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Automated identification of best-quality coronary artery segments from multiple-phase coronary CT angiography (cCTA) for vessel analysis

机译:来自多相冠状动脉型CT血管造影(CCTA)的最佳质量冠状动脉段的自动鉴定血管分析

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We are developing an automated method to identify the best quality segment among the corresponding segments in multiple-phase cCTA. The coronary artery trees are automatically extracted from different cCTA phases using our multi-scale vessel segmentation and tracking method. An automated registration method is then used to align the multiple-phase artery trees. The corresponding coronary artery segments are identified in the registered vessel trees and are straightened by curved planar reformation (CPR). Four features are extracted from each segment in each phase as quality indicators in the original CT volume and the straightened CPR volume. Each quality indicator is used as a voting classifier to vote the corresponding segments. A newly designed weighted voting ensemble (WVE) classifier is finally used to determine the best-quality coronary segment. An observer preference study is conducted with three readers to visually rate the quality of the vessels in 1 to 6 rankings. Six and 10 cCTA cases are used as training and test set in this preliminary study. For the 10 test cases, the agreement between automatically identified best-quality (AI-BQ) segments and radiologist's top 2 rankings is 79.7%, and between AI-BQ and the other two readers are 74.8% and 83.7%, respectively. The results demonstrated that the performance of our automated method was comparable to those of experienced readers for identification of the best-quality coronary segments.
机译:我们正在开发一种自动化方法来识别多相CCTA中相应段中的最佳质量段。使用我们的多尺度血管分割和跟踪方法从不同的CCTA相自动提取冠状动脉树。然后使用自动注册方法对齐多相动脉树。相应的冠状动脉段在注册的血管树中鉴定,并通过弯曲的平面重整(CPR)矫直。从每个阶段的每个段中提取四个特征,作为原始CT音量的质量指示器和直接的CPR体积。每个质量指示器用作投票分类器,以投入相应的段。最终使用新设计的加权投票集合(WVE)分类器来确定最优质的冠状动脉段。观察者偏好研究是用三个读者进行的,以在1到6个排名中视觉地率对血管的质量。六至曲10个CCTA病例被用作该初步研究中的培训和测试。对于10个测试用例,自动识别最佳质量(AI-BQ)段和放射专家前2个排名之间的协议分别为79.7%,AI-BQ和其他两个读者分别为74.8%和83.7%。结果表明,我们的自动化方法的性能与经验丰富的读者的性能相当,以确定最优质的冠状动脉段。

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