Mu Junya, Xu Qing, Tian Jie, Liu Jixin
Center for Brain Imaging, School of Life Science and Technology, Xidian University, Xi'an, 710126, P.R. China.
Sci Rep. 2017 Oct 4;7(1):12669. doi: 10.1038/s41598-017-12965-5.
Tractography atlas-based analysis (TABS) is a new diffusion tensor image (DTI) statistical analysis method for detecting and understanding voxel-wise white matter properties along a fiber tract. An important requisite for accurate and sensitive TABS is the availability of a deformation field that is able to register DTI in native space to standard space. Here, three different feature images including the fractional anisotropy (FA) image, T1 weighted image, and the maximum eigenvalue of the Hessian of the FA (hFA) image were used to calculate the deformation fields between individual space and population space. Our results showed that when the FA image was a feature image, the tensor template had the highest consistency with each subject for scalar and vector information. Additionally, to demonstrate the sensitivity and specificity of the TABS method with different feature images, we detected a gender difference along the corpus callosum. A significant difference between the male and female group in diffusion measurement appeared predominantly in the right corpus callosum only when FA was the feature image. Our results demonstrated that the FA image as a feature image was more accurate with respect to the underlying tensor information and had more accurate analysis results with the TABS method.
基于纤维束成像图谱的分析(TABS)是一种新的扩散张量成像(DTI)统计分析方法,用于检测和理解沿纤维束的体素级白质特性。准确且灵敏的TABS的一个重要前提是要有一个能将原始空间中的DTI配准到标准空间的变形场。在此,使用了三种不同的特征图像,包括分数各向异性(FA)图像、T1加权图像以及FA的海森矩阵的最大特征值(hFA)图像,来计算个体空间与总体空间之间的变形场。我们的结果表明,当FA图像作为特征图像时,张量模板在标量和矢量信息方面与每个受试者的一致性最高。此外,为了证明TABS方法在不同特征图像下的敏感性和特异性,我们检测了胼胝体上的性别差异。仅当FA作为特征图像时,男性和女性组在扩散测量上的显著差异主要出现在右侧胼胝体。我们的结果表明,FA图像作为特征图像在潜在张量信息方面更准确,并且使用TABS方法时分析结果更准确。