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Automatic detection of cardiovascular risk in CT attenuation correction maps in Rb-82 PET/CTs

机译:在RB-82 PET / CTS中自动检测CT衰减校正图中的心血管风险

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CT attenuation correction (CTAC) images acquired with PET/CT visualize coronary artery calcium (CAC) and enable CAC quantification. CAC scores acquired with CTAC have been suggested as a marker of cardiovascular disease (CVD). In this work, an algorithm previously developed for automatic CAC scoring in dedicated cardiac CT was applied to automatic CAC detection in CTAC. The study included 134 consecutive patients undergoing 82-Rb PET/CT. Low-dose rest CTAC scans were acquired (100 kV, 11 mAs, 1.4mm × 1.4mm × 3mm voxel size). An experienced observer defined the reference standard with the clinically used intensity level threshold for calcium identification (130 HU). Five scans were removed from analysis due to artifacts. The algorithm extracted potential CAC by intensity-based thresholding and 3D connected component labeling. Each candidate was described by location, size, shape and intensity features. An ensemble of extremely randomized decision trees was used to identify CAC. The data set was randomly divided into training and test sets. Automatically identified CAC was quantified using volume and Agatston scores. In 33 test scans, the system detected on average 469 mm~3/730 mm~3 (64%) of CAC with 36 mm3 false positive volume per scan. The intraclass correlation coefficient for volume scores was 0.84. Each patient was assigned to one of four CVD risk categories based on the Agatston score (0-10, 11-100, 101-400, >400). The correct CVD category was assigned to 85% of patients (Cohen's linearly weighted κ 0.82). Automatic detection of CVD risk based on CAC scoring in rest CTAC images is feasible. This may enable large scale studies evaluating clinical value of CAC scoring in CTAC data.
机译:CT衰减校正(CTAC)用PET / CT可视化冠状动脉钙(CAC)获得的图像,并使能CAC定量。已经提出了CTAC获得的CAC评分作为心血管疾病(CVD)的标志物。在这项工作中,在CTAC中施加了一种用于专用心脏CT中的自动CAC评分的算法在CTAC中自动CAC检测。该研究包括接受82-RB PET / CT的连续患者的134名患者。获得低剂量休息CTAC扫描(100 kV,11 mas,1.4mm×1.4mm×3mm voxel尺寸)。经验丰富的观察者定义了具有钙鉴定的临床使用的强度水平阈值的参考标准(130UU)。由于工件因文物而分析,将五个扫描从分析中移除。该算法通过基于强度的阈值和3D连接的组件标记提取电位CAC。每个候选者都是由位置,大小,形状和强度特征描述的。使用极其随机决策树的集合用于鉴定CAC。数据集随机分为训练和测试集。使用体积和agatston分数量化自动识别的CAC。在33台测试扫描中,系统平均检测到每次扫描36mm3误报的CAC 469 mm〜3/730 mm〜3(64%)。体积分数的腹积相关系数为0.84。根据Agatston评分(0-10,11-100,101-400,> 400),将每位患者分配到四个CVD风险类别中的一个。将正确的CVD类别分配给85%的患者(Cohen的线性加权κ0.82)。基于CAC评分在REST CTAC图像中自动检测CVD风险是可行的。这可以实现大规模研究评估CTAC数据中CAC评分的临床价值。

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