基于空间回归动态阈值的焦点平衡注意u网分割主动脉夹层CT图像

Tsung-Han Lee, Li-Ting Huang, Paul Kuo, Chien-Kuo Wang, Jiun-In Guo
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引用次数: 3

摘要

据报道,主动脉夹层在48小时内死亡率为50%,每小时增加1-2%。因此,快速诊断内膜皮瓣对患者的急诊治疗至关重要。为了准确呈现AD的患病部位,减少医生诊断的时间,图像分割是最有效的呈现方式。本研究采用U-Net模型,在检测过程中重点关注AD(包括上升、拱形和下降部分)。此外,我们还设计了站点和区域回归(SAR)模块。在此基础上,我们获得了99.1%的切片敏感性和93.2%的特异度。
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Focal-Balanced Attention U-Net with Dynamic Thresholding by Spatial Regression for Segmentation of Aortic Dissection in CT Imagery
An aortic dissection has been reported a mortality of 50% within the first 48 hours and an increase of 1-2% per hour. Therefore, rapid diagnosis of intimal flap would be very important for the emergency treatment of patients. In order to accurately present the affected part of AD and reduce the time for doctors to diagnose, image segmentation is the most effective way of presentation. We used the U-Net model in this study and focus on AD (including ascending, arch, and descending part) in the detection process. Furthermore, we design the site and area regression (SAR) module. With this help of accurate prediction, we achieved slice-level sensitivity and specificity of 99.1 % and 93.2%, respectively.
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