Zhu Huiming, Wu Huizhong, Zhang Shike, Fang Kuaifa, Xie Guoxi, Zheng Yekun, Qiu Jinxing, Liu Feng, Miao Zhenmin, Yuan Xinchen, Chen Weibo, He Lincheng
The Sixth People's Hospital of Huizhou, Huizhou, China.
Guangzhou Medical University, Guangzhou, China.
Int J Cardiovasc Imaging. 2025 Apr 26. doi: 10.1007/s10554-025-03408-8.
Non-contrast enhanced magnetic resonance coronary angiography (MRCA) is a promising coronary heart disease screening modality. However, its clinical application is hindered by inherent limitations, including low spatial resolution and insufficient contrast between coronary arteries and surrounding tissues. These technical challenges impede fast and automatic coronary artery segmentation. To tackle these issues, we propose a self-configuring deep learning-based approach for automating the segmentation of coronary arteries in MRCA images. The nnU-Net model was trained on MRCA data from 134 subjects and tested on data from 114 subjects. Two radiologists qualitatively evaluated all segmented arteries as good to excellent. Using coronary computed tomography angiography (CCTA) data from the 114 tested subjects as the gold standard. Specifically, we compared the number of branches, the total branch length, and the distance from the base of the coronary sinus to the origin of the corresponding main coronary artery obtained from manual and artificial intelligence measurements in MRCA images with those obtained from CCTA. Experiment results demonstrated that in validation nnU-Net can accurately segment from MRCA images with the Dice score of 0.903 and 0.962 for major coronary arteries and aorta, respectively.In Testing, nnU-Net achieved the Dice score of 0.726 and 0.890 for major coronary arteries and aorta, respectively. Integrating MRCA with nnU-Net to extract coronary arteries offers a non-invasive screening tool for the detection of coronary heart disease, potentially enhancing early detection and reducing reliance from CCTA.
非增强磁共振冠状动脉造影(MRCA)是一种很有前景的冠心病筛查方式。然而,其临床应用受到固有局限性的阻碍,包括空间分辨率低以及冠状动脉与周围组织之间的对比度不足。这些技术挑战妨碍了快速自动的冠状动脉分割。为了解决这些问题,我们提出了一种基于深度学习的自配置方法,用于自动分割MRCA图像中的冠状动脉。nnU-Net模型在134名受试者的MRCA数据上进行训练,并在114名受试者的数据上进行测试。两名放射科医生对所有分割的动脉进行了定性评估,结果为良好至优秀。以114名测试受试者的冠状动脉计算机断层扫描血管造影(CCTA)数据作为金标准。具体而言,我们比较了在MRCA图像中通过手动和人工智能测量获得的分支数量、总分支长度以及从冠状窦底部到相应主要冠状动脉起源的距离与从CCTA获得的这些数据。实验结果表明,在验证中,nnU-Net可以从MRCA图像中准确分割,主要冠状动脉和主动脉的Dice分数分别为0.903和0.962。在测试中,nnU-Net对主要冠状动脉和主动脉的Dice分数分别为0.726和0.890。将MRCA与nnU-Net相结合以提取冠状动脉,为冠心病的检测提供了一种非侵入性筛查工具,有可能提高早期检测率并减少对CCTA的依赖。