CACTUSS: Common Anatomical CT-US Space for US examinations
- URL: http://arxiv.org/abs/2207.08619v1
- Date: Mon, 18 Jul 2022 14:05:25 GMT
- Title: CACTUSS: Common Anatomical CT-US Space for US examinations
- Authors: Yordanka Velikova, Walter Simson, Mehrdad Salehi, Mohammad Farid
Azampour, Philipp Paprottka, Nassir Navab
- Abstract summary: Abdominal aortic aneurysm (AAA) is a vascular disease in which a section of the aorta enlarges, weakening its walls and potentially rupturing the vessel.
Recent abdominal CT datasets have been successfully utilized to train deep neural networks for automatic aorta segmentation.
CACTUSS acts as a virtual bridge between CT and US modalities to enable automatic AAA screening sonography.
- Score: 36.45569352490318
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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