Odano Ikuo, Varrone Andrea, Hosoya Tetsuo, Sakaguchi Kazuya, Gulyás Balázs, Padmanabhan Parasuraman, Ghosh Krishna Kanta, Yang Chang-Tong, Guenther Ilonka, Wang Zhimin, Serrano Raymond, Chimon Nevil Ghislain, Halldin Christer
Psychiatric Section, Department of Clinical Neuroscience, Karolinska InstitutetStockholm, Sweden.
Department of Nuclear Medicine and Radiology, Institute of Development, Aging and Cancer, Tohoku UniversitySendai, Japan.
Am J Nucl Med Mol Imaging. 2017 Dec 20;7(6):246-254. eCollection 2017.
The aim of this study on dopamine transporter binding by [F]FE-PE2I and PET was to describe an image-derived approach using reference tissue models: the Logan DVR approach and simplified reference tissue model (SRTM), the features of which were simple to operate and precise in the measurements. Using the approach, the authors sought to obtain binding images and parameters. [F]FE-PE2I and dynamic PET as well as an MRI was performed on three rhesus monkeys, and metabolite corrected arterial plasma inputs were obtained. After co-registering of PET to MR images, both image sets were resliced. The time-activity curve of the cerebellum was used as indirect input, and binding parametric images were computed voxel-by-voxel. Voxel-wise linear calculations were used for the Logan DVR approach, and nonlinear least squares fittings for the SRTM. To determine the best linear regression in the Logan DVR approach, the distribution volume ratio was obtained using the optimal starting frame analysis. The obtained binding parameters were compared with those obtained by the other independent ROI-based numerical approaches: two-tissue compartment model (2TCM), Logan DVR approach and SRTM using PMOD software. Binding potentials (BP) obtained by the present approach agreed well with those obtained by ROI-based numerical approaches, although reference tissue models tended to underestimate the BP value than 2TCM. Image-derived Logan approach provided a low-noise image, the computation time was short, and the error in the optimal starting frame analysis was small. The present approach provides a high-quality binding parametric image and reliable parameter value easily.
本研究旨在通过[F]FE-PE2I和正电子发射断层扫描(PET)来描述一种利用参考组织模型的图像衍生方法:洛根分布容积比(Logan DVR)方法和简化参考组织模型(SRTM),其特点是操作简单且测量精确。作者试图通过该方法获得结合图像和参数。对三只恒河猴进行了[F]FE-PE2I、动态PET以及磁共振成像(MRI)检查,并获得了代谢物校正后的动脉血浆输入数据。将PET图像与MR图像配准后,对两组图像进行重新切片。将小脑的时间-活度曲线用作间接输入,逐体素计算结合参数图像。洛根DVR方法采用体素线性计算,SRTM采用非线性最小二乘法拟合。为了确定洛根DVR方法中的最佳线性回归,使用最佳起始帧分析获得分布容积比。将获得的结合参数与通过其他基于感兴趣区域(ROI)的独立数值方法获得的参数进行比较:双组织室模型(2TCM)、洛根DVR方法和使用PMOD软件的SRTM。尽管参考组织模型往往比2TCM低估结合电位(BP)值,但本方法获得的BP值与基于ROI的数值方法获得的结果吻合良好。图像衍生的洛根方法提供了低噪声图像,计算时间短,最佳起始帧分析中的误差小。本方法能够轻松提供高质量的结合参数图像和可靠的参数值。