Quantitative Imaging Group, Department of Imaging Science and Technology, Faculty of Applied Science, Delft University of Technology, Delft, The Netherlands,
Int J Cardiovasc Imaging. 2013 Dec;29(8):1847-59. doi: 10.1007/s10554-013-0271-1. Epub 2013 Aug 8.
Accurate detection and quantification of coronary artery stenoses is an essential requirement for treatment planning of patients with suspected coronary artery disease. We present a method to automatically detect and quantify coronary artery stenoses in computed tomography coronary angiography. First, centerlines are extracted using a two-point minimum cost path approach and a subsequent refinement step. The resulting centerlines are used as an initialization for lumen segmentation, performed using graph cuts. Then, the expected diameter of the healthy lumen is estimated by applying robust kernel regression to the coronary artery lumen diameter profile. Finally, stenoses are detected and quantified by computing the difference between estimated and expected diameter profiles. We evaluated our method using the data provided in the Coronary Artery Stenoses Detection and Quantification Evaluation Framework. Using 30 testing datasets, the method achieved a detection sensitivity of 29% and a positive predictive value (PPV) of 24% as compared to quantitative coronary angiography (QCA), and a sensitivity of 21% and a PPV of 23% as compared manual assessment based on consensus reading of CTA by 3 observers. The stenoses degree was estimated with an absolute average difference of 31%, a root mean square difference of 39.3% when compared to QCA, and a weighted kappa value of 0.29 when compared to CTA. A Dice of 68 and 65% was reported for lumen segmentation of healthy and diseased vessel segments respectively. According to the ranking of the evaluation framework, our method finished fourth for stenosis detection, second for stenosis quantification and second for lumen segmentation.
准确检测和量化冠状动脉狭窄是疑似冠心病患者治疗计划的基本要求。我们提出了一种自动检测和量化计算机断层冠状动脉造影中冠状动脉狭窄的方法。首先,使用两点最小成本路径方法和后续的细化步骤提取中心线。所得中心线用作管腔分割的初始化,使用图割进行。然后,通过对冠状动脉管腔直径轮廓应用稳健核回归来估计健康管腔的预期直径。最后,通过计算估计和预期直径轮廓之间的差异来检测和量化狭窄。我们使用冠状动脉狭窄检测和量化评估框架中提供的数据来评估我们的方法。使用 30 个测试数据集,与定量冠状动脉造影(QCA)相比,该方法的检测灵敏度为 29%,阳性预测值(PPV)为 24%,与 3 名观察者基于共识阅读 CTA 的手动评估相比,灵敏度为 21%,PPV 为 23%。与 QCA 相比,狭窄程度的估计绝对值平均差异为 31%,均方根差异为 39.3%,与 CTA 相比,加权 kappa 值为 0.29。健康和患病血管段的管腔分割的 Dice 分别为 68%和 65%。根据评估框架的排名,我们的方法在狭窄检测方面排名第四,在狭窄量化方面排名第二,在管腔分割方面排名第二。