IEEE J Biomed Health Inform. 2021 Sep;25(9):3473-3485. doi: 10.1109/JBHI.2021.3068420. Epub 2021 Sep 3.
Aortic dissection (AD) centerline extraction has important clinical value in the quantitative diagnosis and treatment of AD disease. However, AD centerline extraction is a difficult task and quantitative evaluation is rarely studied. In this work, we propose a fully automatic algorithm to extract AD centerline based on a convolutional regression network (CRN) and the morphological properties of AD. To this end, we first design a topological model to describe the complex topology of AD. With this model, CRNs are trained to estimate the position, tangential vector, and scale of the centerline. The tracking accuracy is further improved by centerline continuity and a gradient-based penalty function. In addition, seed points are extracted on the basis of random regression and line clustering to ensure automated vessel tracking. The proposed method has been evaluated on an AD database and a public aortic database, and achieved high overlapping ratios of 0.9610 and 1.0000, respectively. The tracked centerline is very close to the ground truth and shows good stability, with low average distance errors of 1.4720 mm and 1.8748 mm, respectively.
主动脉夹层(AD)中心线提取在 AD 疾病的定量诊断和治疗中具有重要的临床价值。然而,AD 中心线提取是一项具有挑战性的任务,很少有研究对其进行定量评估。在这项工作中,我们提出了一种基于卷积回归网络(CRN)和 AD 形态特征的全自动 AD 中心线提取算法。为此,我们首先设计了一个拓扑模型来描述 AD 的复杂拓扑结构。利用该模型,CRN 被训练来估计中心线的位置、切向向量和比例。通过中心线连续性和基于梯度的惩罚函数进一步提高了跟踪精度。此外,还基于随机回归和线聚类提取种子点,以确保血管的自动跟踪。该方法在 AD 数据库和公共主动脉数据库上进行了评估,分别获得了 0.9610 和 1.0000 的高重叠率。跟踪的中心线非常接近真实中心线,并且具有很好的稳定性,平均距离误差分别为 1.4720mm 和 1.8748mm。