Litcius/Paper detail

Towards in silico CLIP-seq: predicting protein-RNA interaction via sequence-to-signal learning

Marc Horlacher, Nils Wagner, Lambert Moyon, Klara Kuret, Nicolas Goedert, Marco Salvatore, Jernej Ule, Julien Gagneur, Ole Winther, Annalisa Marsico

2023Genome biology32 citationsDOIOpen Access PDF

Abstract

We present RBPNet, a novel deep learning method, which predicts CLIP-seq crosslink count distribution from RNA sequence at single-nucleotide resolution. By training on up to a million regions, RBPNet achieves high generalization on eCLIP, iCLIP and miCLIP assays, outperforming state-of-the-art classifiers. RBPNet performs bias correction by modeling the raw signal as a mixture of the protein-specific and background signal. Through model interrogation via Integrated Gradients, RBPNet identifies predictive sub-sequences that correspond to known and novel binding motifs and enables variant-impact scoring via in silico mutagenesis. Together, RBPNet improves imputation of protein-RNA interactions, as well as mechanistic interpretation of predictions.

Topics & Concepts

In silicoBiologyComputational biologyRNAProtein sequencingSequence (biology)Artificial intelligenceMutagenesisMachine learningGeneticsComputer scienceMutationPeptide sequenceGeneRNA and protein synthesis mechanismsRNA Research and SplicingRNA modifications and cancer