Svarer Claus, Madsen Karine, Hasselbalch Steen G, Pinborg Lars H, Haugbøl Steven, Frøkjaer Vibe G, Holm Søren, Paulson Olaf B, Knudsen Gitte M
Neurobiology Research Unit, University Hospital of Copenhagen, Rigshospitalet, N9201, 9 Blegdamsvej, DK-2100 Copenhagen, Denmark.
Neuroimage. 2005 Feb 15;24(4):969-79. doi: 10.1016/j.neuroimage.2004.10.017. Epub 2004 Dec 9.
The purpose of this study was to develop and validate an observer-independent approach for automatic generation of volume-of-interest (VOI) brain templates to be used in emission tomography studies of the brain. The method utilizes a VOI probability map created on the basis of a database of several subjects' MR-images, where VOI sets have been defined manually. High-resolution structural MR-images and 5-HT(2A) receptor binding PET-images (in terms of (18)F-altanserin binding) from 10 healthy volunteers and 10 patients with mild cognitive impairment were included for the analysis. A template including 35 VOIs was manually delineated on the subjects' MR images. Through a warping algorithm template VOI sets defined from each individual were transferred to the other subjects MR-images and the voxel overlap was compared to the VOI set specifically drawn for that particular individual. Comparisons were also made for the VOI templates 5-HT(2A) receptor binding values. It was shown that when the generated VOI set is based on more than one template VOI set, delineation of VOIs is better reproduced and shows less variation as compared both to transfer of a single set of template VOIs as well as manual delineation of the VOI set. The approach was also shown to work equally well in individuals with pronounced cerebral atrophy. Probability-map-based automatic delineation of VOIs is a fast, objective, reproducible, and safe way to assess regional brain values from PET or SPECT scans. In addition, the method applies well in elderly subjects, even in the presence of pronounced cerebral atrophy.
本研究的目的是开发并验证一种独立于观察者的方法,用于自动生成兴趣区(VOI)脑模板,以用于脑部发射断层扫描研究。该方法利用基于多个受试者的MR图像数据库创建的VOI概率图,其中VOI集已手动定义。纳入了10名健康志愿者和10名轻度认知障碍患者的高分辨率结构MR图像和5-HT(2A)受体结合PET图像(以(18)F-阿坦色林结合表示)进行分析。在受试者的MR图像上手动勾勒出一个包含35个VOI的模板。通过一种变形算法,将从每个个体定义的模板VOI集转移到其他受试者的MR图像上,并将体素重叠与专门为该特定个体绘制的VOI集进行比较。还对VOI模板的5-HT(2A)受体结合值进行了比较。结果表明,当生成的VOI集基于多个模板VOI集时,与单个模板VOI集的转移以及VOI集的手动勾勒相比,VOI的勾勒能更好地重现,且变化更小。该方法在有明显脑萎缩的个体中也同样有效。基于概率图的VOI自动勾勒是一种快速、客观、可重复且安全的方法,可从PET或SPECT扫描中评估局部脑值。此外,该方法在老年受试者中也适用良好,即使存在明显的脑萎缩。