Altaye Mekibib, Holland Scott K, Wilke Marko, Gaser Christian
Center for Epidemiology and Biostatistics, Cincinnati Children's Hospital Medical Center, Department of Pediatrics, University of Cincinnati, 3333 Burnet Ave., Cincinnati, OH 45229-3039, USA.
Neuroimage. 2008 Dec;43(4):721-30. doi: 10.1016/j.neuroimage.2008.07.060. Epub 2008 Aug 13.
Spatial normalization and segmentation of infant brain MRI data based on adult or pediatric reference data may not be appropriate due to the developmental differences between the infant input data and the reference data. In this study we have constructed infant templates and a priori brain tissue probability maps based on the MR brain image data from 76 infants ranging in age from 9 to 15 months. We employed two processing strategies to construct the infant template and a priori data: one processed with and one without using a priori data in the segmentation step. Using the templates we constructed, comparisons between the adult templates and the new infant templates are presented. Tissue distribution differences are apparent between the infant and adult template, particularly in the gray matter (GM) maps. The infant a priori information classifies brain tissue as GM with higher probability than adult data, at the cost of white matter (WM), which presents with lower probability when compared to adult data. The differences are more pronounced in the frontal regions and in the cingulate gyrus. Similar differences are also observed when the infant data is compared to a pediatric (age 5 to 18) template. The two-pass segmentation approach taken here for infant T1W brain images has provided high quality tissue probability maps for GM, WM, and CSF, in infant brain images. These templates may be used as prior probability distributions for segmentation and normalization; a key to improving the accuracy of these procedures in special populations.
由于婴儿输入数据与参考数据之间存在发育差异,基于成人或儿童参考数据对婴儿脑MRI数据进行空间归一化和分割可能并不合适。在本研究中,我们基于76名年龄在9至15个月之间的婴儿的脑部MR图像数据构建了婴儿模板和先验脑组织概率图。我们采用了两种处理策略来构建婴儿模板和先验数据:一种在分割步骤中使用先验数据进行处理,另一种则不使用。利用我们构建的模板,展示了成人模板与新的婴儿模板之间的比较。婴儿模板和成人模板之间的组织分布差异明显,尤其是在灰质(GM)图中。婴儿先验信息将脑组织分类为GM的概率高于成人数据,但代价是白质(WM),与成人数据相比,其概率较低。这些差异在额叶区域和扣带回中更为明显。当将婴儿数据与儿童(5至18岁)模板进行比较时,也观察到了类似的差异。这里采用的针对婴儿T1W脑图像的两遍分割方法为婴儿脑图像中的GM、WM和脑脊液提供了高质量的组织概率图。这些模板可作为分割和归一化的先验概率分布;这是提高特殊人群中这些程序准确性的关键。