Abstract
AbstractAccurate quantification and detection of intron retention levels require specialized software. Building on our previous software, we create a suite of tools called IRFinder-S, to analyze and explore intron retention events in multiple samples. Specifically, IRFinder-S allows a better identification of true intron retention events using a convolutional neural network, allows the sharing of intron retention results between labs, integrates a dynamic database to explore and contrast available samples, and provides a tested method to detect differential levels of intron retention.
Funder
LABoratoires d’EXcellence EPIGENMED
Université de Montpellier
Publisher
Springer Science and Business Media LLC
Cited by
24 articles.
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