使用欧几里德神经网络从核苷酸序列预测3D RNA结构。

IF 3.2 3区 生物学 Q2 BIOPHYSICS Biophysical journal Pub Date : 2024-09-03 Epub Date: 2023-10-14 DOI:10.1016/j.bpj.2023.10.011
Congzhou M Sha, Jian Wang, Nikolay V Dokholyan
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引用次数: 0

摘要

快速准确的3D RNA结构预测仍然是结构生物学中的一个主要挑战,主要是由于RNA分子的大小和灵活性,以及缺乏不同的实验确定的RNA分子结构。与DNA结构不同,RNA结构受碱基对氢键的约束要小得多,从而导致潜在稳定状态的爆发。在这里,我们提出了一种卷积神经网络,该网络使用最近描述的欧几里得距离矩阵的平滑参数化来预测RNA中残基之间的所有成对距离。我们在几分之一秒内对长度高达100个核苷酸的RNA进行了高精度预测,比现有的基于分子动力学的方法快107倍。我们还使用带约束的离散分子动力学将粗粒度机器学习输出转换为全原子模型。我们提出的计算管道仅从核苷酸序列预测所有原子RNA模型。然而,这种方法受到与核酸分子动力学相同的限制:缺乏可用于训练的RNA晶体结构。
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Predicting 3D RNA structure from the nucleotide sequence using Euclidean neural networks.

Fast and accurate 3D RNA structure prediction remains a major challenge in structural biology, mostly due to the size and flexibility of RNA molecules, as well as the lack of diverse experimentally determined structures of RNA molecules. Unlike DNA structure, RNA structure is far less constrained by basepair hydrogen bonding, resulting in an explosion of potential stable states. Here, we propose a convolutional neural network that predicts all pairwise distances between residues in an RNA, using a recently described smooth parametrization of Euclidean distance matrices. We achieve high-accuracy predictions on RNAs up to 100 nt in length in fractions of a second, a factor of 107 faster than existing molecular dynamics-based methods. We also convert our coarse-grained machine learning output into an all-atom model using discrete molecular dynamics with constraints. Our proposed computational pipeline predicts all-atom RNA models solely from the nucleotide sequence. However, this method suffers from the same limitation as nucleic acid molecular dynamics: the scarcity of available RNA crystal structures for training.

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来源期刊
Biophysical journal
Biophysical journal 生物-生物物理
CiteScore
6.10
自引率
5.90%
发文量
3090
审稿时长
2 months
期刊介绍: BJ publishes original articles, letters, and perspectives on important problems in modern biophysics. The papers should be written so as to be of interest to a broad community of biophysicists. BJ welcomes experimental studies that employ quantitative physical approaches for the study of biological systems, including or spanning scales from molecule to whole organism. Experimental studies of a purely descriptive or phenomenological nature, with no theoretical or mechanistic underpinning, are not appropriate for publication in BJ. Theoretical studies should offer new insights into the understanding ofexperimental results or suggest new experimentally testable hypotheses. Articles reporting significant methodological or technological advances, which have potential to open new areas of biophysical investigation, are also suitable for publication in BJ. Papers describing improvements in accuracy or speed of existing methods or extra detail within methods described previously are not suitable for BJ.
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