Litcius/Paper detail

Efficient reinterpretation of rare disease cases using Exomiser

Letizia Vestito, Julius O.B. Jacobsen, Susan Walker, Valentina Cipriani, Nomi L. Harris, Melissa Haendel, Chris Mungall, Peter N. Robinson, Damian Smedley

2024npj Genomic Medicine19 citationsDOIOpen Access PDF

Abstract

Whole genome sequencing has transformed rare disease research; however, 50-80% of rare disease patients remain undiagnosed after such testing. Regular reanalysis can identify new diagnoses, especially in newly discovered disease-gene associations, but efficient tools are required to support clinical interpretation. Exomiser, a phenotype-driven variant prioritisation tool, fulfils this role; within the 100,000 Genomes Project (100kGP), diagnoses were identified after reanalysis in 463 (2%) of 24,015 unsolved patients after previous analysis for variants in known disease genes. However, extensive manual interpretation was required. This led us to develop a reanalysis strategy to efficiently reveal candidates from recent disease gene discoveries or newly designated pathogenic/likely pathogenic variants. Optimal settings to highlight new candidates from Exomiser reanalysis were identified with high recall (82%) and precision (88%) when including Exomiser's automated ACMG/AMP classifier, which correctly converted 92% of variants from unknown significance to pathogenic/likely pathogenic. In conclusion, Exomiser efficiently reinterprets previously unsolved cases.

Topics & Concepts

DiseaseMedical diagnosisGenomePhenotypeGeneComputational biologyGeneticsBiologyBioinformaticsMedicinePathologyGenomics and Rare DiseasesGenomics and Phylogenetic StudiesBiomedical Text Mining and Ontologies
Efficient reinterpretation of rare disease cases using Exomiser | Litcius