Division of Nuclear Technology and Applications, Institute of High Energy Physics, Chinese Academy of Sciences, Beijing, 100049, China.
Beijing Engineering Research Center of Radiographic Techniques and Equipment, Beijing, 100049, China.
Neurosci Bull. 2018 Oct;34(5):833-841. doi: 10.1007/s12264-018-0240-8. Epub 2018 Jun 7.
Positron emission tomography (PET) imaging of functional metabolism has been widely used to investigate functional recovery and to evaluate therapeutic efficacy after stroke. The voxel intensity of a PET image is the most important indicator of cellular activity, but is affected by other factors such as the basal metabolic ratio of each subject. In order to locate dysfunctional regions accurately, intensity normalization by a scale factor is a prerequisite in the data analysis, for which the global mean value is most widely used. However, this is unsuitable for stroke studies. Alternatively, a specified scale factor calculated from a reference region is also used, comprising neither hyper- nor hypo-metabolic voxels. But there is no such recognized reference region for stroke studies. Therefore, we proposed a totally data-driven automatic method for unbiased scale factor generation. This factor was generated iteratively until the residual deviation of two adjacent scale factors was reduced by < 5%. Moreover, both simulated and real stroke data were used for evaluation, and these suggested that our proposed unbiased scale factor has better sensitivity and accuracy for stroke studies.
正电子发射断层扫描(PET)成像的功能代谢已被广泛用于研究功能恢复,并评估中风后的治疗效果。PET 图像的体素强度是细胞活动的最重要指标,但会受到其他因素的影响,如每个受试者的基础代谢率。为了准确地定位功能障碍区域,在数据分析中,通过比例因子进行强度归一化是一个前提条件,其中最广泛使用的是全局平均值。然而,这种方法不适合中风研究。另一种方法是使用从参考区域计算的指定比例因子,其中既不包含高代谢体素也不包含低代谢体素。但是,对于中风研究,还没有这样公认的参考区域。因此,我们提出了一种完全基于数据的自动方法,用于生成无偏的比例因子。该因子会不断迭代,直到两个相邻比例因子的残差偏差减少<5%。此外,还使用了模拟和真实的中风数据进行评估,结果表明,我们提出的无偏比例因子对于中风研究具有更好的敏感性和准确性。