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      Data-driven discovery and validation of circulating blood-based biomarkers associated with prevalent atrial fibrillation

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          Abstract

          Aims

          Undetected atrial fibrillation (AF) is a major health concern. Blood biomarkers associated with AF could simplify patient selection for screening and further inform ongoing research towards stratified prevention and treatment of AF.

          Methods and results

          Forty common cardiovascular biomarkers were quantified in 638 consecutive patients referred to hospital [mean ± standard deviation age 70 ± 12 years, 398 (62%) male, 294 (46%) with AF] with known AF or ≥2 CHA 2DS 2-VASc risk factors. Paroxysmal or silent AF was ruled out by 7-day ECG monitoring. Logistic regression with forward selection and machine learning algorithms were used to determine clinical risk factors, imaging parameters, and biomarkers associated with AF. Atrial fibrillation was significantly associated with age [bootstrapped odds ratio (OR) per year = 1.060, 95% confidence interval (1.04–1.10); P = 0.001], male sex [OR = 2.022 (1.28–3.56); P = 0.008], body mass index [BMI, OR per unit = 1.060 (1.02–1.12); P = 0.003], elevated brain natriuretic peptide [BNP, OR per fold change = 1.293 (1.11–1.63); P = 0.002], elevated fibroblast growth factor-23 [FGF-23, OR = 1.667 (1.36–2.34); P = 0.001], and reduced TNF-related apoptosis-induced ligand-receptor 2 [TRAIL-R2, OR = 0.242 (0.14–0.32); P = 0.001], but not other biomarkers. Biomarkers improved the prediction of AF compared with clinical risk factors alone (net reclassification improvement = 0.178; P < 0.001). Both logistic regression and machine learning predicted AF well during validation [area under the receiver-operator curve = 0.684 (0.62–0.75) and 0.697 (0.63–0.76), respectively].

          Conclusion

          Three simple clinical risk factors (age, sex, and BMI) and two biomarkers (elevated BNP and elevated FGF-23) identify patients with AF. Further research is warranted to elucidate FGF-23 dependent mechanisms of AF.

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          Most cited references18

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          Independent risk factors for atrial fibrillation in a population-based cohort. The Framingham Heart Study.

          To determine the independent risk factors for atrial fibrillation. Cohort study. The Framingham Heart Study. A total of 2090 men and 2641 women members of the original cohort, free of a history of atrial fibrillation, between the ages of 55 and 94 years. Sex-specific multiple logistic regression models to identify independent risk factors for atrial fibrillation, including age, smoking, diabetes, electrocardiographic left ventricular hypertrophy, hypertension, myocardial infarction, congestive heart failure, and valve disease. During up to 38 years of follow-up, 264 men and 298 women developed atrial fibrillation. After adjusting for age and other risk factors for atrial fibrillation, men had a 1.5 times greater risk of developing atrial fibrillation than women. In the full multivariable model, the odds ratio (OR) of atrial fibrillation for each decade of advancing age was 2.1 for men and 2.2 for women (P < .0001). In addition, after multivariable adjustment, diabetes (OR, 1.4 for men and 1.6 for women), hypertension (OR, 1.5 for men and 1.4 for women), congestive heart failure (OR, 4.5 for men and 5.9 for women), and valve disease (OR, 1.8 for men and 3.4 for women) were significantly associated with risk for atrial fibrillation in both sexes. Myocardial infarction (OR, 1.4) was significantly associated with the development of atrial fibrillation in men. Women were significantly more likely than men to have valvular heart disease as a risk factor for atrial fibrillation. The multivariable models were largely unchanged after eliminating subjects with valvular heart disease. In addition to intrinsic cardiac causes such as valve disease and congestive heart failure, risk factors for cardiovascular disease also predispose to atrial fibrillation. Modification of risk factors for cardiovascular disease may have the added benefit of diminishing the incidence of atrial fibrillation.
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            Natriuretic peptides.

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              Screening for Atrial Fibrillation: A Report of the AF-SCREEN International Collaboration.

              Approximately 10% of ischemic strokes are associated with atrial fibrillation (AF) first diagnosed at the time of stroke. Detecting asymptomatic AF would provide an opportunity to prevent these strokes by instituting appropriate anticoagulation. The AF-SCREEN international collaboration was formed in September 2015 to promote discussion and research about AF screening as a strategy to reduce stroke and death and to provide advocacy for implementation of country-specific AF screening programs. During 2016, 60 expert members of AF-SCREEN, including physicians, nurses, allied health professionals, health economists, and patient advocates, were invited to prepare sections of a draft document. In August 2016, 51 members met in Rome to discuss the draft document and consider the key points arising from it using a Delphi process. These key points emphasize that screen-detected AF found at a single timepoint or by intermittent ECG recordings over 2 weeks is not a benign condition and, with additional stroke factors, carries sufficient risk of stroke to justify consideration of anticoagulation. With regard to the methods of mass screening, handheld ECG devices have the advantage of providing a verifiable ECG trace that guidelines require for AF diagnosis and would therefore be preferred as screening tools. Certain patient groups, such as those with recent embolic stroke of uncertain source (ESUS), require more intensive monitoring for AF. Settings for screening include various venues in both the community and the clinic, but they must be linked to a pathway for appropriate diagnosis and management for screening to be effective. It is recognized that health resources vary widely between countries and health systems, so the setting for AF screening should be both country- and health system-specific. Based on current knowledge, this white paper provides a strong case for AF screening now while recognizing that large randomized outcomes studies would be helpful to strengthen the evidence base.
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                Author and article information

                Journal
                Eur Heart J
                Eur. Heart J
                eurheartj
                European Heart Journal
                Oxford University Press
                0195-668X
                1522-9645
                21 April 2019
                07 January 2019
                07 January 2019
                : 40
                : 16 , Focus Issue on Atrial Fibrillation
                : 1268-1276
                Affiliations
                [1 ]Institute of Cardiovascular Sciences, University of Birmingham, Birmingham, UK
                [2 ]Institute of Cancer and Genomic Sciences, University of Birmingham, Birmingham, UK
                [3 ]Department of Cardiology, Sandwell and West Birmingham Hospitals NHS Trust, Birmingham, UK
                [4 ]Department of Cardiology, University Hospitals Birmingham NHS Foundation Trust, Birmingham, UK
                Author notes
                Corresponding author. Tel: +44 121 414 7042, Fax: +44 121 414 5788, Email: p.kirchhof@ 123456bham.ac.uk

                The Winnie Chua and Yanish Purmah authors contributed equally to this study.

                Article
                ehy815
                10.1093/eurheartj/ehy815
                6475521
                30615112
                a35e398b-ffd0-4170-a959-777d48ad623a
                © The Author(s) 2019. Published by Oxford University Press on behalf of the European Society of Cardiology.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 09 April 2018
                : 28 June 2018
                : 13 November 2018
                Page count
                Pages: 10
                Funding
                Funded by: European Union
                Award ID: 633196
                Funded by: British Heart Foundation 10.13039/501100000274
                Award ID: FS/13/43/30324
                Funded by: Leducq Foundation
                Categories
                Clinical Research
                Atrial Fibrillation

                Cardiovascular Medicine
                atrial fibrillation,biomarkers,machine learning,bnp,fgf-23,validation
                Cardiovascular Medicine
                atrial fibrillation, biomarkers, machine learning, bnp, fgf-23, validation

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