Department of Cardiology, Leiden University Medical Center, Albinusdreef 2, 2333 ZA Leiden, The Netherlands.
Eur Heart J. 2012 Apr;33(8):1007-16. doi: 10.1093/eurheartj/ehr465. Epub 2012 Jan 26.
Previous studies have used semi-automated approaches for coronary plaque quantification on multi-detector row computed tomography (CT), while an automated quantitative approach using a dedicated registration algorithm is currently lacking. Accordingly, the study aimed to demonstrate the feasibility and accuracy of automated coronary plaque quantification on cardiac CT using dedicated software with a novel 3D coregistration algorithm of CT and intravascular ultrasound (IVUS) data sets.
Patients who had undergone CT and IVUS were enrolled. Automated lumen and vessel wall contour detection was performed for both imaging modalities. Dedicated automated quantitative software (QCT) with a unique registration algorithm was used to fuse a complete IVUS run with a CT angiography volume using true anatomical markers. At the level of the minimal lumen area (MLA), percentage lumen area stenosis, plaque burden, and degree of remodelling were obtained on CT. Additionally, mean plaque burden was assessed for the whole coronary plaque. At the identical level within the coronary artery, the same variables were derived from IVUS. Fifty-one patients (40 men, 58 ± 11 years, 103 coronary arteries) with 146 lesions were evaluated. Quantitative computed tomography and IVUS showed good correlation for MLA (n = 146, r = 0.75, P < 0.001). At the level of the MLA, both techniques were well-correlated for lumen area stenosis (n = 146, r = 0.79, P < 0.001) and plaque burden (n = 146, r = 0.70, P < 0.001). Mean plaque burden (n = 146, r = 0.64, P < 0.001) and remodelling index (n = 146, r = 0.56, P < 0.001) showed significant correlations between QCT and IVUS.
Automated quantification of coronary plaque on CT is feasible using dedicated quantitative software with a novel 3D registration algorithm.
先前的研究已经使用半自动化方法对多排探测器 CT(CT)进行冠状动脉斑块定量,而目前缺乏使用专用注册算法的自动定量方法。因此,本研究旨在展示使用专用软件和新型 CT 与血管内超声(IVUS)数据集的 3D 配准算法对心脏 CT 进行自动冠状动脉斑块定量的可行性和准确性。
入选了接受 CT 和 IVUS 检查的患者。对两种成像方式均进行自动管腔和血管壁轮廓检测。使用具有独特注册算法的专用自动定量软件(QCT),使用真实的解剖学标记物将完整的 IVUS 运行与 CT 血管造影容积融合。在最小管腔面积(MLA)水平上,在 CT 上获得管腔面积狭窄百分比、斑块负担和重塑程度。此外,还评估了整个冠状动脉斑块的平均斑块负担。在冠状动脉的相同水平上,从 IVUS 中得出相同的变量。评估了 51 例(40 名男性,58±11 岁,103 支冠状动脉)146 处病变。定量 CT 和 IVUS 显示 MLA(n=146,r=0.75,P<0.001)有良好的相关性。在 MLA 水平,两种技术对管腔面积狭窄(n=146,r=0.79,P<0.001)和斑块负担(n=146,r=0.70,P<0.001)均有良好的相关性。平均斑块负担(n=146,r=0.64,P<0.001)和重塑指数(n=146,r=0.56,P<0.001)在 QCT 和 IVUS 之间显示出显著的相关性。
使用具有新型 3D 配准算法的专用定量软件对 CT 上的冠状动脉斑块进行自动定量是可行的。