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Quantification and segmentation of brain tissues from MR images: a probabilistic neural network approach

机译:MR图像对脑组织的量化和分割:一种概率神经网络方法

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This paper presents a probabilistic neural network based technique for unsupervised quantification and segmentation of brain tissues from magnetic resonance images. It is shown that this problem can be solved by distribution learning and relaxation labeling, resulting in an efficient method that may be particularly useful in quantifying and segmenting abnormal brain tissues where the number of tissue types is unknown and the distributions of tissue types heavily overlap. The new technique uses suitable statistical models for both the pixel and context images and formulates the problem in terms of model-histogram fitting and global consistency labeling. The quantification is achieved by probabilistic self-organizing mixtures and the segmentation by a probabilistic constraint relaxation network. The experimental results show the efficient and robust performance of the new algorithm and that it outperforms the conventional classification based approaches.
机译:本文提出了一种基于概率神经网络的技术,用于从磁共振图像中无监督地量化和分割脑组织。结果表明,可以通过分布学习和松弛标记来解决此问题,从而得到一种有效的方法,该方法在定量和分割组织类型数量未知且组织类型分布严重重叠的异常脑组织中特别有用。这项新技术对像素和上下文图像都使用了合适的统计模型,并根据模型直方图拟合和全局一致性标签提出了问题。量化是通过概率自组织混合物和概率约束松弛网络进行分割。实验结果证明了该新算法的高效和鲁棒性,并且优于传统的基于分类的方法。

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