Exploring the incremental utility of circulating biomarkers for robust risk prediction of incident atrial fibrillation in European cohorts using regressions and modern machine learning methodsShow others and affiliations
2023 (English)In: Europace, ISSN 1099-5129, E-ISSN 1532-2092, Vol. 25, no 3, p. 812-819Article in journal (Refereed) Published
Abstract [en]
Aims: To identify robust circulating predictors for incident atrial fibrillation (AF) using classical regressions and machine learning (ML) techniques within a broad spectrum of candidate variables.
Methods and results: In pooled European community cohorts (n = 42 280 individuals), 14 routinely available biomarkers mirroring distinct pathophysiological pathways including lipids, inflammation, renal, and myocardium-specific markers (N-terminal pro B-type natriuretic peptide [NT-proBNP], high-sensitivity troponin I [hsTnI]) were examined in relation to incident AF using Cox regressions and distinct ML methods. Of 42 280 individuals (21 843 women [51.7%]; median [interquartile range, IQR] age, 52.2 [42.7, 62.0] years), 1496 (3.5%) developed AF during a median follow-up time of 5.7 years. In multivariable-adjusted Cox-regression analysis, NT-proBNP was the strongest circulating predictor of incident AF [hazard ratio (HR) per standard deviation (SD), 1.93 (95% CI, 1.82-2.04); P < 0.001]. Further, hsTnI [HR per SD, 1.18 (95% CI, 1.13-1.22); P < 0.001], cystatin C [HR per SD, 1.16 (95% CI, 1.10-1.23); P < 0.001], and C-reactive protein [HR per SD, 1.08 (95% CI, 1.02-1.14); P = 0.012] correlated positively with incident AF. Applying various ML techniques, a high inter-method consistency of selected candidate variables was observed. NT-proBNP was identified as the blood-based marker with the highest predictive value for incident AF. Relevant clinical predictors were age, the use of antihypertensive medication, and body mass index.
Conclusion: Using different variable selection procedures including ML methods, NT-proBNP consistently remained the strongest blood-based predictor of incident AF and ranked before classical cardiovascular risk factors. The clinical benefit of these findings for identifying at-risk individuals for targeted AF screening needs to be elucidated and tested prospectively.
Place, publisher, year, edition, pages
Oxford University Press, 2023. Vol. 25, no 3, p. 812-819
Keywords [en]
Atrial fibrillation, Biomarkers, Community, Epidemiology, Machine learning, Risk Prediction
National Category
Cardiology and Cardiovascular Disease
Identifiers
URN: urn:nbn:se:umu:diva-202306DOI: 10.1093/europace/euac260ISI: 000908300000001PubMedID: 36610061Scopus ID: 2-s2.0-85164810883OAI: oai:DiVA.org:umu-202306DiVA, id: diva2:1724602
Funder
EU, Horizon 2020, 648131EU, Horizon 2020, 847770EU, Horizon 2020, 825903EU, Horizon 2020, 847770EU, FP7, Seventh Framework Programme, HEALTH -F4-2007-201413EU, FP7, Seventh Framework Programme, HEALTH-F3-2010-242244EU, FP7, Seventh Framework Programme, HEALTH-F2-2011-278913Norrbotten County CouncilRegion VästerbottenSwedish Heart Lung Foundation2023-01-092023-01-092025-02-10Bibliographically approved