Ruan S, Jaggi C, Xue J, Fadili J, Bloyet D
Greyc-Ismra, Cnrs Umr 6072, Caen, France.
IEEE Trans Med Imaging. 2000 Dec;19(12):1179-87. doi: 10.1109/42.897810.
This paper presents a fully automatic three-dimensional classification of brain tissues for Magnetic Resonance (MR) images. An MR image volume may be composed of a mixture of several tissue types due to partial volume effects. Therefore, we consider that in a brain dataset there are not only the three main types of brain tissue: gray matter, white matter, and cerebro spinal fluid, called pure classes, but also mixtures, called mixclasses. A statistical model of the mixtures is proposed and studied by means of simulations. It is shown that it can be approximated by a Gaussian function under some conditions. The D'Agostino-Pearson normality test is used to assess the risk alpha of the approximation. In order to classify a brain into three types of brain tissue and deal with the problem of partial volume effects, the proposed algorithm uses two steps: 1) segmentation of the brain into pure and mixclasses using the mixture model; 2) reclassification of the mixclasses into the pure classes using knowledge about the obtained pure classes. Both steps use Markov random field (MRF) models. The multifractal dimension, describing the topology of the brain, is added to the MRFs to improve discrimination of the mixclasses. The algorithm is evaluated using both simulated images and real MR images with different T1-weighted acquisition sequences.
本文提出了一种用于磁共振(MR)图像的脑组织全自动三维分类方法。由于部分容积效应,MR图像体可能由多种组织类型混合而成。因此,我们认为在一个脑数据集中,不仅存在三种主要的脑组织类型:灰质、白质和脑脊液,即所谓的纯类,还存在混合类,即混合物。通过模拟提出并研究了混合物的统计模型。结果表明,在某些条件下它可以用高斯函数近似。使用D'Agostino-Pearson正态性检验来评估近似的风险α。为了将脑部分类为三种脑组织类型并处理部分容积效应问题,所提出的算法使用两个步骤:1)使用混合模型将脑分割为纯类和混合类;2)利用关于获得的纯类的知识将混合类重新分类为纯类。这两个步骤都使用马尔可夫随机场(MRF)模型。将描述脑拓扑结构的多重分形维数添加到MRF中,以提高对混合类的区分能力。使用具有不同T1加权采集序列的模拟图像和真实MR图像对该算法进行了评估。