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Coronary artery calcification identification and labeling in low-dose chest CT images

机译:低剂量胸部CT图像中的冠状动脉钙化鉴定和标记

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A fully automated computer algorithm has been developed to evaluate coronary artery calcification (CAC) from low-dose CT scans. CAC is identified and evaluated in three main coronary artery groups: Left Main and Left Anterior Descending Artery (LM + LAD) CAC, Left Circumflex Artery (LCX) CAC, and Right Coronary Artery (RCA) CAC. The artery labeling is achieved by segmenting all CAC candidates in the heart region and applying geometric constraints on the candidates using locally pre-identified anatomy regions. This algorithm was evaluated on 1,359 low-dose ungated CT scans, in which each artery CAC content was categorically visually scored by a radiologist into none, mild, moderate and extensive. The Spearman correlation coefficient R was used to assess the agreement between three automated CAC scores (Agatston-weighted, volume, and mass) and categorical visual scores. For Agatston-weighted automated scores, R was 0.87 for total CAC, 0.82 for LM + LAD CAC, 0.66 for LCX CAC and 0.72 for RCA CAC; results using volume and mass scores were similar. CAC detection sensitivities were: 0.87 for total, 0.82 for LM + LAD, 0.65 for LCX and 0.74 for RCA. To assess the impact of image noise, the dataset was further partitioned into three subsets based on heart region noise level (low<=80HU, medium=(80HU, 110HU], high>l 10HU). The low and medium noise subsets had higher sensitivities and correlations than the high noise subset. These results indicate that location specific heart risk assessment is possible from low-dose chest CT images.
机译:已经开发出全自动的计算机算法来评估来自低剂量CT扫描的冠状动脉钙化(CAC)。 CAC在三个主要的冠状动脉基团中进行了鉴定和评估:左主和左前期下降动脉(LM + LAD)CAC,左旋式动脉(LCX)CAC,右冠状动脉(RCA)CAC。通过将心脏区域中的所有CAC候选分割并使用当地预先识别的解剖区域对候选物施加几何约束来实现动脉标记。在1,359个低剂量未衰弱的CT扫描中评价该算法,其中每个动脉CAC含量由放射科医生分类地进行小便,轻度,中等和广泛。 Spearman相关系数R用于评估三种自动化CAC分数(Agatston加权,体积和质量)和分类视觉评分之间的协议。对于Agatston加权自动评分,总CAC的R为0.87,对于LM + LAD CAC为0.82,对于LCX CAC为0.66,RCA CAC为0.72;使用体积和质量分数的结果相似。 CAC检测灵敏度为:总计0.87,LM + LAD为0.82,LCX为0.65,RCA为0.74。为了评估图像噪声的影响,基于心脏区域噪声水平进一步将数据集进一步分为三个亚组(低<= 80 u,中等=(80 u,110hu),高> l 10hu)。低和中噪声子集具有更高敏感性和相关性比高噪声子集。这些结果表明,来自低剂量胸部CT图像可以进行特定的心脏风险评估。

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