Prediction model to estimate presence of coronary artery disease: retrospective pooled analysis of existing cohorts

Tessa S.S. Genders(Erasmus University Rotterdam), Ewout W. Steyerberg(Erasmus University Rotterdam), M. G. Myriam Hunink(Harvard University), Koen Nieman(Erasmus University Rotterdam), Tjebbe W. Galema(Erasmus University Rotterdam), Nico R. Mollet(Erasmus University Rotterdam), P. J. de Feyter(Erasmus University Rotterdam), Gabriël P. Krestin(Erasmus University Rotterdam), Hatem Alkadhi(University Hospital of Zurich), Sebastian Leschka(Kantonsspital St. Gallen), L. Desbiolles(University Hospital of Zurich), Matthijs F.L. Meijs(University Medical Center Utrecht), Maarten J. Cramer(University Medical Center Utrecht), Juhani Knuuti(Turku University Hospital), Sami Kajander(Turku University Hospital), Jan Bogaert(KU Leuven), Kaatje Goetschalckx(KU Leuven), Filippo Cademartiri(Ospedale Pediatrico Giovanni XXIII), Erica Maffei(Ospedale Papa Giovanni XXIII), Chiara Martini(Ospedale Papa Giovanni XXIII), Sara Seitun, Annachiara Aldrovandi, Simon Wildermuth(Kantonsspital St. Gallen), Bjoern Stinn(Kantonsspital St. Gallen), Jürgen Fornaro(Kantonsspital St. Gallen), Gudrun Feuchtner(Innsbruck Medical University), Tobias De Zordo(Innsbruck Medical University), T. Auer(Innsbruck Medical University), Fabian Plank(Innsbruck Medical University), Guy Friedrich(Innsbruck Medical University), Francesca Pugliese(Barts Health NHS Trust), Steffen E. Petersen(Barts Health NHS Trust), Ceri Davies(Barts Health NHS Trust), U. Joseph Schoepf(Medical University of South Carolina), Garrett W. Rowe(Medical University of South Carolina), Carlos A.G. van Mieghem(Onze Lieve Vrouwziekenhuis Hospital), Luc Van Driessche(AZ Sint-Blasius), В. Е. Синицын, Deepa Gopalan(Papworth Hospital), Konstantin Nikolaou(München Klinik), Fabian Bamberg(München Klinik), Roberto Caldeira Cury(Baptist Hospital of Miami), Juan Battle(Baptist Hospital of Miami), Pál Maurovich‐Horvat(Semmelweis University), Andrea Bartykowszki(Semmelweis University), B. Merkely(Semmelweis University), D. Becker(Semmelweis University), Martin Hadamitzky(Deutsches Herzzentrum München), Jörg Hausleiter(Deutsches Herzzentrum München), Marc Dewey(Humboldt-Universität zu Berlin), Elke Zimmermann(Humboldt-Universität zu Berlin), Michael Laule(Charité - Universitätsmedizin Berlin)
BMJ
June 12, 2012
Cited by 312Open Access
Full Text

Abstract

OBJECTIVES: To develop prediction models that better estimate the pretest probability of coronary artery disease in low prevalence populations. DESIGN: Retrospective pooled analysis of individual patient data. SETTING: 18 hospitals in Europe and the United States. PARTICIPANTS: Patients with stable chest pain without evidence for previous coronary artery disease, if they were referred for computed tomography (CT) based coronary angiography or catheter based coronary angiography (indicated as low and high prevalence settings, respectively). MAIN OUTCOME MEASURES: Obstructive coronary artery disease (≥ 50% diameter stenosis in at least one vessel found on catheter based coronary angiography). Multiple imputation accounted for missing predictors and outcomes, exploiting strong correlation between the two angiography procedures. Predictive models included a basic model (age, sex, symptoms, and setting), clinical model (basic model factors and diabetes, hypertension, dyslipidaemia, and smoking), and extended model (clinical model factors and use of the CT based coronary calcium score). We assessed discrimination (c statistic), calibration, and continuous net reclassification improvement by cross validation for the four largest low prevalence datasets separately and the smaller remaining low prevalence datasets combined. RESULTS: We included 5677 patients (3283 men, 2394 women), of whom 1634 had obstructive coronary artery disease found on catheter based coronary angiography. All potential predictors were significantly associated with the presence of disease in univariable and multivariable analyses. The clinical model improved the prediction, compared with the basic model (cross validated c statistic improvement from 0.77 to 0.79, net reclassification improvement 35%); the coronary calcium score in the extended model was a major predictor (0.79 to 0.88, 102%). Calibration for low prevalence datasets was satisfactory. CONCLUSIONS: Updated prediction models including age, sex, symptoms, and cardiovascular risk factors allow for accurate estimation of the pretest probability of coronary artery disease in low prevalence populations. Addition of coronary calcium scores to the prediction models improves the estimates.


Related Papers

No related papers found

Powered by citation graph analysis