4.6 Article

Structure Prediction of RNA Loops with a Probabilistic Approach

Journal

PLOS COMPUTATIONAL BIOLOGY
Volume 12, Issue 8, Pages -

Publisher

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pcbi.1005032

Keywords

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Funding

  1. National Natural Science Foundation of China [11274157, 11574132, 11174133]
  2. National Basic Research and Development Program of China [2012CB921502, 2013CB834100]
  3. PAPD project of Jiangsu higher education institutions

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The knowledge of the tertiary structure of RNA loops is important for understanding their functions. In this work we develop an efficient approach named RNApps, specifically designed for predicting the tertiary structure of RNA loops, including hairpin loops, internal loops, and multi-way junction loops. It includes a probabilistic coarse-grained RNA model, an all-atom statistical energy function, a sequential Monte Carlo growth algorithm, and a simulated annealing procedure. The approach is tested with a dataset including nine RNA loops, a 23S ribosomal RNA, and a large dataset containing 876 RNAs. The performance is evaluated and compared with a homology modeling based predictor and an ab initio predictor. It is found that RNApps has comparable performance with the former one and outdoes the latter in terms of structure predictions. The approach holds great promise for accurate and efficient RNA tertiary structure prediction.

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