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Identification of cortex in magnetic resonance images

机译:磁共振图像中皮质的识别

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The overall goal of the work described here is to make available to the neurosurgeon in the operating room an on-line, three- dimensional, anatomically labeled model of the patient brain, based on pre-operative magnetic resonance (MR) images. A stereotactic operating microscope is currently in experimental use, which allows structures that have been manually identified in MR images to be made available on-line. We have been working to enhance this system by combining image processing techniques applied to the MR data with an anatomically labeled 3-D brain model developed from the Talairach and Tournoux atlas. Here we describe the process of identifying cerebral cortex in the patient MR images. MR images of brain tissue are reasonably well described by material mixture models, which identify each pixel as corresponding to one of a small number of materials, or as being a composite of two materials. Our classification algorithm consists of three steps. First, we apply hierarchical, adaptive grayscale adjustments to correct for nonlinearities in the MR sensor. The goal of this preprocessing step, based on the material mixture model, is to make the grayscale distribution of each tissue type constant across the entire image. Next, we perform an initial classification of all tissue types according to gray level. We have used a sum of Gaussian's approximation of the histogram to perform this classification. Finally, we identify pixels corresponding to cortex, by taking into account the spatial patterns characteristic of this tissue. For this purpose, we use a set of matched filters to identify image locations having the appropriate configuration of gray matter (cortex), cerebrospinal fluid and white matter, as determined by the previous classification step.
机译:这里介绍的工作的总体目标是提供在手术室神经外科医生一上线,三维,患者大脑的解剖学标记模型的基础上,术前磁共振(MR)图像。立体定向手术显微镜目前在实验使用,这允许进行已在MR图像被手动确定结构可用就行。我们一直在努力通过图像处理技术应用到MR数据从塔莱拉什和Tournoux图谱开发的解剖学标记3 d大脑模型相结合,以提高该系统。这里,我们描述识别所述患者MR图像大脑皮层的过程。脑组织的MR图像合理地由材料混合模型,其识别每个像素作为对应于少量的材料中的一种所描述的,或为两种材料的复合物。我们的分类算法包括三个步骤。首先,我们采用分层,自适应灰度调整,以修正MR传感器的非线性。此预处理步骤的目的,基于材料混合模型,是使整个图像的每个组织类型恒定的灰度分布。接下来,我们根据灰度级执行所有的组织类型的初始分类。我们已经用高斯的近似直方图的总和来进行这种分类。最后,我们识别对应于皮质像素,通过考虑这个组织的空间模式特性。为了这个目的,我们使用了一组匹配滤波器以识别具有灰质(皮层)的适当的配置的图像位置,脑脊液和白质,通过前一个分类步骤中确定。

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