Division of Cardiology Severance Cardiovascular Hospital Yonsei University College of Medicine Yonsei University Health System Seoul South Korea.
Department of Radiology NewYork-Presbyterian Hospital and Weill Cornell Medicine New York NY.
J Am Heart Assoc. 2020 Mar 3;9(5):e013958. doi: 10.1161/JAHA.119.013958. Epub 2020 Feb 22.
Background Rapid coronary plaque progression (RPP) is associated with incident cardiovascular events. To date, no method exists for the identification of individuals at risk of RPP at a single point in time. This study integrated coronary computed tomography angiography-determined qualitative and quantitative plaque features within a machine learning (ML) framework to determine its performance for predicting RPP. Methods and Results Qualitative and quantitative coronary computed tomography angiography plaque characterization was performed in 1083 patients who underwent serial coronary computed tomography angiography from the PARADIGM (Progression of Atherosclerotic Plaque Determined by Computed Tomographic Angiography Imaging) registry. RPP was defined as an annual progression of percentage atheroma volume ≥1.0%. We employed the following ML models: model 1, clinical variables; model 2, model 1 plus qualitative plaque features; model 3, model 2 plus quantitative plaque features. ML models were compared with the atherosclerotic cardiovascular disease risk score, Duke coronary artery disease score, and a logistic regression statistical model. 224 patients (21%) were identified as RPP. Feature selection in ML identifies that quantitative computed tomography variables were higher-ranking features, followed by qualitative computed tomography variables and clinical/laboratory variables. ML model 3 exhibited the highest discriminatory performance to identify individuals who would experience RPP when compared with atherosclerotic cardiovascular disease risk score, the other ML models, and the statistical model (area under the receiver operating characteristic curve in ML model 3, 0.83 [95% CI 0.78-0.89], versus atherosclerotic cardiovascular disease risk score, 0.60 [0.52-0.67]; Duke coronary artery disease score, 0.74 [0.68-0.79]; ML model 1, 0.62 [0.55-0.69]; ML model 2, 0.73 [0.67-0.80]; all <0.001; statistical model, 0.81 [0.75-0.87], =0.128). Conclusions Based on a ML framework, quantitative atherosclerosis characterization has been shown to be the most important feature when compared with clinical, laboratory, and qualitative measures in identifying patients at risk of RPP.
快速冠状动脉斑块进展(RPP)与心血管事件的发生有关。迄今为止,还没有一种方法可以在单一时间点确定有 RPP 风险的个体。本研究在机器学习(ML)框架内整合了冠状动脉 CT 血管造影确定的定性和定量斑块特征,以确定其预测 RPP 的性能。
对来自 PARADIGM(通过计算机断层扫描血管造影成像确定动脉粥样硬化斑块进展)登记处接受连续冠状动脉 CT 血管造影的 1083 例患者进行了定性和定量冠状动脉 CT 血管造影斑块特征分析。RPP 的定义为每年斑块体积百分比进展≥1.0%。我们采用了以下 ML 模型:模型 1,临床变量;模型 2,模型 1 加定性斑块特征;模型 3,模型 2 加定量斑块特征。将 ML 模型与动脉粥样硬化性心血管疾病风险评分、杜克冠状动脉疾病评分和逻辑回归统计模型进行比较。224 例患者(21%)被确定为 RPP。ML 中的特征选择表明,定量 CT 变量是排名较高的特征,其次是定性 CT 变量和临床/实验室变量。与动脉粥样硬化性心血管疾病风险评分、其他 ML 模型和统计模型相比,ML 模型 3 在识别可能发生 RPP 的个体方面表现出最高的判别性能(ML 模型 3 的接受者操作特征曲线下面积为 0.83 [95%CI 0.78-0.89],而动脉粥样硬化性心血管疾病风险评分的面积为 0.60 [0.52-0.67];杜克冠状动脉疾病评分,0.74 [0.68-0.79];ML 模型 1,0.62 [0.55-0.69];ML 模型 2,0.73 [0.67-0.80];均<0.001;统计模型,0.81 [0.75-0.87],=0.128)。
基于 ML 框架,与临床、实验室和定性测量相比,定量动脉粥样硬化特征在识别有 RPP 风险的患者方面显示出最重要的特征。