Application of metabolite set enrichment analysis on untargeted metabolomics data prioritises relevant pathways and detects novel biomarkers for inherited metabolic disorders
Publication year
2022Source
Journal of Inherited Metabolic Disease, 45, 4, (2022), pp. 682-695ISSN
Publication type
Article / Letter to editor
Display more detailsDisplay less details
Organization
Human Genetics
Paediatrics
Laboratory Medicine
CMBI
Journal title
Journal of Inherited Metabolic Disease
Volume
vol. 45
Issue
iss. 4
Page start
p. 682
Page end
p. 695
Subject
Radboudumc 3: Disorders of movement DCMN: Donders Center for Medical Neuroscience; Radboudumc 6: Metabolic Disorders RIMLS: Radboud Institute for Molecular Life Sciences; Radboudumc 7: Neurodevelopmental disorders DCMN: Donders Center for Medical Neuroscience; Human Genetics - Radboud University Medical Center; Laboratory Medicine - Radboud University Medical CenterAbstract
Untargeted metabolomics (UM) allows for the simultaneous measurement of hundreds of metabolites in a single analytical run. The sheer amount of data generated in UM hampers its use in patient diagnostics because manual interpretation of all features is not feasible. Here, we describe the application of a pathway-based metabolite set enrichment analysis method to prioritise relevant biological pathways in UM data. We validate our method on a set of 55 patients with a diagnosed inherited metabolic disorder (IMD) and show that it complements feature-based prioritisation of biomarkers by placing the features in a biological context. In addition, we find that by taking enriched pathways shared across different IMDs, we can identify common drugs and compounds that could otherwise obscure genuine disease biomarkers in an enrichment method. Finally, we demonstrate the potential of this method to identify novel candidate biomarkers for known IMDs. Our results show the added value of pathway-based interpretation of UM data in IMD diagnostics context.
This item appears in the following Collection(s)
- Academic publications [243907]
- Electronic publications [130616]
- Faculty of Medical Sciences [92803]
- Open Access publications [104924]
Upload full text
Use your RU credentials (u/z-number and password) to log in with SURFconext to upload a file for processing by the repository team.