A deep learning approach to automate refinement of somatic variant calling from cancer sequencing data.
Benjamin J AinscoughErica K BarnellPeter RonningKatie M CampbellAlex H WagnerTodd A FehnigerGavin P DunnRavindra UppaluriRamaswamy GovindanThomas E RohanMalachi GriffithElaine R MardisS Joshua SwamidassMalachi GriffithPublished in: Nature genetics (2018)
Cancer genomic analysis requires accurate identification of somatic variants in sequencing data. Manual review to refine somatic variant calls is required as a final step after automated processing. However, manual variant refinement is time-consuming, costly, poorly standardized, and non-reproducible. Here, we systematized and standardized somatic variant refinement using a machine learning approach. The final model incorporates 41,000 variants from 440 sequencing cases. This model accurately recapitulated manual refinement labels for three independent testing sets (13,579 variants) and accurately predicted somatic variants confirmed by orthogonal validation sequencing data (212,158 variants). The model improves on manual somatic refinement by reducing bias on calls otherwise subject to high inter-reviewer variability.