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Automated framework for CTA coronary segmentation and quantitative validation

机译:CTA冠状动脉分割和定量验证的自动框架

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Based on the fact that coronary heart disease (CHD) is the leading cause of death among all cardiovascular abnormalities, clinicians are keen in early detection and continuous monitoring of arterial atherosclerosis. Conventional cardiac catheterization method yields 2D angiograms of cardiac vasculature with possibly missed abnormalities as well as its invasive nature involves risk to the patient. These limitations motivated the research community for the non-invasive imaging modalities for vascular diagnosis. A prominent example is the effective use of computed tomography angiography (CTA) phenomena in clinical practice. The high temporal and spatial resolution of latest scanners has made possible to acquire a real time 3D view of moving heart; however, it becomes difficult for clinicians to traverse the data cloud for anomaly detection. Consequently, accurate segmentation of coronary tree is first step towards effective diagnosis of coronary atherosclerosis. We proposed a simple yet efficient framework for the coronary segmentation in 3D CTA volume using level set formulation of localized region based Chan-Vese energy model. Moreover, the quantitative validation of the segmented coronary tree has always been challenging due to non-availability of ground truth reference in clinical practice. The proposed framework facilitates manual experts to establish the coronary lumen boundaries based upon cross sectional and curved planar reformation analysis. Consequently, the proposed model computes quantitative accuracy against manual ground truth using two different similarity measures of Jaccard index and the Dice coefficient. We believe that this framework can help research community in effective coronary analysis in terms of instant clinical ground truth annotations and effective validation of the segmented surface.
机译:基于冠心病(CHD)是所有心血管异常中死亡的主要原因,临床医生在早期发现和连续监测动脉动脉粥样硬化。传统的心脏导管缩放方法产生2D心脏脉管系统的2D血管造影,可能错过了异常,并且其侵入性涉及患者的风险。这些限制激励了对血管诊断的非侵入性成像方式的研究界。一个突出的例子是有效使用临床实践中的计算机断层造影血管造影(CTA)现象。最新扫描仪的高时和空间分辨率使得可以获得一个移动心脏的实时3D观点;但是,临床医生难以遍历数据云进行异常检测。因此,冠状动脉树的准确细分是有效诊断冠状动脉粥样硬化的第一步。我们用基于局部区域的Chan-Vese能量模型的水平集制剂提出了一种简单但高效的3D CTA卷中的冠状动脉分段框架。此外,由于临床实践中的地面真相参考,分段冠状动脉树的定量验证一直在挑战。拟议的框架有助于根据横截面和弯曲的平面改造分析来建立冠状动脉横向。因此,所提出的模型使用Jaccard指数和骰子系数的两种不同的相似性测量来计算针对手动地理的定量精度。我们认为,在即时临床地面说明和有效验证分段表面的方面,本框架可以帮助研究群落有效的冠状动脉分析。

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