Grey-level morphology based segmentation of MRI of the human cortex

R. Hult, E. Bengtsson
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引用次数: 10

Abstract

An algorithm for fully automatic segmentation of the cortex from T1-weighted axial or sagittal MRI data is presented. When analysing 3D MRI images of the brain it is often important to segment the brain from non-brain tissue such as eyes and membranes of the brain. The segmentation algorithm uses a histogram-based method to find accurate threshold values. Four initial masks are created; first two thresholded masks from the original volume, background and brain tissue, then a third mask thresholded from a 3D grey-level eroded version of the volume, brain tissue, and lastly a fourth mask thresholded from a 3D grey-level dilated version of the volume, containing surrounding fat. On the start slice of these masks, binary morphological operations and logical operations are used. Then the rest of the slices are segmented using information from the previous slice combined with the other masks. Information from earlier slices is propagated to keep the segmented volume from leaking into non-brain tissue.
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基于灰度形态学的人类皮层MRI分割
提出了一种从t1加权轴向或矢状面MRI数据中全自动分割皮层的算法。在分析大脑的3D MRI图像时,将大脑与非大脑组织(如眼睛和大脑膜)分割开来通常很重要。分割算法使用基于直方图的方法来找到准确的阈值。创建了四个初始掩码;首先是来自原始体积、背景和脑组织的两个阈值掩模,然后是来自体积、脑组织的3D灰度侵蚀版本的第三个掩模阈值,最后是来自体积的3D灰度扩张版本的第四个掩模阈值,包含周围的脂肪。在这些掩码的起始切片上,使用了二进制形态运算和逻辑运算。然后使用来自前一片的信息与其他掩码结合对其余的切片进行分割。来自早期切片的信息被传播,以防止分割的体积泄漏到非脑组织。
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