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      Direct Inference of Base-Pairing Probabilities with Neural Networks Improves Prediction of RNA Secondary Structures with Pseudoknots.

      1 , 1 , 2
      Genes
      MDPI AG
      RNA secondary structure, deep learning, pseudoknots

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          Abstract

          Existing approaches to predicting RNA secondary structures depend on how the secondary structure is decomposed into substructures, that is, the architecture, to define their parameter space. However, architecture dependency has not been sufficiently investigated, especially for pseudoknotted secondary structures. In this study, we propose a novel algorithm for directly inferring base-pairing probabilities with neural networks that do not depend on the architecture of RNA secondary structures, and then implement this approach using two maximum expected accuracy (MEA)-based decoding algorithms: Nussinov-style decoding for pseudoknot-free structures and IPknot-style decoding for pseudoknotted structures. To train the neural networks connected to each base pair, we adopt a max-margin framework, called structured support vector machines (SSVM), as the output layer. Our benchmarks for predicting RNA secondary structures with and without pseudoknots show that our algorithm outperforms existing methods in prediction accuracy.

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          Author and article information

          Journal
          Genes (Basel)
          Genes
          MDPI AG
          2073-4425
          2073-4425
          Nov 18 2022
          : 13
          : 11
          Affiliations
          [1 ] Department of Biosciences and Informatics, Keio University, 3-14-1 Hiyoshi, Kohoku-ku, Yokohama 223-8522, Japan.
          [2 ] School of System Design and Technology, Tokyo Denki University, 5 Senju Asahi-cho, Adachi-ku, Tokyo 120-8551, Japan.
          Article
          genes13112155
          10.3390/genes13112155
          9690657
          36421829
          4e1edf4e-578d-4b0c-9793-143d3669a37c
          History

          RNA secondary structure,pseudoknots,deep learning
          RNA secondary structure, pseudoknots, deep learning

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