Methods to study splicing from high-throughput RNA Sequencing data
Gael P. Alamancos, Eneritz Agirre, Eduardo Eyras

TL;DR
This review summarizes various computational methods for analyzing splicing from high-throughput RNA-Seq data, categorizing tools based on their specific analytical functions to aid researchers in selecting appropriate approaches.
Contribution
It provides a comprehensive overview and classification of existing RNA-Seq splicing analysis tools, guiding users in choosing suitable methods for their specific research questions.
Findings
Multiple tools exist for different aspects of splicing analysis.
Tools are categorized based on read assignment, isoform reconstruction, quantification, differential analysis, and visualization.
The review aids in method selection for RNA-Seq splicing studies.
Abstract
The development of novel high-throughput sequencing (HTS) methods for RNA (RNA-Seq) has provided a very powerful mean to study splicing under multiple conditions at unprecedented depth. However, the complexity of the information to be analyzed has turned this into a challenging task. In the last few years, a plethora of tools have been developed, allowing researchers to process RNA-Seq data to study the expression of isoforms and splicing events, and their relative changes under different conditions. We provide an overview of the methods available to study splicing from short RNA-Seq data. We group the methods according to the different questions they address: 1) Assignment of the sequencing reads to their likely gene of origin. This is addressed by methods that map reads to the genome and/or to the available gene annotations. 2) Recovering the sequence of splicing events and isoforms.…
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