BrumiR: A toolkit for de novo discovery of microRNAs from sRNA-seq data

Moraga, Carol; Sanchez, Evelyn; Ferrarini, Mariana Galvao; Gutierrez, Rodrigo A.; Vidal, Elena A.; Sagot, Marie-France

Abstract

MicroRNAs (miRNAs) are small noncoding RNAs that are key players in the regulation of gene expression. In the past decade, with the increasing accessibility of high-throughput sequencing technologies, different methods have been developed to identifymiRNAs, most of which rely on preexisting reference genomes. However, when a reference genome is absent or is not of high quality, such identification becomes more difficult. In this context, we developed BrumiR, an algorithm that is able to discovermiRNAs directly and exclusively from small RNA (sRNA) sequencing (sRNA-seq) data. We benchmarked BrumiR with datasets encompassing animal and plant species using real and simulated sRNA-seq experiments. The results demonstrate that BrumiR reaches the highest recall for miRNA discovery, while at the same time being much faster and more efficient than the state-of-the-art tools evaluated. The latter allows BrumiR to analyze a large number of sRNA-seq experiments, fromplants or animal species. Moreover, BrumiR detects additional information regarding other expressed sequences (sRNAs, isomiRs, etc.), thus maximizing the biological insight gained from sRNAseq experiments. Additionally, when a reference genome is available, BrumiR provides a new mapping tool (BrumiR2reference) that performs an a posteriori exhaustive search to identify the precursor sequences. Finally, we also provide a machine learning classifier based on a random forest model that evaluates the sequence-derived features to further refine the prediction obtained from the BrumiR-core. The code of BrumiR and all the algorithms that compose the BrumiR toolkit are freely available at https://github.com/c amoragaq/BrumiR.

Más información

Título según WOS: ID WOS:000928237100011 Not found in local WOS DB
Título de la Revista: GIGASCIENCE
Volumen: 11
Editorial: OXFORD UNIV PRESS
Fecha de publicación: 2022
DOI:

10.1093/gigascience/giac093

Notas: ISI