Bjerking Louise Hougesen, Winther Simon, Hansen Kim Wadt, Galatius Søren, Böttcher Morten, Prescott Eva
Department of Cardiology, Bispebjerg Frederiksberg Hospital, University of Copenhagen, Bispebjerg Bakke 23, 2400 Copenhagen, Denmark.
Department of Cardiology, Gødstrup Hospital, Herning, Denmark.
Eur Heart J Qual Care Clin Outcomes. 2022 Sep 5;8(6):630-639. doi: 10.1093/ehjqcco/qcac025.
Assessment of pre-test probability (PTP) is an important gatekeeper when selecting patients for diagnostic testing for coronary artery disease (CAD). The 2019 European Society of Cardiology (ESC) guidelines recommend upgrading PTP based on clinical risk factors but provide no estimates of how these affect PTP. We aimed to validate two published PTP models in a contemporary low-CAD-prevalence cohort and compare with the ESC 2019 PTP.
Previously published basic and clinical prediction models and the ESC 2019 PTP were validated in 42 328 patients (54% women) ≥30 years old without previous CAD referred for cardiac computed tomography angiography in a region of Denmark from 2008 to 2017. Obstructive CAD prevalence was 8.8%. The ESC 2019 PTP and basic model included angina symptoms, sex, and age, while the clinical model added diabetes mellitus family history of CAD, and dyslipidaemia. Discrimination was good for all three models [area under the receiver operating curve (AUC) 0.76, 95% confidence interval (CI) (0.75-0.77), 0.74 (0.73-0.75), and 0.76 (0.75-0.76), respectively]. Using the clinically relevant low predicted probability ≤5% of CAD cut-off, the clinical and basic models were well calibrated, whereas the ESC 2019 PTP overestimated CAD prevalence. At a cut-off of ≤5%, the clinical model ruled out 36.2% more patients than the ESC 2019 PTP, n = 23 592 (55.7%) vs. n = 8 245 (19.5%), while missing 824 (22.2%) vs. 132 (3.6%) cases of obstructive CAD.
A prediction model for CAD including cardiovascular risk factors was successfully validated. Implementation of this model would reduce the need for diagnostic testing and serve as gatekeeper if accepting a watchful waiting strategy for one-fifth of the patients.
在为冠状动脉疾病(CAD)诊断检测选择患者时,评估检测前概率(PTP)是一个重要的把关环节。2019年欧洲心脏病学会(ESC)指南建议根据临床风险因素提升PTP,但未给出这些因素如何影响PTP的评估。我们旨在对当代低CAD患病率队列中的两个已发表的PTP模型进行验证,并与ESC 2019 PTP进行比较。
2008年至2017年期间,在丹麦一个地区,对42328名年龄≥30岁、既往无CAD且因心脏计算机断层扫描血管造影而就诊的患者(54%为女性),验证了先前发表的基础和临床预测模型以及ESC 2019 PTP。阻塞性CAD患病率为8.8%。ESC 2019 PTP和基础模型包括心绞痛症状、性别和年龄,而临床模型增加了糖尿病、CAD家族史和血脂异常。所有三个模型的辨别力都很好[受试者操作特征曲线(AUC)下的面积分别为0.76,95%置信区间(CI)(0.75 - 0.77)、0.74(0.73 - 0.75)和0.76(0.75 - 0.76)]。使用临床上相关的低预测概率≤5%的CAD临界值,临床和基础模型校准良好,而ESC 2019 PTP高估了CAD患病率。在≤5%的临界值时,临床模型排除的患者比ESC 2019 PTP多36.2%,分别为n = 23592(55.7%)和n = 8245(19.5%),同时漏诊阻塞性CAD病例分别为824例(22.2%)和132例(3.6%)。
一个包含心血管危险因素的CAD预测模型成功得到验证。实施该模型将减少诊断检测的需求,并且如果对五分之一的患者采用观察等待策略,可作为把关环节。