首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Automatic Regional Analysis of DTI Properties in the Developmental Macaque Brain
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Automatic Regional Analysis of DTI Properties in the Developmental Macaque Brain

机译:猕猴大脑中DTI属性的自动区域分析

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Many neuroimaging studies are applied to monkeys as pathologies and environmental exposures can be studied in well-controlled settings and environment. In this work, we present a framework for the use of an atlas based, fully automatic segmentation of brain tissues, lobar parcellations, subcortical structures and the regional extraction of Diffusion Tensor Imaging (DTI) properties. We first built a structural atlas from training images by iterative, joint deformable registration into an unbiased average image. On this atlas, probabilistic tissue maps, a lobar parcellation and subcortical structures were determined. This information is applied to each subjects structural image via affine, followed by deformable registration. The affinely transformed atlas is employed for a joint T1 and T2 based tissue classification. The deformed parcellation regions mask the tissue segmentations to define the parcellation for white and gray matter separately. Each subjects structural image is then non-rigidly matched with its DTI image by normalized mutual information, b-spline based registration. The DTI property histograms were then computed using the probabilistic white matter information for each lobar parcellation. We successfully built an average atlas using a developmental training datasets of 18 cases aged 16-34 months. Our framework was successfully applied to over 50 additional subjects in the age range of 9 70 months. The probabilistically weighted FA average in the corpus callosum region showed the largest increase over time in the observed age range. Most cortical regions show modest FA increase, whereas the cerebellums FA values remained stable. The individual methods used in this segmentation framework have been applied before, but their combination is novel, as is their application to macaque MRI data. Furthermore, this is the first study to date looking at the DTI properties of the developing macaque brain.
机译:由于可以在控制良好的环境下对病理和环境暴露进行研究,因此许多神经影像学研究已应用于猴子。在这项工作中,我们提出了一个基于图集的大脑组织的自动分割,大叶碎片,皮层下结构以及扩散张量成像(DTI)属性的区域提取的框架。我们首先从训练图像通过迭代,关节可变形配准到无偏差平均图像构建了结构图集。在该图集上,确定了概率组织图,大叶碎裂和皮层下结构。该信息通过仿射应用于每个对象的结构图像,然后进行可变形配准。仿射变换图集用于基于T1和T2的关节组织分类。变形的分割区域掩盖了组织分割,以分别定义白和灰质的分割。然后通过归一化的互信息,基于b样条的配准将每个对象的结构图像与其DTI图像进行非刚性匹配。然后使用每个大叶分割的概率白质信息计算DTI属性直方图。我们使用发展训练数据集成功地建立了18例年龄在16-34个月之间的平均图集。我们的框架已成功应用于9 70个月范围内的50多个其他科目。在观察到的年龄范围内,call体区域的概率加权FA平均值显示随时间的变化最大。大多数皮质区域显示适度的FA增加,而小脑FA值保持稳定。在此分割框架中使用的各个方法以前已经应用过,但是它们的组合是新颖的,它们在猕猴MRI数据中的应用也是如此。此外,这是迄今为止研究猕猴大脑DTI特性的第一项研究。

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