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Fast Femoral Artery Segmentation from Black-Blood MRI

机译:黑血MRI的快速股动脉细分

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摘要

With the prevalence of about 3% in the general Chinese population, peripheral arterial disease (PAD) has become a serious health issue. To address this issue, vessel wall imaging techniques have been introduced to assess the burden of PAD in terms of vessel wall thickness, area or volume. Recent advances in a 3D black-blood MRI sequence known as the 3D MSDE prepared rapid gradient echo sequence (3D MERGE) have allowed the acquisition of vessel wall images with up to 50 cm coverage, facilitating noninvasive and detailed PAD assessment. This work introduces an algorithm that combines 2D slice-based segmentation and 3D user editing to allow for efficient plaque burden analysis of 3D MERGE femoral artery images. The 2D slice-based segmentation approach is based on propagating segmentation results of contiguous 2D slices. The 3D image volume was then reformatted using the curved planar reformation (CPR) technique. User editing of the segmented contours was performed on the CPR views taken at different angles. The method was evaluated on 6 femoral artery images. Lumen and outer wall boundaries segmented using the proposed algorithm were assessed by comparison with manual segmentation. The Mean Absolute Difference (MAD) between the semi automatically segmented lumen boundaries and the manually segmented boundaries was 0.23 ±0.20mm and the MAD between the semi automatically segmented wall boundaries and the manually segmented boundaries was 0.25±0.14mm. The time required for the entire semi automated segmentation process was only 1-2% of the time required for manual segmentation.
机译:随着中国人口一般患病率约为3%,外周动脉疾病(PAD)已成为一个严重的健康问题。为了解决这个问题,已经引入了船舶壁成像技术,以评估船舶壁厚,面积或体积方面的垫子负担。最近在称为3D MSDE的3D黑血MRI序列中的进展使得快速梯度回波序列(3D合并)允许采集高达50cm的覆盖率,促进非侵入性和详细焊盘评估。这项工作介绍了一种结合基于2D切片的分割和3D用户编辑的算法,以允许3D合并股动脉图像的高效斑块负担分析。基于2D切片的分割方法基于连续2D切片的传播分段结果。然后使用弯曲的平面重整(CPR)技术重新重新格式化3D图像体积。对分段轮廓的用户编辑在不同角度拍摄的CPR视图上执行。对6个股动脉图像评估该方法。通过与手动分割的比较评估使用所提出的算法进行分割的内腔和外壁边界。半自动分段腔边界和手动分段边界之间的平均绝对差异(Mad)为0.23±0.20mm,并且半自动分段壁边界和手动分段边界之间的MAD为0.25±0.14mm。整个半自动分割过程所需的时间仅为手动分段所需的1-2%。

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