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A New Procedure to Analyze RNA Non-Branching Structures

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RNA structure prediction and structural motifs analysis are challenging tasks in the investigation of RNA function.

We propose a novel procedure to detect structural motifs shared between two RNAs (a reference and a target). In particular, we developed two core modules: (i) nbRSSP_extractor, to assign a unique structure to the reference RNA encoded by a set of non-branching structures; (ii) SSD_finder, to detect structural motifs that the target RNA shares with the reference, by means of a new score function that rewards the relative distance of the target non-branching structures compared to the reference ones. We integrated these algorithms with already existing software to reach a coherent pipeline able to perform the following two main tasks: prediction of RNA structures (integration of RNALfold and nbRSSP_extractor) and search for chains of matches (integration of Structator and SSD_finder).

Keywords: Common structural motifs; RNA structure comparison; RNA local structure prediction; RNA secondary structure; dynamic programming; long non-coding RNA

Document Type: Research Article

Publication date: 01 July 2015

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