Department of Molecular and Medical Pharmacology, David Geffen School of Medicine at UCLA, Los Angeles, California 90095-6948, USA.
J Nucl Med. 2010 Feb;51(2):210-8. doi: 10.2967/jnumed.109.063701. Epub 2010 Jan 15.
Head movement during a PET scan (especially a dynamic scan) can affect both the qualitative and the quantitative aspects of an image, making it difficult to accurately interpret the results. The primary objective of this study was to develop a retrospective image-based movement correction (MC) method and evaluate its implementation on dynamic 2-(1-{6-[(2-(18)F-fluoroethyl)(methyl)amino]-2-naphthyl}ethylidene)malononitrile ((18)F-FDDNP) PET images of cognitively intact controls and patients with Alzheimer's disease (AD).
Dynamic (18)F-FDDNP PET images, used for in vivo imaging of beta-amyloid plaques and neurofibrillary tangles, were obtained from 12 AD patients and 9 age-matched controls. For each study, a transmission scan was first acquired for attenuation correction. An accurate retrospective MC method that corrected for transmission-emission and emission-emission misalignments was applied to all studies. No restriction was assumed for zero movement between the transmission scan and the first emission scan. Logan analysis, with the cerebellum as the reference region, was used to estimate various regional distribution volume ratio (DVR) values in the brain before and after MC. Discriminant analysis was used to build a predictive model for group membership, using data with and without MC.
MC improved the image quality and quantitative values in (18)F-FDDNP PET images. In this subject population, no significant difference in DVR value was observed in the medial temporal (MTL) region of controls and patients with AD before MC. However, after MC, significant differences in DVR values in the frontal, parietal, posterior cingulate, MTL, lateral temporal (LTL), and global regions were seen between the 2 groups (P < 0.05). In controls and patients with AD, the variability of regional DVR values (as measured by the coefficient of variation) decreased on average by more than 18% after MC. Mean DVR separation between controls and patients with AD was higher in frontal, MTL, LTL, and global regions after MC. Group classification by discriminant analysis based on (18)F-FDDNP DVR values was markedly improved after MC.
The streamlined and easy-to-use MC method presented in this work significantly improves the image quality and the measured tracer kinetics of (18)F-FDDNP PET images. The proposed MC method has the potential to be applied to PET studies on patients having other disorders (e.g., Down syndrome and Parkinson's disease) and to brain PET scans with other molecular imaging probes.
在 PET 扫描过程中(尤其是动态扫描),头部运动会影响图像的定性和定量方面,使得准确解释结果变得困难。本研究的主要目的是开发一种基于回顾性图像的运动校正(MC)方法,并评估其在认知正常对照者和阿尔茨海默病(AD)患者的 2-(1-(6-(2-(18)F-氟乙基)(甲基)氨基)-2-萘基)亚乙基)丙二腈(18F-FDDNP)动态 PET 图像中的应用。
从 12 例 AD 患者和 9 例年龄匹配的对照者中获得用于体内成像β-淀粉样斑块和神经原纤维缠结的动态 18F-FDDNP PET 图像。对于每个研究,首先获取透射扫描以进行衰减校正。对所有研究均应用了一种精确的回顾性 MC 方法,可校正透射-发射和发射-发射失准。在透射扫描和第一次发射扫描之间,未假设零运动的限制。使用以小脑为参考区域的 Logan 分析,在 MC 前后估计大脑中各种区域分布容积比(DVR)值。使用有和没有 MC 的数据进行判别分析,建立了用于组归属的预测模型。
MC 改善了 18F-FDDNP PET 图像的图像质量和定量值。在该受试者人群中,MC 前后,AD 患者和对照组的内侧颞叶(MTL)区域的 DVR 值无显著差异。但是,MC 后,2 组之间的额、顶、后扣带回、MTL、外侧颞叶(LTL)和全脑区域的 DVR 值存在显著差异(P <0.05)。在对照组和 AD 患者中,MC 后,区域 DVR 值(以变异系数衡量)的变异性平均降低了 18%以上。MC 后,MTL、LTL 和全脑区域中,对照组和 AD 患者的平均 DVR 分离度更高。基于 18F-FDDNP DVR 值的判别分析进行的组分类在 MC 后明显改善。
本研究中提出的简化且易于使用的 MC 方法可显著改善 18F-FDDNP PET 图像的图像质量和所测示踪剂动力学。该 MC 方法有可能应用于其他疾病(例如唐氏综合征和帕金森病)患者的 PET 研究以及其他分子成像探针的脑 PET 扫描。