Laboratory of Imaging Science and Technology, Southeast University, Nanjing, China.
Department of Biomedical Engineering, Beijing Institute of Technology, Beijing, China.
Comput Methods Programs Biomed. 2021 Nov;211:106417. doi: 10.1016/j.cmpb.2021.106417. Epub 2021 Sep 15.
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 morphology of the dissected aorta to plan the right treatment. An accurate automatic segmentation algorithm is therefore needed.
In this paper, we propose a deep-learning-based algorithm to segment dissected aorta on computed tomography angiography (CTA) images. The algorithm consists of two steps. Firstly, a 3-D convolutional 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 separately. An edge extraction branch was added to the 2-D model to get higher segmentation accuracy on intimal flap area.
The experiments conducted and the comparisons made show that the proposed solution performs 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%.
The proposed algorithm has satisfying performance for capturing the aorta structure while avoiding false positives on the intimal flaps.
主动脉夹层是一种严重的心血管病理学,其中主动脉的内膜层受伤,允许血液流入主动脉壁,迫使壁层分离。这种情况死亡率很高,需要深入了解夹层主动脉的 3-D 形态,以便制定正确的治疗方案。因此,需要一种准确的自动分割算法。
本文提出了一种基于深度学习的算法,用于分割计算机断层血管造影(CTA)图像上的夹层主动脉。该算法由两个步骤组成。首先,应用 3-D 卷积神经网络(CNN)将 3-D 体积分为两个解剖部分。其次,基于金字塔场景解析网络(PSPnet)的两个 2-D CNN 分别对每个特定部分进行分割。在 2-D 模型中添加了边缘提取分支,以在内膜瓣区域获得更高的分割精度。
进行的实验和比较表明,该解决方案的平均骰子指数超过 92%,表现良好。3-D 和 2-D 模型的组合与仅 3-D 模型相比提高了主动脉分割精度,与仅 2-D 模型相比提高了分割鲁棒性。边缘提取分支将主动脉边界附近的 DICE 指数从 73.41%提高到 81.39%。
该算法在捕获主动脉结构的同时,避免了内膜瓣上的假阳性,具有令人满意的性能。