Kozerke S, Botnar R, Oyre S, Scheidegger M B, Pedersen E M, Boesiger P
Institute of Biomedical Engineering and Medical Informatics, University of Zurich and Swiss Federal Institute of Technology, Switzerland.
J Magn Reson Imaging. 1999 Jul;10(1):41-51. doi: 10.1002/(sici)1522-2586(199907)10:1<41::aid-jmri6>3.0.co;2-j.
The segmentation of images obtained by cine magnetic resonance (MR) phase contrast velocity mapping using manual or semi-automated methods is a time consuming and observer-dependent process that still hampers the use of flow quantification in a clinical setting. A fully automatic segmentation method based on active contour model algorithms for defining vessel boundaries has been developed. For segmentation, the phase image, in addition to the magnitude image, is used to address image distortions frequently seen in the magnitude image of disturbed flow fields. A modified definition for the active contour model is introduced to reduce the influence of missing or spurious edge information of the vessel wall. The method was evaluated on flow phantom data and on in vivo images acquired in the ascending aorta of humans. Phantom experiments resulted in an error of 0.8% in assessing the luminal area of a flow phantom equipped with an artificial heart valve. Blinded evaluation of the volume flow rates from automatic vs. manual segmentation of gradient echo (FFE) phase contrast images obtained in vivo resulted in a mean difference of -0.9 +/- 3%. The mean difference from automatic vs. manual segmentation of images acquired with a hybrid phase contrast sequence (TFEPI) within a single breath-hold was -0.9 +/- 6%.
使用手动或半自动方法对电影磁共振(MR)相位对比速度映射获得的图像进行分割是一个耗时且依赖观察者的过程,这仍然阻碍了血流定量在临床环境中的应用。已经开发了一种基于主动轮廓模型算法来定义血管边界的全自动分割方法。为了进行分割,除了幅度图像外,还使用相位图像来处理在紊乱流场的幅度图像中经常出现的图像失真。引入了一种主动轮廓模型的修改定义,以减少血管壁缺失或虚假边缘信息的影响。该方法在血流模拟数据和人类升主动脉采集的体内图像上进行了评估。模拟实验在评估配备人工心脏瓣膜的血流模拟的管腔面积时产生了0.8%的误差。对体内获得的梯度回波(FFE)相位对比图像的自动分割与手动分割的体积流率进行盲法评估,结果平均差异为-0.9±3%。在单次屏气内使用混合相位对比序列(TFEPI)采集的图像的自动分割与手动分割的平均差异为-0.9±6%。