CEA-DSV-I2BM-MIRCen, CNRS URA2210, Fontenay aux Roses, France.
Neuroimage. 2011 Aug 15;57(4):1447-57. doi: 10.1016/j.neuroimage.2011.04.059. Epub 2011 May 4.
Murine models are commonly used in neuroscience research to improve our knowledge of disease processes and to test drug effects. To accurately study brain glucose metabolism in these animals, ex vivo autoradiography remains the gold standard. The analysis of 3D-reconstructed autoradiographic volumes using a voxel-wise approach allows clusters of voxels representing metabolic differences between groups to be revealed. However, the spatial localization of these clusters requires careful visual identification by a neuroanatomist, a time-consuming task that is often subject to misinterpretation. Moreover, the large number of voxels to be computed in autoradiographic rodent images leads to many false positives. Here, we proposed an original automated indexation of the results of a voxel-wise approach using an MRI-based 3D digital atlas, followed by the restriction of the statistical analysis using atlas-based segmentation, thus taking advantage of the specific and complementary strengths of these two approaches. In a preliminary study of transgenic Alzheimer's mice (APP/PS1), and control littermates (PS1), we were able to achieve prompt and direct anatomical indexation of metabolic changes detected between the two groups, revealing both hypo- and hypermetabolism in the brain of APP/PS1 mice. Furthermore, statistical results were refined using atlas-based segmentation: most interesting results were obtained for the hippocampus. We thus confirmed and extended our previous results by identifying the brain structures affected in this pathological model and demonstrating modified glucose uptake in structures like the olfactory bulb. Our combined approach thus paves the way for a complete and accurate examination of functional data from cerebral structures involved in models of neurodegenerative diseases.
鼠类模型常用于神经科学研究,以增进我们对疾病过程的了解并测试药物的效果。为了准确研究这些动物的大脑葡萄糖代谢,离体放射性自显影仍然是金标准。使用体素分析方法对 3D 重建的放射性自显影体积进行分析,可以揭示代表组间代谢差异的体素簇。然而,这些体素簇的空间定位需要神经解剖学家进行仔细的视觉识别,这是一项耗时的任务,并且常常容易产生误解。此外,在放射性自显影的啮齿动物图像中需要计算大量的体素来导致许多假阳性。在这里,我们提出了一种使用基于 MRI 的 3D 数字图谱对体素分析结果进行原始自动索引的方法,然后使用基于图谱的分割对统计分析进行限制,从而利用这两种方法的特定和互补优势。在对转基因阿尔茨海默病(APP/PS1)小鼠和对照同窝仔鼠(PS1)的初步研究中,我们能够迅速而直接地对两组之间检测到的代谢变化进行解剖索引,揭示了 APP/PS1 小鼠大脑中的低代谢和高代谢。此外,使用基于图谱的分割对统计结果进行了细化:最有趣的结果是在海马体中获得的。因此,我们通过识别该病理模型中受影响的脑结构并证明了嗅球等结构中葡萄糖摄取的改变,证实并扩展了我们之前的结果。我们的联合方法为全面准确地检查涉及神经退行性疾病模型的脑结构的功能数据铺平了道路。