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Automated aortic calcification detection in low-dose chest CT images

机译:小剂量胸部CT图像中的自动主动脉钙化检测

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The extent of aortic calcification has been shown to be a risk indicator for vascular events including cardiac events. We have developed a fully automated computer algorithm to segment and measure aortic calcification in low-dose non-contrast, non-ECG gated, chest CT scans. The algorithm first segments the aorta using a pre-computed Anatomy Label Map (ALM). Then based on the segmented aorta, aortic calcification is detected and measured in terms of the Agatston score, mass score, and volume score. The automated scores are compared with reference scores obtained from manual markings. For aorta segmentation, the aorta is modeled as a series of discrete overlapping cylinders and the aortic centerline is determined using a cylinder-tracking algorithm. Then the aortic surface location is detected using the centerline and a triangular mesh model. The segmented aorta is used as a mask for the detection of aortic calcification. For calcification detection, the image is first filtered, them an elevated threshold of 160 Hounsfield units (HU) is used within the aorta mask region to reduce the effect of noise in low-dose scans, and finally non-aortic calcification voxels (bony structures, calcification in other organs) are eliminated. The remaining candidates are considered as true aortic calcification. The computer algorithm was evaluated on 45 low-dose non-contrast CT scans. Using linear regression, the automated Agatston score is 98.42% correlated with the reference Agatston score. The automated mass and volume score is respectively 98.46% and 98.28% correlated with the reference mass and volume score.
机译:主动脉钙化程度已被证明是包括心脏事件在内的血管事件的风险指标。我们已经开发出了一种全自动计算机算法,可以在低剂量,非对比,非ECG门控,胸部CT扫描中分割和测量主动脉钙化。该算法首先使用预先计算的解剖标签图(ALM)分割主动脉。然后根据分段的主动脉,根据Agatston评分,质量评分和体积评分检测和测量主动脉钙化。将自动得分与从手动标记获得的参考得分进行比较。对于主动脉分割,将主动脉建模为一系列离散的重叠圆柱体,并使用圆柱体跟踪算法确定主动脉中心线。然后,使用中心线和三角形网格模型检测主动脉表面位置。分割的主动脉用作检测主动脉钙化的掩膜。对于钙化检测,首先对图像进行过滤,在主动脉罩区域内将其阈值提高到160 Hounsfield单位(HU),以减少低剂量扫描中的噪声影响,最后是非主动脉钙化体素(骨骼结构) ,其他器官的钙化被消除。其余的候选者被认为是真正的主动脉钙化。该计算机算法是在45次低剂量非对比CT扫描中评估的。使用线性回归,自动Agatston得分与参考Agatston得分相关率为98.42%。自动质量和体积分数分别为98.46%和98.28%,与参考质量和体积分数相关。

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