Abdominal aortic aneurysm (AAA) is a vascular disease in which a section of the aorta enlarges, weakening its walls and potentially rupturing the vessel. Abdominal ultrasound has been utilized for diagnostics, but due to its limited image quality and operator dependency, CT scans are usually required for monitoring and treatment planning. Recently, abdominal CT datasets have been successfully utilized to train deep neural networks for automatic aorta segmentation. Knowledge gathered from this solved task could therefore be leveraged to improve US segmentation for AAA diagnosis and monitoring. To this end, we propose CACTUSS: a common anatomical CT-US space, which acts as a virtual bridge between CT and US modalities to enable automatic AAA screening sonography. CACTUSS makes use of publicly available labelled data to learn to segment based on an intermediary representation that inherits properties from both US and CT. We train a segmentation network in this new representation and employ an additional image-to-image translation network which enables our model to perform on real B-mode images. Quantitative comparisons against fully supervised methods demonstrate the capabilities of CACTUSS in terms of Dice Score and diagnostic metrics, showing that our method also meets the clinical requirements for AAA scanning and diagnosis.
翻译:腹膜动脉动脉瘤(AAA)是一种血管疾病,在这种疾病中,动脉动脉动脉动(AAA)的部分扩大,削弱其墙壁,并有可能破坏船只。腹膜超声波已被用于诊断,但由于其图像质量有限和操作者依赖性,监测和治疗规划通常需要CT扫描。最近,腹膜动脉动动脉动脉动脉动瘤数据集被成功地用于培训心脏内心网络进行自动动脉动断裂。因此,从这一已解决的任务中收集的知识可以被用来改进美国对AAAA的诊断和监测的分解。为此,我们建议CACTUSS:一个共同的解剖CT-US空间,作为CT与美国模式之间的虚拟桥梁,以便自动进行AAA筛选声学。 CACTUSS利用公开的贴标签数据学习基于从美国和CT母体继承属性的中间代表的分解路段。我们在这个新的代表中培训一个分解网络,并使用一个额外的图像到图像翻译网络,使我们的模型能够对C-A的诊断能力进行真正的分析,并充分展示我们的诊断方法。