Litcius/Paper detail

Integrative approaches for analysis of mRNA and microRNA high-throughput data

Petr V. Nazarov, Stephanie Kreis

2021Computational and Structural Biotechnology Journal37 citationsDOIOpen Access PDF

Abstract

Advanced sequencing technologies such as RNASeq provide the means for production of massive amounts of data, including transcriptome-wide expression levels of coding RNAs (mRNAs) and non-coding RNAs such as miRNAs, lncRNAs, piRNAs and many other RNA species. In silico analysis of datasets, representing only one RNA species is well established and a variety of tools and pipelines are available. However, attaining a more systematic view of how different players come together to regulate the expression of a gene or a group of genes requires a more intricate approach to data analysis. To fully understand complex transcriptional networks, datasets representing different RNA species need to be integrated. In this review, we will focus on miRNAs as key post-transcriptional regulators summarizing current computational approaches for miRNA:target gene prediction as well as new data-driven methods to tackle the problem of comprehensively and accurately dissecting miRNome-targetome interactions.

Topics & Concepts

Computational biologymicroRNATranscriptomeIn silicoBiologyGeneRNARNA-SeqRegulation of gene expressionGene expressionComputer scienceGeneticsMicroRNA in disease regulationCancer-related molecular mechanisms researchRNA modifications and cancer
Integrative approaches for analysis of mRNA and microRNA high-throughput data | Litcius