Dissected aorta segmentation using convolutional neural networks
Abstract— Background and objective: Aortic dissection is a severe cardiovascular pathology in which an injury of the intimal layer of the aorta allows blood flowing into the aortic wall, forcing the wall layers apart. Such situation presents a high mortality rate and requires an in-depth understanding of the 3-D morphol- ogy of the dissected aorta to plan the right treatment. An accurate automatic segmentation algorithm is therefore needed. Method: In this paper, we propose a deep-learning-based algorithm to segment dissected aorta on com- puted tomography angiography (CTA) images. The algorithm consists of two steps. Firstly, a 3-D convolu- tional neural network (CNN) is applied to divide the 3-D volume into two anatomical portions. Secondly, two 2-D CNNs based on pyramid scene parsing network (PSPnet) segment each specific portion sepa- rately. An edge extraction branch was added to the 2-D model to get higher segmentation accuracy on intimal flap area. Results: The experiments conducted and the comparisons made show that the proposed solution per- forms well with an average dice index over 92%. The combination of 3-D and 2-D models improves the aorta segmentation accuracy compared to 3-D only models and the segmentation robustness compared to 2-D only models. The edge extraction branch improves the DICE index near aorta boundaries from 73.41% to 81.39%. Conclusions: The proposed algorithm has satisfying performance for capturing the aorta structure while avoiding false positives on the intimal flaps.