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Exploring the incremental utility of circulating biomarkers for robust risk prediction of incident atrial fibrillation in European cohorts using regressions and modern machine learning methods

Betul Toprak, Stephanie Brandt, Jan Brederecke, Francesco Gianfagna, Julie K. K. Vishram-Nielsen, Francisco M. Ojeda, Simona Costanzo, Christin S. Borschel, Stefan Soderberg, Ioannis Katsoularis, Stephan Camen, Erkki Vartiainen, Maria Benedetta Donati, Jukka Kontto, Martin Bobak, Ellisiv B. Mathiesen, Allan Linneberg, Wolfgang Koenig, Maja-Lisa Lochen, Augusto Di Castelnuovo, Stefan Blankenberg, Giovanni de Gaetano, Kari Kuulasmaa, Veikko Salomaa, Licia Iacoviello, Teemu Niiranen, Tanja Zeller, Renate B. Schnabel

Europace : European pacing, arrhythmias, and cardiac electrophysiology : journal of the working groups on cardiac pacing, arrhythmias, and cardiac cellular electrophysiology of the European Society of Cardiology(2023)

Cited 4|Views62
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Abstract
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.
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Key words
Atrial fibrillation,Biomarkers,Risk Prediction,Machine learning,Epidemiology,Community
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