Image Sciences Institute, University Medical Center Utrecht, Utrecht 3584 CX, The Netherlands.
Med Phys. 2010 Feb;37(2):714-23. doi: 10.1118/1.3284211.
Thoracic computed tomography (CT) scans provide information about cardiovascular risk status. These scans are non-ECG synchronized, thus precise quantification of coronary calcifications is difficult. Aortic calcium scoring is less sensitive to cardiac motion, so it is an alternative to coronary calcium scoring as an indicator of cardiovascular risk. The authors developed and evaluated a computer-aided system for automatic detection and quantification of aortic calcifications in low-dose noncontrast-enhanced chest CT.
The system was trained and tested on scans from participants of a lung cancer screening trial. A total of 433 low-dose, non-ECG-synchronized, noncontrast-enhanced 16 detector row examinations of the chest was randomly divided into 340 training and 93 test data sets. A first observer manually identified aortic calcifications on training and test scans. A second observer did the same on the test scans only. First, a multiatlas-based segmentation method was developed to delineate the aorta. Segmented volume was thresholded and potential calcifications (candidate objects) were extracted by three-dimensional connected component labeling. Due to image resolution and noise, in rare cases extracted candidate objects were connected to the spine. They were separated into a part outside and parts inside the aorta, and only the latter was further analyzed. All candidate objects were represented by 63 features describing their size, position, and texture. Subsequently, a two-stage classification with a selection of features and k-nearest neighbor classifiers was performed. Based on the detected aortic calcifications, total calcium volume score was determined for each subject.
The computer system correctly detected, on the average, 945 mm3 out of 965 mm3 (97.9%) calcified plaque volume in the aorta with an average of 64 mm3 of false positive volume per scan. Spearman rank correlation coefficient was p = 0.960 between the system and the first observer compared to p = 0.961 between the two observers.
Automatic calcium scoring in the aorta thus appears feasible with good correlation between manual and automatic scoring.
胸部计算机断层扫描(CT)可提供心血管风险状况信息。这些扫描与心电图不同步,因此难以精确量化冠状动脉钙化。主动脉钙评分对心脏运动的敏感性较低,因此是冠状动脉钙评分作为心血管风险指标的替代方法。作者开发并评估了一种用于低剂量非对比增强胸部 CT 中自动检测和量化主动脉钙化的计算机辅助系统。
该系统在肺癌筛查试验参与者的扫描上进行了训练和测试。总共随机将 433 例低剂量、非心电图同步、非对比增强的 16 探测器列胸部检查分为 340 个训练数据集和 93 个测试数据集。第一观察者在训练和测试扫描上手动识别主动脉钙化。第二观察者仅在测试扫描上进行相同的操作。首先,开发了一种基于多图谱的分割方法来描绘主动脉。对分割体积进行阈值处理,并通过三维连通分量标记提取潜在的钙化(候选对象)。由于图像分辨率和噪声,在极少数情况下,提取的候选对象与脊柱相连。它们被分为主动脉外部和内部的部分,仅对后者进行进一步分析。所有候选对象都由 63 个描述其大小、位置和纹理的特征表示。随后,进行了具有特征选择和 k-最近邻分类器的两阶段分类。根据检测到的主动脉钙化,确定每个受试者的总钙体积评分。
计算机系统平均正确检测到主动脉中 965mm3 的 945mm3(97.9%)钙化斑块体积,平均每个扫描有 64mm3 的假阳性体积。系统与第一观察者之间的Spearman 秩相关系数为 p = 0.960,而两个观察者之间的相关性为 p = 0.961。
自动主动脉钙评分似乎是可行的,手动和自动评分之间具有良好的相关性。