Publication | Open Access
GPN-MSA: an alignment-based DNA language model for genome-wide variant effect prediction
28
Citations
40
References
2023
Year
Unknown Venue
GeneticsGenetic EpidemiologyComplex GenomesGenomicsSequence AlignmentComputational GenomicsGenome AnalysisBiostatisticsPublic HealthMissense VariantsPersonal GenomicsVariant InterpretationStatistical GeneticsBioinformaticsFunctional GenomicsNext-generation SequencingDna Language ModelsComputational BiologySystems BiologyMedicine
Whereas protein language models have demonstrated remarkable efficacy in predicting the effects of missense variants, DNA counterparts have not yet achieved a similar competitive edge for genome-wide variant effect predictions, especially in complex genomes such as that of humans. To address this challenge, we here introduce GPN-MSA, a novel framework for DNA language models that leverages whole-genome sequence alignments across multiple species and takes only a few hours to train. Across several benchmarks on clinical databases (ClinVar, COSMIC, OMIM), experimental functional assays (DMS, DepMap), and population genomic data (gnomAD), our model for the human genome achieves outstanding performance on deleteriousness prediction for both coding and non-coding variants.
| Year | Citations | |
|---|---|---|
Page 1
Page 1