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Research on folding diversity in statistical learning methods for RNA secondary structure prediction

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posted on 2023-05-12, 04:57 authored by Yu Zhu, ZhaoYang Xie, YiZhou Li, Min Zhu, Yi-Ping Phoebe ChenYi-Ping Phoebe Chen
How to improve the prediction accuracy of RNA secondary structure is currently a hot topic. The existing prediction methods for a single sequence do not fully consider the folding diversity which may occur among RNAs with different functions or sources. This paper explores the relationship between folding diversity and prediction accuracy, and puts forward a new method to improve the prediction accuracy of RNA secondary structure. Our research investigates the following: 1. The folding feature based on stochastic context-free grammar is proposed. By using dimension reduction and clustering techniques, some public data sets are analyzed. The results show that there is significant folding diversity among different RNA families. 2. To assign folding rules to RNAs without structural information, a classification method based on production probability is proposed. The experimental results show that the classification method proposed in this paper can effectively classify the RNAs of unknown structure. 3. Based on the existing prediction methods of statistical learning models, an RNA secondary structure prediction framework is proposed, namely “Cluster-Training-Parameter Selection-Prediction”. The results show that, with information on folding diversity, prediction accuracy can be significantly improved.

History

Publication Date

2018-05-22

Journal

International Journal of Biological Sciences

Volume

14

Issue

8

Pagination

11p. (p. 872-882)

Publisher

Ivyspring International Publisher

ISSN

1449-2288

Rights Statement

© 2018 Ivyspring International Publisher. This is an open access article distributed under the terms of the Creative Commons Attribution-NonCommercial (CC BY-NC) license (https://creativecommons.org/licenses/by-nc/4.0/). See http://ivyspring.com/terms for full terms and conditions.