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Metabolomic and Genomic Prediction of Common Diseases in 700,217 Participants in Three National Biobanks

Overview
Journal Nat Commun
Specialty Biology
Date 2024 Nov 21
PMID 39572536
Affiliations
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Abstract

Identifying individuals at high risk of chronic diseases via easily measured biomarkers could enhance efforts to prevent avoidable illness and death. Using 'omic data can stratify risk for many diseases simultaneously from a single measurement that captures multiple molecular predictors of risk. Here we present nuclear magnetic resonance metabolomics in blood samples from 700,217 participants in three national biobanks. We built metabolomic scores that identify high-risk groups for diseases that cause the most morbidity in high-income countries and show consistent cross-biobank replication of the relative risk of disease for these groups. We show that these metabolomic scores are more strongly associated with disease onset than polygenic scores for most of these diseases. In a subset of 18,709 individuals with metabolomic biomarkers measured at two time points we show that people whose scores change have different risk of disease, suggesting that repeat measurements capture changes both to health status and disease risk possibly due to treatment, lifestyle changes or other factors. Lastly, we assessed the incremental predictive value of metabolomic scores over existing clinical risk scores for multiple diseases and found modest improvements in discrimination for several diseases whose clinical utility, while promising, remains to be determined.

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References
1.
Fischer K, Kettunen J, Wurtz P, Haller T, Havulinna A, Kangas A . Biomarker profiling by nuclear magnetic resonance spectroscopy for the prediction of all-cause mortality: an observational study of 17,345 persons. PLoS Med. 2014; 11(2):e1001606. PMC: 3934819. DOI: 10.1371/journal.pmed.1001606. View

2.
Walford G, Porneala B, Dauriz M, Vassy J, Cheng S, Rhee E . Metabolite traits and genetic risk provide complementary information for the prediction of future type 2 diabetes. Diabetes Care. 2014; 37(9):2508-14. PMC: 4140156. DOI: 10.2337/dc14-0560. View

3.
Hippisley-Cox J, Coupland C, Brindle P . Development and validation of QRISK3 risk prediction algorithms to estimate future risk of cardiovascular disease: prospective cohort study. BMJ. 2017; 357:j2099. PMC: 5441081. DOI: 10.1136/bmj.j2099. View

4.
Liu X, Pawitan Y, Clements M . Parametric and penalized generalized survival models. Stat Methods Med Res. 2016; 27(5):1531-1546. DOI: 10.1177/0962280216664760. View

5.
Wurtz P, Kangas A, Soininen P, Lawlor D, Davey Smith G, Ala-Korpela M . Quantitative Serum Nuclear Magnetic Resonance Metabolomics in Large-Scale Epidemiology: A Primer on -Omic Technologies. Am J Epidemiol. 2017; 186(9):1084-1096. PMC: 5860146. DOI: 10.1093/aje/kwx016. View