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Vessel wall segmentation of common carotid artery via multi-branch light network

机译:血管壁分割通过多分支灯网络常见颈动脉

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Vessel wall volume (VWV) and local vessel-wall-plus-plaque thickness (VVVT) measured from 3D ultrasound (3DUS) are sensitive to change of plaque burden over time and are useful in evaluating treatment effect. Segmentation of the media-adventitia (MAB) and lumen-intima boundaries (LIB) was required in VWV and VWT quantification. Manual segmentation of these boundaries is time-consuming and prone to observer variability. In this work, we developed and validated a method to segment MAB and LIB from axial images re-sliced from 3DUS images using a light-weight coarse-to-fine network. The proposed network is computationally efficient with only 0.59M parameters (compared to 31M parameters in U-Net). The boundaries segmented by the proposed algorithm were compared with manually segmented boundaries. The proposed algorithm attained Dice similarity coefficients (DSC) of 92.5 ± 3.09% and 85.4 ±6.04% for MAB and LIB respectively, which are higher than those attained by U-Net family networks, including U-Net++, scaled U-Net and attention U-Net. This segmentation tool will facilitate efficient quantification of VWV and VWT, thereby making it more feasible for them to be measured in clinical trials evaluating treatment effect or for stroke risk stratification.
机译:从3D超声(3DUS)测量的血管壁体积(VWV)和局部容器 - 壁 - 加斑块厚度(VVVT)对随着时间的推移,对斑块负荷的变化敏感,并且可用于评估治疗效果。 VWV和VWT量化需要介质 - 外膜(MAB)和腔内界界限(LIB)的分割。这些边界的手动分割是耗时和容易变异性的。在这项工作中,我们开发并验证了从使用轻量级粗内网络从3DU图像重新切割的轴向图像的分段MAB和LIB的方法。所提出的网络在计算上使用0.59M参数(与U-Net中的31M参数相比)有效。将所提出的算法分割的边界与手动分段边界进行了比较。所提出的算法分别获得了MAB和LIB的骰子相似度系数(DSC)为92.5±3.09%和85.4±6.04%,其高于U-Net家族网络(包括U-Net ++),缩放U-Net和注意力U-net。该分割工具将促进VWV和VWT的高效定量,从而使它们在评估治疗效果或中风风险分层中测量它们更加可行。

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