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通过主轴配准对磁共振脑图像进行基于三维解剖模型的分割。

Three-dimensional anatomical model-based segmentation of MR brain images through Principal Axes Registration.

作者信息

Arata L K, Dhawan A P, Broderick J P, Gaskil-Shipley M F, Levy A V, Volkow N D

出版信息

IEEE Trans Biomed Eng. 1995 Nov;42(11):1069-78. doi: 10.1109/10.469373.

DOI:10.1109/10.469373
PMID:7498910
Abstract

Model-based segmentation and analysis of brain images depends on anatomical knowledge which may be derived from conventional atlases. Classical anatomical atlases are based on the rigid spatial distribution provided by a single cadaver. Their use to segment internal anatomical brain structures in a high-resolution MR brain image does not provide any knowledge about the subject variability, and therefore they are not very efficient in analysis. We present a method to develop three-dimensional computerized composite models of brain structures to build a computerized anatomical atlas. The composite models are developed using the real MR brain images of human subjects which are registered through the Principal Axes Transformation. The composite models provide probabilistic spatial distributions, which represent the variability of brain structures and can be easily updated for additional subjects. We demonstrate the use of such a composite model of ventricular structure to help segmentation of the ventricles and Cerebrospinal Fluid (CSF) of MR brain images. In this paper, a composite model of ventricles using a set of 22 human subjects is developed and used in a model-based segmentation of ventricles, sulci, and white matter lesions. To illustrate the clinical usefulness, automatic volumetric measurements on ventricular size and cortical atrophy for an additional eight alcoholics and 10 normal subjects were made. The volumetric quantitative results indicated regional brain atrophy in chronic alcoholics.

摘要

基于模型的脑图像分割与分析依赖于可从传统图谱中获取的解剖学知识。经典解剖图谱基于单个尸体提供的刚性空间分布。将其用于在高分辨率磁共振脑图像中分割内部解剖脑结构,并不能提供关于个体变异性的任何信息,因此在分析中效率不高。我们提出一种方法来开发脑结构的三维计算机化复合模型,以构建计算机化解剖图谱。这些复合模型是使用通过主轴变换配准的人类受试者的真实磁共振脑图像开发的。复合模型提供概率性空间分布,代表脑结构的变异性,并且可以很容易地针对其他受试者进行更新。我们展示了使用这样的心室结构复合模型来帮助分割磁共振脑图像中的脑室和脑脊液(CSF)。在本文中,使用一组22名人类受试者开发了心室复合模型,并将其用于基于模型的脑室、脑沟和白质病变分割。为了说明其临床实用性,对另外8名酗酒者和10名正常受试者进行了心室大小和皮质萎缩的自动体积测量。体积定量结果表明慢性酗酒者存在局部脑萎缩。

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