INSERM, U650, LaTIM, CHU Morvan, Brest F-29200, France.
IEEE Trans Med Imaging. 2012 Feb;31(2):438-48. doi: 10.1109/TMI.2011.2171358. Epub 2011 Oct 13.
Respiratory motion is a major source of reduced quality in positron emission tomography (PET). In order to minimize its effects, the use of respiratory synchronized acquisitions, leading to gated frames, has been suggested. Such frames, however, are of low signal-to-noise ratio (SNR) as they contain reduced statistics. Super-resolution (SR) techniques make use of the motion in a sequence of images in order to improve their quality. They aim at enhancing a low-resolution image belonging to a sequence of images representing different views of the same scene. In this work, a maximum a posteriori (MAP) super-resolution algorithm has been implemented and applied to respiratory gated PET images for motion compensation. An edge preserving Huber regularization term was used to ensure convergence. Motion fields were recovered using a B-spline based elastic registration algorithm. The performance of the SR algorithm was evaluated through the use of both simulated and clinical datasets by assessing image SNR, as well as the contrast, position and extent of the different lesions. Results were compared to summing the registered synchronized frames on both simulated and clinical datasets. The super-resolution image had higher SNR (by a factor of over 4 on average) and lesion contrast (by a factor of 2) than the single respiratory synchronized frame using the same reconstruction matrix size. In comparison to the motion corrected or the motion free images a similar SNR was obtained, while improvements of up to 20% in the recovered lesion size and contrast were measured. Finally, the recovered lesion locations on the SR images were systematically closer to the true simulated lesion positions. These observations concerning the SNR, lesion contrast and size were confirmed on two clinical datasets included in the study. In conclusion, the use of SR techniques applied to respiratory motion synchronized images lead to motion compensation combined with improved image SNR and contrast, without any increase in the overall acquisition times.
呼吸运动是正电子发射断层扫描(PET)图像质量降低的主要原因。为了最小化其影响,建议使用呼吸同步采集,导致门控帧。然而,这些帧的信噪比(SNR)较低,因为它们包含减少的统计信息。超分辨率(SR)技术利用序列图像中的运动来提高它们的质量。它们旨在增强属于代表同一场景不同视图的序列图像的低分辨率图像。在这项工作中,实现了最大后验(MAP)超分辨率算法,并将其应用于呼吸门控 PET 图像的运动补偿。使用边缘保持 Huber 正则化项来确保收敛。运动场是使用基于 B 样条的弹性配准算法恢复的。通过使用模拟和临床数据集评估图像 SNR 以及不同病变的对比度、位置和范围,来评估 SR 算法的性能。将结果与在模拟和临床数据集上同时注册同步帧进行了比较。与使用相同重建矩阵大小的单个呼吸同步帧相比,超分辨率图像具有更高的 SNR(平均提高了 4 倍以上)和病变对比度(提高了 2 倍)。与运动校正或无运动图像相比,获得了相似的 SNR,同时测量到恢复的病变大小和对比度提高了高达 20%。最后,SR 图像上恢复的病变位置系统地更接近真实模拟病变位置。在研究中包含的两个临床数据集上,对 SNR、病变对比度和大小的观察结果得到了证实。总之,将 SR 技术应用于呼吸运动同步图像可以实现运动补偿,同时提高图像 SNR 和对比度,而不会增加总采集时间。