Literature DB >> 33462107

CHARGE-AF in a national routine primary care electronic health records database in the Netherlands: validation for 5-year risk of atrial fibrillation and implications for patient selection in atrial fibrillation screening.

Jelle C L Himmelreich1, Wim A M Lucassen2, Ralf E Harskamp2, Claire Aussems3, Henk C P M van Weert2, Mark M J Nielen3.   

Abstract

AIMS: To validate a multivariable risk prediction model (Cohorts for Heart and Aging Research in Genomic Epidemiology model for atrial fibrillation (CHARGE-AF)) for 5-year risk of atrial fibrillation (AF) in routinely collected primary care data and to assess CHARGE-AF's potential for automated, low-cost selection of patients at high risk for AF based on routine primary care data.
METHODS: We included patients aged ≥40 years, free of AF and with complete CHARGE-AF variables at baseline, 1 January 2014, in a representative, nationwide routine primary care database in the Netherlands (Nivel-PCD). We validated CHARGE-AF for 5-year observed AF incidence using the C-statistic for discrimination, and calibration plot and stratified Kaplan-Meier plot for calibration. We compared CHARGE-AF with other predictors and assessed implications of using different CHARGE-AF cut-offs to select high-risk patients.
RESULTS: Among 111 475 patients free of AF and with complete CHARGE-AF variables at baseline (17.2% of all patients aged ≥40 years and free of AF), mean age was 65.5 years, and 53% were female. Complete CHARGE-AF cases were older and had higher AF incidence and cardiovascular comorbidity rate than incomplete cases. There were 5264 (4.7%) new AF cases during 5-year follow-up among complete cases. CHARGE-AF's C-statistic for new AF was 0.74 (95% CI 0.73 to 0.74). The calibration plot showed slight risk underestimation in low-risk deciles and overestimation of absolute AF risk in those with highest predicted risk. The Kaplan-Meier plot with categories <2.5%, 2.5%-5% and >5% predicted 5-year risk was highly accurate. CHARGE-AF outperformed CHA2DS2-VASc (Cardiac failure or dysfunction, Hypertension, Age >=75 [Doubled], Diabetes, Stroke [Doubled]-Vascular disease, Age 65-74, and Sex category [Female]) and age alone as predictors for AF. Dichotomisation at cut-offs of 2.5%, 5% and 10% baseline CHARGE-AF risk all showed merits for patient selection in AF screening efforts.
CONCLUSION: In patients with complete baseline CHARGE-AF data through routine Dutch primary care, CHARGE-AF accurately assessed AF risk among older primary care patients, outperformed both CHA2DS2-VASc and age alone as predictors for AF and showed potential for automated, low-cost patient selection in AF screening. © Author(s) (or their employer(s)) 2021. Re-use permitted under CC BY. Published by BMJ.

Entities:  

Keywords:  atrial fibrillation; electronic health records; epidemiology; risk factors

Year:  2021        PMID: 33462107      PMCID: PMC7816907          DOI: 10.1136/openhrt-2020-001459

Source DB:  PubMed          Journal:  Open Heart        ISSN: 2053-3624


  34 in total

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4.  B-type natriuretic peptide and C-reactive protein in the prediction of atrial fibrillation risk: the CHARGE-AF Consortium of community-based cohort studies.

Authors:  Moritz F Sinner; Katherine A Stepas; Carlee B Moser; Bouwe P Krijthe; Thor Aspelund; Nona Sotoodehnia; João D Fontes; A Cecile J W Janssens; Richard A Kronmal; Jared W Magnani; Jacqueline C Witteman; Alanna M Chamberlain; Steven A Lubitz; Renate B Schnabel; Ramachandran S Vasan; Thomas J Wang; Sunil K Agarwal; David D McManus; Oscar H Franco; Xiaoyan Yin; Martin G Larson; Gregory L Burke; Lenore J Launer; Albert Hofman; Daniel Levy; John S Gottdiener; Stefan Kääb; David Couper; Tamara B Harris; Brad C Astor; Christie M Ballantyne; Ron C Hoogeveen; Andrew E Arai; Elsayed Z Soliman; Patrick T Ellinor; Bruno H C Stricker; Vilmundur Gudnason; Susan R Heckbert; Michael J Pencina; Emelia J Benjamin; Alvaro Alonso
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Journal:  J Clin Endocrinol Metab       Date:  2015-08-11       Impact factor: 5.958

6.  A Simple Clinical Risk Score (C2HEST) for Predicting Incident Atrial Fibrillation in Asian Subjects: Derivation in 471,446 Chinese Subjects, With Internal Validation and External Application in 451,199 Korean Subjects.

