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Phenotype-aware prioritisation of rare Mendelian disease variants

Catherine Kelly, Anita Szabó, Nikolas Pontikos, Gavin Arno, Peter N. Robinson, Julius O.B. Jacobsen, Damian Smedley, Valentina Cipriani

2022Trends in Genetics33 citationsDOIOpen Access PDF

Abstract

A molecular diagnosis from the analysis of sequencing data in rare Mendelian diseases has a huge impact on the management of patients and their families. Numerous patient phenotype-aware variant prioritisation (VP) tools have been developed to help automate this process, and shorten the diagnostic odyssey, but performance statistics on real patient data are limited. Here we identify, assess, and compare the performance of all up-to-date, freely available, and programmatically accessible tools using a whole-exome, retinal disease dataset from 134 individuals with a molecular diagnosis. All tools were able to identify around two-thirds of the genetic diagnoses as the top-ranked candidate, with LIRICAL performing best overall. Finally, we discuss the challenges to overcome most cases remaining undiagnosed after current, state-of-the-art practices.

Topics & Concepts

BiologyMendelian inheritancePhenotypeGeneticsDiseaseClinical phenotypeOMIM : Online Mendelian Inheritance in ManComputational biologyEvolutionary biologyGenePathologyMedicineGenomics and Rare DiseasesBiomedical Text Mining and OntologiesGenomic variations and chromosomal abnormalities
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