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Segmentation of the Thoracic Aorta using an Attention-Gated U-Net

机译:使用注意门控胸主动脉的分割

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Accurate segmentation of the aorta in computed tomography angiography (CTA) images is the first step for analysis of diseases such as aortic aneurysm, but manual segmentation can be prohibitively time-consuming and error prone. Convolutional neural network (CNN) based models have been utilized for automated segmentation of anatomy in CTA scans, with the ubiquitous U-Net being one of the most popular architectures. For many downstream image analysis tasks (e.g., registration, diameter measurement) very accurate segmentation accuracy may be required. In this work, we developed and tested a U-Net model with attention gating for segmentation of the thoracic aorta in clinical CTA data of patients with thoracic aortic ancurysm. Attention gating helps the model focus on difficult to segment target structures automatically and has been previously shown to increase segmentation accuracy in other applications. We trained U-Nets both with and without attention gating on 145 CTAs. Performance of the models were evaluated by calculating the DCS and Average Hausdorff Distance (AHD) on a test set of 20 CTAs. We found that the U-Net with attention gating yields more accurate segmentation than the U-Net without attention gating (DCS 0.96G±0.028 vs. 0.944±0.022, AHD 0.189±0.134mm vs. 0.247±0.155mm). Furthermore, we explored the segmentation accuracy of this U-Net for multi-class labeling of various anatomic segments of the thoracic aorta, and found an average DCS of 0.86 for across 7 different labels. We conclude that the U-Net with attention gating improves segmentation performance and may aid segmentation tasks that require high levels of accuracy.
机译:计算机断层摄影血管造影(CTA)图像中主动脉的精确分割是分析疾病,如主动脉瘤等疾病,但手动分割可能是耗时的,并且容易出错。基于卷积神经网络(CNN)的模型已经用于CTA扫描中解剖学的自动分割,具有普遍存在的U-Net是最受欢迎的架构之一。对于许多下游图像分析任务(例如,注册,直径测量)可能需要非常精确的分割精度。在这项工作中,我们开发并测试了一个U-Net模型,注意了胸椎主动脉伴患者临床CTA数据中胸主动脉的关注。注意Gating帮助模型专注于难以自动分段目标结构,并且先前已经显示在其他应用中增加分割精度。我们培训了U-Net,无论是在145 CTA上的关注。通过计算20CTA的测试集的DC和平均Hausdorff距离(AHD)来评估模型的性能。我们发现,U-Net的注意力浇注产生比U-Net更精确的细分,而没有注意门控(DCS 0.96G±0.028 Vs.0.944±0.022,AHD 0.189±0.134mm。0.247±0.155mm)。此外,我们探讨了这种U-Net的分割精度,用于多级标记胸主动脉的各种解剖区段,发现跨越7种不同标签的平均DC为0.86。我们得出结论,U-Net与关注门控提高了分割性能,可能有助于需要高精度的分割任务。

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