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Automatic Aortic Wall Segmentation and Plaque Detection using Deep Convolutional Neural Networks

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2018

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Gesellschaft für Informatik e.V.

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Abnormal aortic wall thickness and the presence of aortic plaque have been linked to various types of cardiovascular disease. QuantiĄcation of both indicators currently depends on manual or semi-automatic methods which suffer from limited quality and long acquisition times. This work presents various fully automatic state-of-the art solutions to two medical image processing problems: aortic wall segmentation and plaque slice detection. A u-net derived residual convolutional neural network (CNN), a cascaded pipeline of two CNNs and a 3D CNN architecture are used for aortic wall segmentation. Plaque detection is performed by a standard multilayer residual CNN classification architecture, a u-net derived CNN classifier and a capsule CNN. The experiments show that the u-net inspired residual CNN performs best at the aortic wall segmentation task with a Dice score of around 0.8 while the capsule CNN achieves the best results in slice-wise plaque detection with a precision of 0.74 and an accuracy of 0.68.

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Beetz, Marcel (2018): Automatic Aortic Wall Segmentation and Plaque Detection using Deep Convolutional Neural Networks. SKILL 2018 - Studierendenkonferenz Informatik. Bonn: Gesellschaft für Informatik e.V.. PISSN: 1614-3213. ISBN: 978-3-88579-448-6. pp. 157-168. Neuronale Netze. Berlin. 26.-27. September 2018

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