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Improving Accuracy in Coronary Lumen Segmentation via Explicit Calcium Exclusion, Learning-based Ray Detection and Surface Optimization

机译:通过明确的钙排除,基于学习的射线检测和表面优化来提高冠状动脉腔分割的准确性

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Invasive cardiac angiography (catheterization) is still the standard in clinical practice for diagnosing coronary artery disease (CAD) but it involves a high amount of risk and cost. New generations of CT scanners can acquire high-quality images of coronary arteries which allow for an accurate identification and delineation of stenoses. Recently, computational fluid dynamics (CFD) simulation has been applied to coronary blood flow using geometric lumen models extracted from CT angiography (CTA). The computed pressure drop at stenoses proved to be indicative for ischemia-causing lesions, leading to non-invasive fractional flow reserve (FFR) derived from CTA. Since the diagnostic value of non-invasive procedures for diagnosing CAD relies on an accurate extraction of the lumen, a precise segmentation of the coronary arteries is crucial. As manual segmentation is tedious, time-consuming and subjective, automatic procedures are desirable. We present a novel fully-automatic method to accurately segment the lumen of coronary arteries in the presence of calcified and non-calcified plaque. Our segmentation framework is based on three main steps: boundary detection, calcium exclusion and surface optimization. A learning-based boundary detector enables a robust lumen contour detection via dense ray-casting. The exclusion of calcified plaque is assured through a novel calcium exclusion technique which allows us to accurately capture stenoses of diseased arteries. The boundary detection results are incorporated into a closed set formulation whose minimization yields an optimized lumen surface. On standardized tests with clinical data, a segmentation accuracy is achieved which is comparable to clinical experts and superior to current automatic methods.
机译:侵入性心脏血管造影术(导管插入术)仍然是临床实践中诊断冠状动脉疾病(CAD)的标准,但是它涉及大量的风险和成本。新一代的CT扫描仪可以获取高质量的冠状动脉图像,从而可以准确地识别和勾勒狭窄的轮廓。最近,使用从CT血管造影(CTA)提取的几何内腔模型,将计算流体动力学(CFD)模拟应用于冠状动脉血流。经证实,在狭窄处计算出的压降可指示引起缺血的病变,从而导致源自CTA的非侵入性部分血流储备(FFR)。由于用于诊断CAD的非侵入性程序的诊断价值取决于管腔的准确提取,因此冠状动脉的精确分割至关重要。由于手动分割是乏味,耗时且主观的,因此需要自动程序。我们提出了一种新颖的全自动方法,可以在存在钙化和非钙化斑块的情况下准确地分割冠状动脉腔。我们的细分框架基于三个主要步骤:边界检测,钙排除和表面优化。基于学习的边界检测器可通过密集的射线投射实现鲁棒的流明轮廓检测。通过一种新颖的钙排除技术可以确保钙化斑块的排除,该技术使我们能够准确捕获病变动脉的狭窄。边界检测结果被合并到一个封闭的配方中,该配方的最小化可产生优化的管腔表面。在具有临床数据的标准化测试中,可以实现细分精度,该精度可与临床专家媲美,并且优于当前的自动方法。

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