Podgorsak Alexander R, Sommer Kelsey N, Reddy Abhinay, Iyer Vijay, Wilson Michael F, Rybicki Frank J, Mitsouras Dimitrios, Sharma Umesh, Fujimoto Shinchiro, Kumamaru Kanako K, Angel Erin, Ionita Ciprian N
From the Canon Stroke and Vascular Research Center, 875 Ellicott Street, Buffalo, NY, 14222, USA.
Department of Radiology, University of Cincinnati, 234 Goodman Street, Cincinnati, OH, USA.
Med Phys. 2020 Sep;47(9):3996-4004. doi: 10.1002/mp.14339. Epub 2020 Jul 13.
Coronary computed tomography angiography (CTA) has one of the highest diagnostic sensitivities for detection of the significance of coronary artery disease (CAD); however, sensitivity is moderate and may result in increased catheterization rates. We performed an efficacy study to determine whether a trained machine learning algorithm that uses coronary CTA data may improve CAD diagnosis accuracy.
Sixty-four-patient image datasets based on coronary CTA were retrospectively collected to generate eight views considering 45° increments around the coronary artery centerline. The dataset was randomly split into training and testing cohorts. Invasive FFR measurements were used as ground truth labels. A convolutional neural network (CNN) was trained and the model's capacity to predict severity of CAD was assessed on the testing cohort. Classification accuracy and area under the receiver operating characteristic curve (AUROC) analysis were performed. Similar CAD severity classification accuracy and AUROC analyses were performed using only percent diameter stenosis (%DS) and CT-derived FFR performed by 13 operators with various levels of expertise.
Classification accuracy over the test cohort was 80.9% using the trained network and 72.4% using the user-operated CT-derived FFR software. AUROC over the test cohort was 0.862 using the trained network, 0.807 using %DS, and 0.758 using the human-operated CT-derived FFR software.
A trained neural network compared noninferiorly in-terms of classification accuracy and AUROC with human operators of a CT-derived FFR software, and in-terms of AUROC with clinical decision-making using %DS.
冠状动脉计算机断层扫描血管造影(CTA)在检测冠状动脉疾病(CAD)的严重程度方面具有最高的诊断敏感性之一;然而,其敏感性为中等水平,可能会导致导管插入率增加。我们进行了一项疗效研究,以确定使用冠状动脉CTA数据的经过训练的机器学习算法是否可以提高CAD诊断的准确性。
回顾性收集基于冠状动脉CTA的64例患者的图像数据集,以围绕冠状动脉中心线以45°增量生成八个视图。该数据集被随机分为训练组和测试组。有创血流储备分数(FFR)测量用作真实标签。训练了一个卷积神经网络(CNN),并在测试组上评估了该模型预测CAD严重程度的能力。进行了分类准确性和受试者操作特征曲线下面积(AUROC)分析。使用仅直径狭窄百分比(%DS)和由13名具有不同专业水平的操作员执行的CT衍生FFR进行了类似的CAD严重程度分类准确性和AUROC分析。
使用经过训练的网络,测试组的分类准确性为80.9%,使用用户操作的CT衍生FFR软件为72.4%。使用经过训练的网络,测试组的AUROC为0.862,使用%DS为0.807,使用人工操作的CT衍生FFR软件为0.758。
经过训练的神经网络在分类准确性和AUROC方面与CT衍生FFR软件的人工操作员相比不逊色,在AUROC方面与使用%DS的临床决策相比也不逊色。