General Electric Healthcare, 78530 Buc, France.
General Electric Healthcare, 78530 Buc, France; CentraleSupélec, Université Paris-Saclay, CentraleSupélec, Inria, 91192 Gif-sur-Yvette, France.
Diagn Interv Imaging. 2021 Nov;102(11):683-690. doi: 10.1016/j.diii.2021.05.004. Epub 2021 Jun 5.
The purpose of this study was to develop and evaluate an algorithm that can automatically estimate the amount of coronary artery calcium (CAC) from unenhanced electrocardiography (ECG)-gated computed tomography (CT) cardiac volume acquisitions by using convolutional neural networks (CNN).
The method used a set of five CNN with three-dimensional (3D) U-Net architecture trained on a database of 783 CT examinations to detect and segment coronary artery calcifications in a 3D volume. The Agatston score, the conventional CAC scoring, was then computed slice by slice from the resulting segmentation mask and compared to the ground truth manually estimated by radiologists. The quality of the estimation was assessed with the concordance index (C-index) on CAC risk category on a separate testing set of 98 independent CT examinations.
The final model yielded a C-index of 0.951 on the testing set. The remaining errors of the method were mainly observed on small-size and/or low-density calcifications, or calcifications located near the mitral valve or ring.
The deep learning-based method proposed here to compute automatically the CAC score from unenhanced-ECG-gated cardiac CT is fast, robust and yields accuracy similar to those of other artificial intelligence methods, which could improve workflow efficiency, eliminating the time spent on manually selecting coronary calcifications to compute the Agatston score.
本研究旨在开发和评估一种算法,该算法可以通过卷积神经网络(CNN)自动从未经增强的心电图(ECG)门控计算机断层扫描(CT)心脏容积采集估算冠状动脉钙(CAC)的量。
该方法使用一组五个具有三维(3D)U-Net 架构的 CNN,在 783 次 CT 检查的数据库上进行训练,以检测和分割 3D 容积中的冠状动脉钙化。然后,从所得分割掩模中逐片计算 Agatston 评分(传统的 CAC 评分),并与放射科医生手动估计的金标准进行比较。在 98 次独立 CT 检查的单独测试集中,使用一致性指数(C-index)评估估计质量。
最终模型在测试集中的 C-index 为 0.951。该方法的剩余误差主要出现在小尺寸和/或低密度钙化或位于二尖瓣或环附近的钙化上。
这里提出的基于深度学习的方法可从未经增强的 ECG 门控心脏 CT 自动计算 CAC 评分,速度快,稳健,且准确性与其他人工智能方法相似,这可以提高工作流程效率,消除手动选择冠状动脉钙化以计算 Agatston 评分所花费的时间。