脑皮层灰质分割用于功能性MRI可视化

P. Teo, G. Sapiro, B. Wandell
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引用次数: 8

摘要

我们描述了一个系统,被用来分割灰质和创建连接皮层表征从MRI。该方法利用大脑皮层的解剖学知识,并将结构约束纳入分割。首先,使用一些新颖的后向异性扩散技术对MR体积中的白质和脑脊液区域进行分割。然后,用户选择感兴趣的皮层白质成分,通过检查空腔和手柄来验证其结构。在此之后,灰质的连接表示是由白质边界的约束生长产生的。由于连通性是计算出来的,分割结果可以作为多种方法的输入,用于可视化灰质内皮层活动的空间模式。在我们的例子中,灰质的连接表示用于创建扁平皮层的表示。然后,fMRI测量值被覆盖在扁平的表示上,在单个图像中产生体积数据的表示。
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Segmenting cortical gray matter for functional MRI visualization
We describe a system that is being used to segment gray matter and create connected cortical representations from MRI. The method exploits knowledge of the anatomy of the cortex and incorporates structural constraints into the segmentation. First, the white matter and CSF regions in the MR volume are segmented using some novel techniques of posterior anisotropic diffusion. Then, the user selects the cortical white matter component of interest, and its structure is verified by checking for cavities and handles. After this, a connected representation of the gray matter is created by a constrained growing-out from the white matter boundary. Because the connectivity is computed, the segmentation can be used as input to several methods of visualizing the spatial pattern of cortical activity within gray matter. In our case, the connected representation of gray matter is used to create a representation of the flattened cortex. Then, fMRI measurements are overlaid on the flattened representation, yielding a representation of the volumetric data within a single image.
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