Predicting 3D RNA structure from the nucleotide sequence using Euclidean neural networks.

Biophys J

Department of Engineering Science and Mechanics, Penn State University, State College, Pennsylvania; Department of Pharmacology, Penn State College of Medicine, Hershey, Pennsylvania; Department of Biochemistry and Molecular Biology, Penn State College of Medicine, Hershey, Pennsylvania; Department of Chemistry, Penn State University, State College, Pennsylvania; Department of Biomedical Engineering, Penn State University, State College, Pennsylvania. Electronic address:

Published: September 2024

AI Article Synopsis

  • Fast and accurate 3D RNA structure prediction is challenging due to RNA's size, flexibility, and a lack of diverse experimental structures, which complicates identifying stable states compared to DNA.
  • A convolutional neural network has been developed to predict all pairwise distances between RNA residues, achieving high accuracy for RNA sequences up to 100 nucleotides in length and performing predictions significantly faster than traditional methods.
  • The method converts predictions into all-atom RNA models based on nucleotide sequences but faces limitations due to the shortage of available RNA crystal structures for training purposes.

Article Abstract

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 10 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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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11393712PMC
http://dx.doi.org/10.1016/j.bpj.2023.10.011DOI Listing

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