A high-throughput approach to profile RNA structure

R Delli Ponti, S Marti, A Armaos… - Nucleic acids …, 2017 - academic.oup.com
Nucleic acids research, 2017academic.oup.com
Here we introduce the Computational Recognition of Secondary Structure (CROSS) method
to calculate the structural profile of an RNA sequence (single-or double-stranded state) at
single-nucleotide resolution and without sequence length restrictions. We trained CROSS
using data from high-throughput experiments such as Selective 2΄-Hydroxyl Acylation
analyzed by Primer Extension (SHAPE; Mouse and HIV transcriptomes) and Parallel
Analysis of RNA Structure (PARS; Human and Yeast transcriptomes) as well as high-quality …
Abstract
Here we introduce the Computational Recognition of Secondary Structure (CROSS) method to calculate the structural profile of an RNA sequence (single- or double-stranded state) at single-nucleotide resolution and without sequence length restrictions. We trained CROSS using data from high-throughput experiments such as Selective 2΄-Hydroxyl Acylation analyzed by Primer Extension (SHAPE; Mouse and HIV transcriptomes) and Parallel Analysis of RNA Structure (PARS; Human and Yeast transcriptomes) as well as high-quality NMR/X-ray structures (PDB database). The algorithm uses primary structure information alone to predict experimental structural profiles with >80% accuracy, showing high performances on large RNAs such as Xist (17 900 nucleotides; Area Under the ROC Curve AUC of 0.75 on dimethyl sulfate (DMS) experiments). We integrated CROSS in thermodynamics-based methods to predict secondary structure and observed an increase in their predictive power by up to 30%.
Oxford University Press
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