are important for functions. RNA molecules are conformationally heterogeneous and functionally dyanmics(1), even when they are structured and well-folded(2), which limit the applicability of methods such as NMR, crystallography, or cryo-EM. Moreover, because of the lack of a large structure RNA database, and no clear correlation between sequence and structure, approaches like AlphaFold(3) for protein structure prediction, do not apply to RNA. Therefore determining the structures of heterogeneous RNA is an unmet challenge. Here we report a novel method of determining RNA three-dimensional topological structures using deep neural networks and atomic force microscopy (AFM) images of individual RNA molecules in solution. Owing to the high signal-to-noise ratio of AFM, our method is ideal for capturing structures of individual conformationally heterogeneous RNA. We show that our method can determine 3D topological structures of any large folded RNA conformers, from ~ 200 to ~ 420 residues, the size range that most functional RNA structures or structural elements fall into. Thus our method addresses one of the major challenges in frontier RNA structural biology and may impact our fundamental understanding of RNA structure.

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