Lee Heesun, Kang Bong Gyun, Jo Jeonghee, Park Hyo Eun, Yoon Sungroh, Choi Su-Yeon, Kim Min Joo
Department of Internal Medicine, School of Medicine, Seoul National University, Seoul National University Hospital Healthcare System Gangnam Center, Seoul, Republic of Korea.
Interdisciplinary Program in Artificial Intelligence, Seoul National University, Seoul, Republic of Korea.
Front Cardiovasc Med. 2023 Jun 21;10:1167468. doi: 10.3389/fcvm.2023.1167468. eCollection 2023.
Although coronary computed tomography angiography (CCTA) is currently utilized as the frontline test to accurately diagnose coronary artery disease (CAD) in clinical practice, there are still debates regarding its use as a screening tool for the asymptomatic population. Using deep learning (DL), we sought to develop a prediction model for significant coronary artery stenosis on CCTA and identify the individuals who would benefit from undergoing CCTA among apparently healthy asymptomatic adults.
We retrospectively reviewed 11,180 individuals who underwent CCTA as part of routine health check-ups between 2012 and 2019. The main outcome was the presence of coronary artery stenosis of ≥70% on CCTA. We developed a prediction model using machine learning (ML), including DL. Its performance was compared with pretest probabilities, including the pooled cohort equation (PCE), CAD consortium, and updated Diamond-Forrester (UDF) scores.
In the cohort of 11,180 apparently healthy asymptomatic individuals (mean age 56.1 years; men 69.8%), 516 (4.6%) presented with significant coronary artery stenosis on CCTA. Among the ML methods employed, a neural network with multi-task learning (19 selected features), one of the DL methods, was selected due to its superior performance, with an area under the curve (AUC) of 0.782 and a high diagnostic accuracy of 71.6%. Our DL-based model demonstrated a better prediction than the PCE (AUC, 0.719), CAD consortium score (AUC, 0.696), and UDF score (AUC, 0.705). Age, sex, HbA1c, and HDL cholesterol were highly ranked features. Personal education and monthly income levels were also included as important features of the model.
We successfully developed the neural network with multi-task learning for the detection of CCTA-derived stenosis of ≥70% in asymptomatic populations. Our findings suggest that this model may provide more precise indications for the use of CCTA as a screening tool to identify individuals at a higher risk, even in asymptomatic populations, in clinical practice.
尽管冠状动脉计算机断层扫描血管造影(CCTA)目前在临床实践中被用作准确诊断冠状动脉疾病(CAD)的一线检查方法,但对于将其用作无症状人群的筛查工具仍存在争议。我们利用深度学习(DL),试图开发一种针对CCTA上显著冠状动脉狭窄的预测模型,并确定在看似健康的无症状成年人中哪些人将从接受CCTA检查中获益。
我们回顾性分析了2012年至2019年间作为常规健康检查一部分接受CCTA检查的11180名个体。主要结局是CCTA上冠状动脉狭窄≥70%的情况。我们使用包括DL在内的机器学习(ML)开发了一种预测模型。将其性能与检查前概率进行比较,包括合并队列方程(PCE)、CAD联盟和更新的钻石-弗雷斯特(UDF)评分。
在11180名看似健康的无症状个体队列中(平均年龄56.1岁;男性占69.8%),516人(4.6%)在CCTA上表现出显著冠状动脉狭窄。在所采用的ML方法中,具有多任务学习的神经网络(19个选定特征)作为DL方法之一被选中,因其性能优越,曲线下面积(AUC)为0.782,诊断准确率高达71.6%。我们基于DL的模型显示出比PCE(AUC,0.719)、CAD联盟评分(AUC,0.696)和UDF评分(AUC,0.705)更好的预测效果。年龄、性别、糖化血红蛋白和高密度脂蛋白胆固醇是排名靠前的特征。个人教育程度和月收入水平也被纳入模型的重要特征。
我们成功开发了具有多任务学习的神经网络,用于检测无症状人群中CCTA衍生的≥70%的狭窄。我们的研究结果表明,该模型可能为在临床实践中使用CCTA作为筛查工具以识别更高风险个体提供更精确的指征,即使在无症状人群中也是如此。