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Hepatic Vein and Arterial Vessel Segmentation in Liver Tumor Patients

机译:肝肿瘤患者的肝静脉和动脉血管分割

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摘要

Preoperative observation of liver status in patients with liver tumors by abdominal Computed Tomography (CT) imaging is one of the essential references for formulating surgical plans. Preoperative vessel segmentation in the patient’s liver region has become an increasingly important and challenging problem. Almost all existing methods first segment arterial and venous vessels on CT in the arterial and venous phases, respectively. Then, the two are directly registered to complete the reconstruction of the vascular system, ignoring the displacement and deformation of blood vessels caused by changes in body position and respiration in the two phases. We propose an unsupervised domain-adaptive two-stage vessel segmentation framework for simultaneous fine segmentation of arterial and venous vessels on venous phase CT. Specifically, we first achieve domain adaptation for arterial and venous phase CT using a modified cycle-consistent adversarial network. The newly added discriminator can improve the ability to generate and discriminate tiny blood vessels, making the domain-adaptive network more robust. The second-stage supervised training of arterial vessels was then performed on the translated arterial phase CT. In this process, we propose an orthogonal depth projection loss function to enhance the representation ability of the 3D U-shape segmentation network for the geometric information of the vessel model. The segmented venous vessels were also performed on venous phase CT in the second stage. Finally, we invited professional doctors to annotate arterial and venous vessels on the venous phase CT of the test set. The experimental results show that the segmentation accuracy of arterial and venous vessels on venous phase CT is 0.8454 and 0.8087, respectively. Our proposed framework can simultaneously achieve supervised segmentation of venous vessels and unsupervised segmentation of arterial vessels on venous phase CT. Our approach can be extended to other fields of medical segmentation, such as unsupervised domain adaptive segmentation of liver tumors at different CT phases, to facilitate the development of the community.
机译:通过腹部计算机断层扫描(CT)成像术前观察肝肿瘤患者的肝脏状态是制定手术计划的重要参考之一。患者肝脏区域的术前血管分割已成为一个越来越重要和具有挑战性的问题。几乎所有现有的方法都是首先在CT上分别在动脉期和静脉期对动脉和静脉血管进行分割。然后,直接将两者配准完成血管系统的重建,忽略两个阶段因体位和呼吸变化引起的血管移位和变形。我们提出了一种无监督的域自适应两阶段血管分割框架,用于在静脉期CT上同时对动脉和静脉血管进行精细分割。 具体来说,我们首先使用改进的周期一致的对抗网络实现动脉期和静脉期CT的域适应。新加入的判别器可以提高生成和区分微小血管的能力,使域自适应网络更加鲁棒。然后对平移动脉期 CT 进行动脉血管的第二阶段监督训练。在此过程中,我们提出了一种正交深度投影损失函数,以增强三维U型分割网络对船舶模型几何信息的表示能力。在第二阶段,还进行了分段的静脉血管在静脉期CT上。最后,我们邀请了专业医生在测试集的静脉期CT上对动脉和静脉血管进行注释。实验结果表明,静脉期CT上动脉血管和静脉血管的分割精度分别为0.8454和0.8087。我们提出的框架可以同时实现静脉血管的有监督分割和静脉期CT动脉血管的无监督分割。我们的方法可以扩展到其他医学分割领域,例如不同CT阶段肝肿瘤的无监督域自适应分割,以促进社区的发展。

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