IEEE Trans Med Imaging. 2022 Jul;41(7):1826-1836. doi: 10.1109/TMI.2022.3150005. Epub 2022 Jun 30.
The lumen of aortic dissection (AD) has important clinical value for preoperative diagnosis, interoperative intervention, and post-operative evaluation of AD diseases. AD segmentation is challenging because (i) fitting its irregular profile by using traditional models is difficult, and (ii) the size of the AD image is usually so big that many algorithms have to perform down-sampling to reduce the computational burden, thereby reducing the resolution of the result. In this paper, an automatic AD segmentation algorithm, in which a 3D mesh is gradually moved to the surface of AD based on the offset estimated by a deep mesh deformation module, is presented. AD morphology is used to constrain the initial mesh and guide the deformation, which improves the efficiency of the deep network and avoids down-sampling. Moreover, a stepwise regression strategy is introduced to solve the mesh folding problem and improve the uniformity of the mesh points. On an AD database that involves 35 images, the proposed method obtains the mean Dice of 94.12% and symmetric 95% Hausdorff distance of 2.85 mm, which outperforms five state-of-the-art AD segmentation methods. The average processing time is 16.6 s, and the memory used to train the network is only 0.36 GB, indicating that this method is easy to apply in clinical practice.
主动脉夹层 (AD) 的管腔对于 AD 疾病的术前诊断、术中干预和术后评估具有重要的临床价值。AD 的分割具有挑战性,原因有二:(i)使用传统模型拟合其不规则轮廓很困难;(ii)AD 图像的尺寸通常很大,许多算法必须进行下采样以降低计算负担,从而降低结果的分辨率。本文提出了一种自动 AD 分割算法,该算法基于深度网格变形模块估计的偏移量,逐渐将 3D 网格移动到 AD 的表面。AD 形态用于约束初始网格并引导变形,这提高了深度网络的效率并避免了下采样。此外,引入了逐步回归策略来解决网格折叠问题并提高网格点的均匀性。在涉及 35 张图像的 AD 数据库上,所提出的方法获得了 94.12%的平均 Dice 值和 2.85 毫米的对称 95% Hausdorff 距离,优于五种最先进的 AD 分割方法。平均处理时间为 16.6 秒,训练网络所使用的内存仅为 0.36GB,表明该方法易于在临床实践中应用。