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Clinical Validation of Targeted and Untargeted Metabolomics Testing for Genetic Disorders: A 3 Year Comparative Study

Naif A. M. Almontashiri, Li Zha, Kim Young, Terence Law, Mark D. Kellogg, Olaf A. Bodamer, Roy W A Peake

2020Scientific Reports37 citationsDOIOpen Access PDF

Abstract

Global untargeted metabolomics (GUM) has entered clinical diagnostics for genetic disorders. We compared the clinical utility of GUM with traditional targeted metabolomics (TM) as a screening tool in patients with established genetic disorders and determined the scope of GUM as a discovery tool in patients with no diagnosis under investigation. We compared TM and GUM data in 226 patients. The first cohort (n = 87) included patients with confirmed inborn errors of metabolism (IEM) and genetic syndromes; the second cohort (n = 139) included patients without diagnosis who were undergoing evaluation for a genetic disorder. In patients with known disorders (n = 87), GUM performed with a sensitivity of 86% (95% CI: 78-91) compared with TM for the detection of 51 diagnostic metabolites. The diagnostic yield of GUM in patients under evaluation with no established diagnosis (n = 139) was 0.7%. GUM successfully detected the majority of diagnostic compounds associated with known IEMs. The diagnostic yield of both targeted and untargeted metabolomics studies is low when assessing patients with non-specific, neurological phenotypes. GUM shows promise as a validation tool for variants of unknown significance in candidate genes in patients with non-specific phenotypes.

Topics & Concepts

MetabolomicsMedicineCohortGenetic diagnosisGenetic testingClinical significanceInternal medicineBioinformaticsGeneticsBiologyGeneMetabolism and Genetic DisordersMitochondrial Function and PathologyMetabolomics and Mass Spectrometry Studies