Yang Guanyu, Chen Yang, Ning Xiufang, Sun Qiaoyu, Shu Huazhong, Coatrieux Jean-Louis
Laboratory of Image Science and Technology, School of Computer Science and Engineering, Southeast University, No. 2, Si Pai Lou, Nanjing 210096, China; Centre de Recherche en Information Biomédicale Sino-Français (LIA CRIBs), Nanjing 210096, China; and Key Laboratory of Computer Network and Information Integration, Southeast University, Ministry of Education, Nanjing 210096, China.
Laboratory of Image Science and Technology, School of Computer Science and Engineering, Southeast University, No. 2, Si Pai Lou, Nanjing 210096, China and Key Laboratory of Computer Network and Information Integration, Southeast University, Ministry of Education, Nanjing 210096, China.
Med Phys. 2016 May;43(5):2174. doi: 10.1118/1.4945045.
Calcium scoring is widely used to assess the risk of coronary heart disease (CHD). Accurate coronary artery calcification detection in noncontrast CT image is a prerequisite step for coronary calcium scoring. Currently, calcified lesions in the coronary arteries are manually identified by radiologists in clinical practice. Thus, in this paper, a fully automatic calcium scoring method was developed to alleviate the work load of the radiologists or cardiologists.
The challenge of automatic coronary calcification detection is to discriminate the calcification in the coronary arteries from the calcification in the other tissues. Since the anatomy of coronary arteries is difficult to be observed in the noncontrast CT images, the contrast CT image of the same patient is used to extract the regions of the aorta, heart, and coronary arteries. Then, a patient-specific region-of-interest (ROI) is generated in the noncontrast CT image according to the segmentation results in the contrast CT image. This patient-specific ROI focuses on the regions in the neighborhood of coronary arteries for calcification detection, which can eliminate the calcifications in the surrounding tissues. A support vector machine classifier is applied finally to refine the results by removing possible image noise. Furthermore, the calcified lesions in the noncontrast images belonging to the different main coronary arteries are identified automatically using the labeling results of the extracted coronary arteries.
Forty datasets from four different CT machine vendors were used to evaluate their algorithm, which were provided by the MICCAI 2014 Coronary Calcium Scoring (orCaScore) Challenge. The sensitivity and positive predictive value for the volume of detected calcifications are 0.989 and 0.948. Only one patient out of 40 patients had been assigned to the wrong risk category defined according to Agatston scores (0, 1-100, 101-300, >300) by comparing with the ground truth.
The calcified lesions in the noncontrast CT images can be detected automatically by using the segmentation results of the aorta, heart, and coronary arteries obtained in the contrast CT images with a very high accuracy.
钙评分广泛用于评估冠心病(CHD)风险。在非增强CT图像中准确检测冠状动脉钙化是冠状动脉钙评分的前提步骤。目前,临床实践中放射科医生通过手动识别冠状动脉中的钙化病变。因此,本文开发了一种全自动钙评分方法,以减轻放射科医生或心脏病专家的工作量。
自动冠状动脉钙化检测面临的挑战是区分冠状动脉中的钙化与其他组织中的钙化。由于在非增强CT图像中难以观察到冠状动脉的解剖结构,因此使用同一患者的增强CT图像来提取主动脉、心脏和冠状动脉的区域。然后,根据增强CT图像中的分割结果,在非增强CT图像中生成特定患者的感兴趣区域(ROI)。这个特定患者的ROI聚焦于冠状动脉附近区域进行钙化检测,可消除周围组织中的钙化。最后应用支持向量机分类器通过去除可能的图像噪声来优化结果。此外,利用提取的冠状动脉的标记结果自动识别非增强图像中属于不同主要冠状动脉的钙化病变。
使用来自四个不同CT机供应商的40个数据集评估他们的算法,这些数据集由2014年医学图像计算与计算机辅助干预国际会议(MICCAI)冠状动脉钙评分(orCaScore)挑战赛提供。检测到的钙化体积的灵敏度和阳性预测值分别为0.989和0.948。与真实情况相比,40名患者中只有1名患者被错误地归入根据阿加斯顿评分(0、1 - 100、101 - 300、>300)定义的风险类别。
通过使用在增强CT图像中获得的主动脉、心脏和冠状动脉的分割结果,可以非常准确地自动检测非增强CT图像中的钙化病变。