Publication | Open Access
An RNA foundation model enables discovery of disease mechanisms and candidate therapeutics
27
Citations
46
References
2023
Year
Unknown Venue
EngineeringGeneticsMolecular BiologyTranscriptomics TechnologyDisease MechanismsTherapeuticsGenetic MedicineTranscriptional RegulationTranslational BiologyCandidate TherapeuticsLong Non-coding RnaTranscriptomicsMolecular DiagnosticsVariant InterpretationTranslational BioinformaticsRna Structure PredictionRna BiologyGene ExpressionEpigenetic RegulationBioinformaticsFunctional GenomicsGenomic MedicineRna Foundation ModelGene TherapiesFoundation ModelComputational BiologySmall RnaSystems BiologyMedicineNon-coding Rna
Abstract Accurately modeling and predicting RNA biology has been a long-standing challenge, bearing significant clinical ramifications for variant interpretation and the formulation of tailored therapeutics. We describe a foundation model for RNA biology, “BigRNA”, which was trained on thousands of genome-matched datasets to predict tissue-specific RNA expression, splicing, microRNA sites, and RNA binding protein specificity from DNA sequence. Unlike approaches that are restricted to missense variants, BigRNA can identify pathogenic non-coding variant effects across diverse mechanisms, including polyadenylation, exon skipping and intron retention. BigRNA accurately predicted the effects of steric blocking oligonucleotides (SBOs) on increasing the expression of 4 out of 4 genes, and on splicing for 18 out of 18 exons across 14 genes, including those involved in Wilson disease and spinal muscular atrophy. We anticipate that BigRNA and foundation models like it will have widespread applications in the field of personalized RNA therapeutics.
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