Zhou Chuan, Chan Heang-Ping, Hadjiiski Lubomir M, Chughtai Aamer, Wei Jun, Kazerooni Ella A
Department of Radiology, The University of Michigan, Ann Arbor, Michigan 48109-0904.
Med Phys. 2016 Oct;43(10):5268. doi: 10.1118/1.4961740.
The authors are developing an automated method to identify the best-quality coronary arterial segment from multiple-phase coronary CT angiography (cCTA) acquisitions, which may be used by either interpreting physicians or computer-aided detection systems to optimally and efficiently utilize the diagnostic information available in multiple-phase cCTA for the detection of coronary artery disease.
After initialization with a manually identified seed point, each coronary artery tree is automatically extracted from multiple cCTA phases using our multiscale coronary artery response enhancement and 3D rolling balloon region growing vessel segmentation and tracking method. The coronary artery trees from multiple phases are then aligned by a global registration using an affine transformation with quadratic terms and nonlinear simplex optimization, followed by a local registration using a cubic B-spline method with fast localized optimization. The corresponding coronary arteries among the available phases are identified using a recursive coronary segment matching method. Each of the identified vessel segments is transformed by the curved planar reformation (CPR) method. Four features are extracted from each corresponding segment as quality indicators in the original computed tomography volume and the straightened CPR volume, and each quality indicator is used as a voting classifier for the arterial segment. A weighted voting ensemble (WVE) classifier is designed to combine the votes of the four voting classifiers for each corresponding segment. The segment with the highest WVE vote is then selected as the best-quality segment. In this study, the training and test sets consisted of 6 and 20 cCTA cases, respectively, each with 6 phases, containing a total of 156 cCTA volumes and 312 coronary artery trees. An observer preference study was also conducted with one expert cardiothoracic radiologist and four nonradiologist readers to visually rank vessel segment quality. The performance of our automated method was evaluated by comparing the automatically identified best-quality segments identified by the computer to those selected by the observers.
For the 20 test cases, 254 groups of corresponding vessel segments were identified after multiple phase registration and recursive matching. The AI-BQ segments agreed with the radiologist's top 2 ranked segments in 78.3% of the 254 groups (Cohen's kappa 0.60), and with the 4 nonradiologist observers in 76.8%, 84.3%, 83.9%, and 85.8% of the 254 groups. In addition, 89.4% of the AI-BQ segments agreed with at least two observers' top 2 rankings, and 96.5% agreed with at least one observer's top 2 rankings. In comparison, agreement between the four observers' top ranked segment and the radiologist's top 2 ranked segments were 79.9%, 80.7%, 82.3%, and 76.8%, respectively, with kappa values ranging from 0.56 to 0.68.
The performance of our automated method for selecting the best-quality coronary segments from a multiple-phase cCTA acquisition was comparable to the selection made by human observers. This study demonstrates the potential usefulness of the automated method in clinical practice, enabling interpreting physicians to fully utilize the best available information in cCTA for diagnosis of coronary disease, without requiring manual search through the multiple phases and minimizing the variability in image phase selection for evaluation of coronary artery segments across the diversity of human readers with variations in expertise.
作者正在开发一种自动化方法,用于从多期冠状动脉CT血管造影(cCTA)采集中识别质量最佳的冠状动脉节段,这可被解读医师或计算机辅助检测系统用于最佳且高效地利用多期cCTA中可用的诊断信息来检测冠状动脉疾病。
在使用手动识别的种子点进行初始化后,使用我们的多尺度冠状动脉响应增强和3D滚动球囊区域生长血管分割与跟踪方法,从多个cCTA期自动提取每条冠状动脉树。然后,通过使用带有二次项的仿射变换和非线性单纯形优化的全局配准,以及使用带有快速局部优化的三次B样条方法的局部配准,对多个期的冠状动脉树进行对齐。使用递归冠状动脉节段匹配方法识别可用期之间对应的冠状动脉。通过曲面平面重组(CPR)方法对每个识别出的血管节段进行变换。从每个对应的节段中提取四个特征作为原始计算机断层扫描容积和拉直后的CPR容积中的质量指标,并且每个质量指标用作动脉节段的投票分类器。设计了加权投票集成(WVE)分类器,以组合每个对应节段的四个投票分类器的投票。然后选择WVE投票最高的节段作为质量最佳的节段。在本研究中,训练集和测试集分别由6个和20个cCTA病例组成,每个病例有6期,总共包含156个cCTA容积和312条冠状动脉树。还与一位心胸放射科专家和四位非放射科读者进行了观察者偏好研究,以直观地对血管节段质量进行排名。通过将计算机自动识别的质量最佳节段与观察者选择的节段进行比较,评估了我们自动化方法的性能。
对于20个测试病例,经过多期配准和递归匹配后,识别出254组对应的血管节段。在254组中的78.3%中,人工智能质量最佳(AI - BQ)节段与放射科医生排名前2的节段一致(Cohen's kappa为0.60),在254组中的76.8%、84.3%、83.9%和85.8%中,与四位非放射科观察者排名前2的节段一致。此外,89.4%的AI - BQ节段与至少两位观察者排名前2的结果一致,96.5%与至少一位观察者排名前2的结果一致。相比之下,四位观察者排名第一的节段与放射科医生排名前2的节段之间的一致性分别为79.9%、80.7%、82.3%和76.8%,kappa值范围为0.56至0.68。
我们从多期cCTA采集中选择质量最佳冠状动脉节段的自动化方法的性能与人类观察者的选择相当。本研究证明了该自动化方法在临床实践中的潜在实用性,使解读医师能够充分利用cCTA中最佳可用信息来诊断冠状动脉疾病,而无需手动在多个期之间进行搜索,并最大限度地减少了在评估冠状动脉节段时因不同专业水平的人类读者差异而导致的图像期选择的变异性。