Larsen Bjarke Skogstad, Winther Simon, Nissen Louise, Diederichsen Axel, Bøttcher Morten, Renker Matthias, Struijk Johannes Jan, Christensen Mads Græsbøll, Schmidt Samuel Emil
Department of Health Science and Technology, Aalborg University, Fredrik Bajers Vej 7, 9220, Aalborg, Denmark.
Department of Cardiology, Gødstrup Hospital, Herning, Denmark.
Eur Heart J Digit Health. 2022 Oct 10;3(4):600-609. doi: 10.1093/ehjdh/ztac057. eCollection 2022 Dec.
Current early risk stratification of coronary artery disease (CAD) consists of pre-test probability scoring such as the 2019 ESC guidelines on chronic coronary syndromes (ESC2019), which has low specificity and thus rule-out capacity. A newer clinical risk factor model (risk factor-weighted clinical likelihood, RF-CL) showed significantly improved rule-out capacity over the ESC2019 model. The aim of the current study was to investigate if the addition of acoustic features to the RF-CL model could improve the rule-out potential of the best performing clinical risk factor models.
Four studies with heart sound recordings from 2222 patients were pooled and distributed into two data sets: training and test. From a feature bank of 40 acoustic features, a forward-selection technique was used to select three features that were added to the RF-CL model. Using a cutoff of 5% predicted risk of CAD, the developed acoustic-weighted clinical likelihood (A-CL) model showed significantly ( < 0.05) higher specificity of 48.6% than the RF-CL model (specificity of 41.5%) and ESC 2019 model (specificity of 6.9%) while having the same sensitivity of 84.9% as the RF-CL model. Area under the curve of the receiver operating characteristic for the three models was 72.5% for ESC2019, 76.7% for RF-CL, and 79.5% for A-CL.
The proposed A-CL model offers significantly improved rule-out capacity over the ESC2019 model and showed better overall performance than the RF-CL model. The addition of acoustic features to the RF-CL model was shown to significantly improve early risk stratification of symptomatic patients suspected of having stable CAD.
目前冠状动脉疾病(CAD)的早期风险分层包括预测试概率评分,如2019年欧洲心脏病学会(ESC)慢性冠状动脉综合征指南(ESC2019),其特异性较低,因此因此排除能力也较差。一种更新的临床风险因素模型(风险因素加权临床可能性,RF-CL)显示,其排除能力比ESC2019模型有显著提高。本研究的目的是调查在RF-CL模型中加入声学特征是否能提高表现最佳的临床风险因素模型的排除潜力。
汇总了四项对2222例患者进行心音记录的研究,并将其分为两个数据集:训练集和测试集。从40个声学特征的特征库中,采用向前选择技术选择了三个特征,并将其添加到RF-CL模型中。使用CAD预测风险5%的临界值,所开发的声学加权临床可能性(A-CL)模型显示,其特异性为48.6%(P<0.05),显著高于RF-CL模型(特异性为41.5%)和ESC 2019模型(特异性为6.9%),同时与RF-CL模型具有相同的84.9%的敏感性。ESC2019、RF-CL和A-CL三个模型的受试者工作特征曲线下面积分别为72.5%、76.7%和79.5%。
所提出的A-CL模型比ESC2019模型具有显著提高的排除能力,总体表现优于RF-CL模型。在RF-CL模型中加入声学特征可显著改善疑似患有稳定CAD的有症状患者的早期风险分层。