Park Doyoung, Ng Jedidiah, Zhong Yixin, Tan Chun Sheng Alvin, Wang Xiaomeng, Lai Gillianne Geet Yi, Zhong Liang, Ooi Su Kai Gideon, Tan Daniel Shao Weng, Baskaran Lohendran
CVS.AI, National Heart Research Institute of Singapore, Singapore, Singapore.
Duke-NUS Medical School, National University of Singapore, Singapore, Singapore.
Sci Rep. 2025 Jul 1;15(1):21744. doi: 10.1038/s41598-025-05785-5.
Coronary artery calcification score (CACS), also known as the Agatston score, is a significant prognostic tool for cardiovascular disease (CVD) that utilizes computed tomography (CT). We expand our previously proposed algorithm, Residual-block Inspired Coordinate Attention U-Net (RICAU-Net), to evaluate its generalizability on CT data from previously unseen scanners for lesion-specific CAC segmentation. The multi-vendor datasets were 1,108 CT scans acquired by Siemens, GE, Philips, and Toshiba. We created four groups of datasets, using data from the three scanners as the training and validation sets, while the last one as the test set to evaluate the algorithm on data from previously unseen scanners. RICAU-Net was trained using the datasets for automatic lesion-specific CAC segmentation and calcium scoring. The performance of lesion-specific segmentation and calcium scoring were evaluated using per-lesion Dice scores and intraclass correlation coefficient (ICC). And Bland-Altman plot analysis was conducted to examine the agreement between the CAC score derived from the prediction results and the ground truth. The proposed algorithm exhibited a mean absolute difference of less than 5% between the per-lesion Dice scores of the validation and test sets, indicating good generalizability on test sets comprised of data from unseen scanners during the training and validation phases. ICC analysis demonstrates that the Agatston scores calculated using predictions from RICAU-Net and manual segmentation exhibited excellent reliability at the per-patient level across all groups with ICC and 95% confidence intervals: 0.95 (0.95-0.96), 0.99 (0.99-1.00), 0.99 (0.99-0.99), and 1.00 (0.99-1.00) for group 1, 2, 3, and 4 respectively. Our algorithm demonstrates generalized performance on data from previously unseen scanners, making it potentially more suitable and practical for real-world clinical settings, where it will encounter diverse scanners from various organizations. Furthermore, a feasibility study using non-contrast chest CT scans indicates that the performance of our cardiac CT-trained algorithm on chest CT images was acceptable to a certain extent.
冠状动脉钙化评分(CACS),也称为阿加斯顿评分,是一种利用计算机断层扫描(CT)对心血管疾病(CVD)进行预后评估的重要工具。我们扩展了之前提出的算法——残差块启发式坐标注意力U-Net(RICAU-Net),以评估其在来自之前未见过的扫描仪的CT数据上针对特定病变的冠状动脉钙化分割的通用性。多供应商数据集包括由西门子、通用电气、飞利浦和东芝采集的1108例CT扫描。我们创建了四组数据集,将来自三台扫描仪的数据用作训练集和验证集,而将最后一组数据用作测试集,以评估该算法在来自之前未见过的扫描仪的数据上的性能。使用这些数据集对RICAU-Net进行训练,以实现自动的特定病变冠状动脉钙化分割和钙化评分。使用每个病变的Dice分数和组内相关系数(ICC)评估特定病变分割和钙化评分的性能。并进行Bland-Altman图分析,以检验预测结果得出的冠状动脉钙化评分与真实值之间的一致性。所提出的算法在验证集和测试集的每个病变Dice分数之间显示出小于5%的平均绝对差异,表明在由训练和验证阶段未见过的扫描仪的数据组成的测试集上具有良好的通用性。ICC分析表明,使用RICAU-Net的预测和手动分割计算的阿加斯顿评分在所有组的每个患者水平上均表现出出色的可靠性,ICC和95%置信区间分别为:第1组0.95(0.95 - 0.96)、第2组0.99(0.99 - 1.00)、第3组0.99(0.99 - 0.99)和第4组1.00(0.99 - 1.00)。我们的算法在来自之前未见过的扫描仪的数据上表现出通用性能,使其在现实世界的临床环境中可能更合适、更实用,因为在这种环境中会遇到来自不同机构的各种扫描仪。此外,一项使用非增强胸部CT扫描的可行性研究表明,我们的心脏CT训练算法在胸部CT图像上的性能在一定程度上是可以接受的。