Liu Qingyi, Mohy-Ud-Din Hassan, Boutagy Nabil E, Jiang Mingyan, Ren Silin, Stendahl John C, Sinusas Albert J, Liu Chi
School of Information Science and Engineering, Shandong University, Jinan, Shandong 250100, People's Republic of China. Department of Radiology and Biomedical Imaging, Yale University, New Haven, CT 06520, United States of America.
Phys Med Biol. 2017 May 21;62(10):3944-3957. doi: 10.1088/1361-6560/aa6520. Epub 2017 Mar 7.
Anatomical-based partial volume correction (PVC) has been shown to improve image quality and quantitative accuracy in cardiac SPECT/CT. However, this method requires manual segmentation of various organs from contrast-enhanced computed tomography angiography (CTA) data. In order to achieve fully automatic CTA segmentation for clinical translation, we investigated the most common multi-atlas segmentation methods. We also modified the multi-atlas segmentation method by introducing a novel label fusion algorithm for multiple organ segmentation to eliminate overlap and gap voxels. To evaluate our proposed automatic segmentation, eight canine Tc-labeled red blood cell SPECT/CT datasets that incorporated PVC were analyzed, using the leave-one-out approach. The Dice similarity coefficient of each organ was computed. Compared to the conventional label fusion method, our proposed label fusion method effectively eliminated gaps and overlaps and improved the CTA segmentation accuracy. The anatomical-based PVC of cardiac SPECT images with automatic multi-atlas segmentation provided consistent image quality and quantitative estimation of intramyocardial blood volume, as compared to those derived using manual segmentation. In conclusion, our proposed automatic multi-atlas segmentation method of CTAs is feasible, practical, and facilitates anatomical-based PVC of cardiac SPECT/CT images.
基于解剖的部分容积校正(PVC)已被证明可提高心脏SPECT/CT的图像质量和定量准确性。然而,该方法需要从对比增强计算机断层血管造影(CTA)数据中手动分割各个器官。为了实现用于临床转化的全自动CTA分割,我们研究了最常见的多图谱分割方法。我们还通过引入一种用于多器官分割的新型标签融合算法来修改多图谱分割方法,以消除重叠和间隙体素。为了评估我们提出的自动分割方法,我们采用留一法分析了八个包含PVC的犬Tc标记红细胞SPECT/CT数据集。计算每个器官的骰子相似系数。与传统的标签融合方法相比,我们提出的标签融合方法有效地消除了间隙和重叠,并提高了CTA分割的准确性。与使用手动分割得出的结果相比,具有自动多图谱分割的心脏SPECT图像基于解剖的PVC提供了一致的图像质量和心肌内血容量的定量估计。总之,我们提出的CTA自动多图谱分割方法是可行的、实用的,并且有助于心脏SPECT/CT图像基于解剖的PVC。