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Coronary Lumen Segmentation Using Graph Cuts and Robust Kernel Regression

机译:冠状动脉腔分割使用曲线图和鲁棒核回归

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This paper presents a novel method for segmenting the coronary lumen in CTA data. The method is based on graph cuts, with edge-weights depending on the intensity of the centerline, and robust kernel regression. A quantitative evaluation in 28 coronary arteries from 12 patients is performed by comparing the semi-automatic segmentations to manual annotations. This evaluation showed that the method was able to segment the coronary arteries with high accuracy, compared to manually annotated segmentations, which is reflected in a Dice coefficient of 0.85 and average symmetric surface distance of 0.22 mm.
机译:本文介绍了CTA数据中冠状动脉内腔分割的新方法。该方法基于曲线图,具有边缘权重,取决于中心线的强度和强大的内核回归。通过将半自动分割与手动注释进行比较来进行来自12名患者的28例冠状动脉的定量评估。该评估表明,与手动注释的分割相比,该方法能够以高精度对冠状动脉分段,其反映在0.85的骰子系数和0.22mm的平均对称表面距离中。

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