Department of Electronics and Computer Science, Universidad de Santiago de Compostela, Santiago de Compostela, Spain.
CTIM, Universidad de Las Palmas de Gran Canaria, Las Palmas de Gran Canaria, Spain.
Int J Comput Assist Radiol Surg. 2019 Feb;14(2):345-355. doi: 10.1007/s11548-018-1861-0. Epub 2018 Sep 22.
The shape and size of the aortic lumen can be associated with several aortic diseases. Automated computer segmentation can provide a mechanism for extracting the main features of the aorta that may be used as a diagnostic aid for physicians. This article presents a new fully automated algorithm to extract the aorta geometry for either normal (with and without contrast) or abnormal computed tomography (CT) cases.
The algorithm we propose is a fast incremental technique that computes the 3D geometry of the aortic lumen from an initial contour located inside it. Our approach is based on the optimization of the 3D orientation of the cross sections of the aorta. The method uses a robust ellipse estimation algorithm and an energy-based optimization technique to automatically track the centerline and the cross sections. The optimization involves the size and eccentricity of the ellipse which best fits the aorta contour on each cross-sectional plane. The method works directly on the original CT and does not require a prior segmentation of the aortic lumen. We present experimental results to show the accuracy of the method and its ability to cope with challenging CT cases where the aortic lumen may have low contrast, different kinds of pathologies, artifacts, and even significant angulations due to severe elongations.
The algorithm correctly tracked the aorta geometry in 380 of 385 CT cases. The mean of the dice similarity coefficient was 0.951 for aorta cross sections that were randomly selected from the whole database. The mean distance to a manually delineated segmentation of the aortic lumen was 0.9 mm for sixteen selected cases.
The results achieved after the evaluation demonstrate that the proposed algorithm is robust and accurate for the automatic extraction of the aorta geometry for both normal (with and without contrast) and abnormal CT volumes.
主动脉管腔的形状和大小可能与多种主动脉疾病有关。自动计算机分割可以提供一种提取主动脉主要特征的机制,可作为医生的诊断辅助工具。本文提出了一种新的全自动算法,用于提取正常(有或无对比)或异常 CT 情况下的主动脉几何形状。
我们提出的算法是一种快速增量技术,它从位于其内的初始轮廓计算主动脉管腔的 3D 几何形状。我们的方法基于优化主动脉横截面的 3D 方向。该方法使用稳健的椭圆估计算法和基于能量的优化技术自动跟踪中心线和横截面。优化涉及最适合每个横截面平面上主动脉轮廓的椭圆的大小和偏心率。该方法直接在原始 CT 上运行,不需要对主动脉管腔进行预先分割。我们展示了实验结果,以显示该方法的准确性及其应对具有挑战性的 CT 情况的能力,在这些情况下,主动脉管腔的对比度可能较低,存在各种病理、伪影,甚至由于严重伸长而导致明显的角度。
该算法正确地跟踪了 385 例 CT 病例中的 380 例主动脉几何形状。从整个数据库中随机选择的主动脉横截面的骰子相似系数平均值为 0.951。对于 16 个选定病例,手动勾画的主动脉管腔分段的平均距离为 0.9 毫米。
评估后获得的结果表明,该算法对于自动提取正常(有或无对比)和异常 CT 容积的主动脉几何形状具有强大的准确性。