Department of Radiology, University Hospital Basel, Petersgraben 4, 4031 Basel, Switzerland.
Siemens Healthineers, 755 College Rd E, 08540 Princeton, NJ, USA.
Eur Heart J Cardiovasc Imaging. 2022 Jun 1;23(6):846-854. doi: 10.1093/ehjci/jeab119.
To present and validate a fully automated, deep learning (DL)-based branch-wise coronary artery calcium (CAC) scoring algorithm on a multi-centre dataset.
We retrospectively included 1171 patients referred for a CAC computed tomography examination. Total CAC scores for each case were manually evaluated by a human reader. Next, each dataset was fully automatically evaluated by the DL-based software solution with output of the total CAC score and sub-scores per coronary artery (CA) branch [right coronary artery (RCA), left main (LM), left anterior descending (LAD), and circumflex (CX)]. Three readers independently manually scored the CAC for all CA branches for 300 cases from a single centre and formed the consensus using a majority vote rule, serving as the reference standard. Established CAC cut-offs for the total Agatston score were used for risk group assignments. The performance of the algorithm was evaluated using metrics for risk class assignment based on total Agatston score, and unweighted Cohen's Kappa for branch label assignment. The DL-based software solution yielded a class accuracy of 93% (1085/1171) with a sensitivity, specificity, and accuracy of detecting non-zero coronary calcium being 97%, 93%, and 95%. The overall accuracy of the algorithm for branch label classification was 94% (LM: 89%, LAD: 91%, CX: 93%, RCA: 100%) with a Cohen's kappa of k = 0.91.
Our results demonstrate that fully automated total and vessel-specific CAC scoring is feasible using a DL-based algorithm. There was a high agreement with the manually assessed total CAC from a multi-centre dataset and the vessel-specific scoring demonstrated consistent and reproducible results.
提出并验证一种基于深度学习(DL)的全自动冠状动脉钙化(CAC)分支评分算法在多中心数据集上的应用。
我们回顾性纳入了 1171 例因 CAC 计算机断层扫描检查而就诊的患者。每位患者的总 CAC 评分均由人工读者进行评估。然后,每个数据集均由基于 DL 的软件解决方案全自动评估,该软件解决方案输出总 CAC 评分和每个冠状动脉(CA)分支的亚评分[右冠状动脉(RCA)、左主干(LM)、左前降支(LAD)和回旋支(CX)]。三位读者独立地对来自单个中心的 300 例患者的所有 CA 分支的 CAC 进行手动评分,并采用多数票规则形成共识,作为参考标准。总 Agatston 评分的 CAC 既定切点用于风险组分配。使用基于总 Agatston 评分的风险类别分配指标以及分支标签分配的未加权 Cohen Kappa 评估算法的性能。基于 DL 的软件解决方案的分类准确率为 93%(1171/1171),检测非零冠状动脉钙的灵敏度、特异度和准确度分别为 97%、93%和 95%。该算法的总体分支标签分类准确率为 94%(LM:89%,LAD:91%,CX:93%,RCA:100%),Cohen Kappa 值为 k=0.91。
我们的结果表明,使用基于 DL 的算法可实现全自动的总 CAC 和血管特异性 CAC 评分。该算法与多中心数据集的手动评估总 CAC 高度一致,血管特异性评分的结果具有一致性和可重复性。