Authors:  Yan-Guang Li; Daniele Pastori; Alessio Farcomeni; Pil-Sung Yang; Eunsun Jang; Boyoung Joung; Yu-Tang Wang; Yu-Tao Guo; Gregory Y H Lip
Journal:  Chest       Date:  2018-10-04       Impact factor: 9.410

7.  Refining Prediction of Atrial Fibrillation Risk in the General Population With Analysis of P-Wave Axis (from the Atherosclerosis Risk in Communities Study).

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8.  Sex Differences and Similarities in Atrial Fibrillation Epidemiology, Risk Factors, and Mortality in Community Cohorts: Results From the BiomarCaRE Consortium (Biomarker for Cardiovascular Risk Assessment in Europe).

Authors:  Christina Magnussen; Teemu J Niiranen; Francisco M Ojeda; Francesco Gianfagna; Stefan Blankenberg; Inger Njølstad; Erkki Vartiainen; Susana Sans; Gerard Pasterkamp; Maria Hughes; Simona Costanzo; Maria Benedetta Donati; Pekka Jousilahti; Allan Linneberg; Tarja Palosaari; Giovanni de Gaetano; Martin Bobak; Hester M den Ruijter; Ellisiv Mathiesen; Torben Jørgensen; Stefan Söderberg; Kari Kuulasmaa; Tanja Zeller; Licia Iacoviello; Veikko Salomaa; Renate B Schnabel
Journal:  Circulation       Date:  2017-10-16       Impact factor: 29.690

9.  Performance of the CHARGE-AF risk model for incident atrial fibrillation in the EPIC Norfolk cohort.

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10.  Development and Validation of a Prediction Model for Atrial Fibrillation Using Electronic Health Records.

Authors:  Olivia L Hulme; Shaan Khurshid; Lu-Chen Weng; Christopher D Anderson; Elizabeth Y Wang; Jeffrey M Ashburner; Darae Ko; David D McManus; Emelia J Benjamin; Patrick T Ellinor; Ludovic Trinquart; Steven A Lubitz
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2.  Validating risk models versus age alone for atrial fibrillation in a young Dutch population cohort: should atrial fibrillation risk prediction be expanded to younger community members?

Authors:  Jelle C L Himmelreich; Ralf E Harskamp; Bastiaan Geelhoed; Saverio Virdone; Wim A M Lucassen; Ron T Gansevoort; Michiel Rienstra
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3.  Re-CHARGE-AF: Recalibration of the CHARGE-AF Model for Atrial Fibrillation Risk Prediction in Patients With Acute Stroke.

Authors:  Jeffrey M Ashburner; Xin Wang; Xinye Li; Shaan Khurshid; Darae Ko; Ana Trisini Lipsanopoulos; Priscilla R Lee; Taylor Carmichael; Ashby C Turner; Corban Jackson; Patrick T Ellinor; Emelia J Benjamin; Steven J Atlas; Daniel E Singer; Ludovic Trinquart; Steven A Lubitz; Christopher D Anderson
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4.  Prediction performance and fairness heterogeneity in cardiovascular risk models.

Authors:  Uri Kartoun; Shaan Khurshid; Bum Chul Kwon; Aniruddh P Patel; Puneet Batra; Anthony Philippakis; Amit V Khera; Patrick T Ellinor; Steven A Lubitz; Kenney Ng
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5.  Prediction of incident atrial fibrillation in community-based electronic health records: a systematic review with meta-analysis.

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6.  Predicting patient-level new-onset atrial fibrillation from population-based nationwide electronic health records: protocol of FIND-AF for developing a precision medicine prediction model using artificial intelligence.

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  6 in total

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