Inage Hidekazu, Tomizawa Nobuo, Otsuka Yujiro, Aoshima Chihiro, Kawaguchi Yuko, Takamura Kazuhisa, Matsumori Rie, Kamo Yuki, Nozaki Yui, Takahashi Daigo, Kudo Ayako, Hiki Makoto, Kogure Yosuke, Fujimoto Shinichiro, Minamino Tohru, Aoki Shigeki
Department of Radiology, Graduate School of Medicine, Juntendo University, 2-1-1 Hongo, Bunkyo-ku, Tokyo, 113-8421, Japan.
Department of Radiological Technology, Juntendo University Hospital, 3-1-3 Hongo, Bunkyo-ku, Tokyo, 113-8421, Japan.
Egypt Heart J. 2022 May 21;74(1):43. doi: 10.1186/s43044-022-00280-y.
Coronary computed tomography angiography examinations are increasingly becoming established as a minimally invasive method for diagnosing coronary diseases. However, although various imaging and processing methods have been developed, coronary artery calcification remains a major limitation in the evaluation of the vascular lumen. Subtraction coronary computed tomography angiography (Sub-CCTA) is a method known to be able to reduce the influence of coronary artery calcification and is therefore feasible for improving the diagnosis of significant stenosis in patients with severe calcification. However, Sub-CCTA still involves some problems, such as the increased radiation dose due to plain (mask) imaging, extended breath-holding time, and misregistration due to differences in the imaging phase. Therefore, we considered using artificial intelligence instead of Sub-CCTA to visualize the coronary lumen with high calcification. Given this background, the present study aimed to evaluate the diagnostic performance of a deep learning-based lumen extraction method (DL-LEM) to detect significant stenosis on CCTA in 99 consecutive patients (891 segments) with severe coronary calcification from November 2015 to March 2018. We also estimated the impact of DL-LEM on the medical economics in Japan.
The DL-LEM slightly improved the per-segment diagnostic accuracy from 74.5 to 76.4%, and the area under the curve (AUC) slightly improved from 0.752 to 0.767 (p = 0.030). When analyzing the 228 segments that could not be evaluated because of severe calcification on the original CCTA images, the DL-LEM improved the accuracy from 35.5 to 42.5%, and the AUC improved from 0.500 to 0.587 (p = 0.00018). As a result, DL-LEM analysis could have avoided invasive coronary angiography in 4/99 cases (per patient). From the calculated results, it was estimated that the number of exams that can be avoided in Japan in one year is approximately 747 for invasive coronary angiography, 219 for fractional flow reserve, and 248 for nuclear exam. The total amount of medical fee that could be reduced was 225,629,368 JPY.
These findings suggest that the DL-LEM may improve the diagnostic performance in detecting significant stenosis in patients with severe coronary calcification. In addition, the results suggest that not a small medical economic effect can be expected.
冠状动脉计算机断层扫描血管造影检查正日益成为诊断冠状动脉疾病的一种微创方法。然而,尽管已经开发了各种成像和处理方法,但冠状动脉钙化仍然是评估血管腔的主要限制因素。冠状动脉计算机断层扫描血管造影减影术(Sub-CCTA)是一种已知能够减少冠状动脉钙化影响的方法,因此对于改善严重钙化患者显著狭窄的诊断是可行的。然而,Sub-CCTA仍然存在一些问题,例如由于平扫(蒙片)成像导致辐射剂量增加、屏气时间延长以及由于成像相位差异导致的配准错误。因此,我们考虑使用人工智能代替Sub-CCTA来可视化高度钙化的冠状动脉腔。基于此背景,本研究旨在评估一种基于深度学习的管腔提取方法(DL-LEM)在2015年11月至2018年3月期间对99例连续严重冠状动脉钙化患者(891个节段)进行CCTA检查时检测显著狭窄的诊断性能。我们还估计了DL-LEM对日本医疗经济学的影响。
DL-LEM使每个节段的诊断准确性从74.5%略有提高至76.4%,曲线下面积(AUC)从0.752略有提高至0.767(p = 0.030)。在分析原始CCTA图像上因严重钙化而无法评估的228个节段时,DL-LEM将准确性从35.5%提高至42.5%,AUC从0.500提高至0.587(p = 0.00018)。结果,DL-LEM分析在4/99例患者中避免了有创冠状动脉造影。根据计算结果,估计在日本一年中可避免的检查数量约为:有创冠状动脉造影747例、血流储备分数检查219例、核素检查248例。可减少的医疗费用总额为225,629,368日元。
这些发现表明,DL-LEM可能会提高严重冠状动脉钙化患者检测显著狭窄的诊断性能。此外,结果表明有望产生不小的医疗经济效应。