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Partial Volume Segmentation of Brain Magnetic Resonance Images Based on Maximum a Posteriori Probability

机译:基于最大后验概率的脑磁共振图像的部分体积分割

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摘要

Noise, partial volume (PV) effect and image-intensity inhomogeneity render a challenging task for segmentation of brain magnetic resonance (MR) images. Most of the current MR image segmentation methods focus on only one or two of the effects listed above. The objective of this paper is to propose a unified framework, based on the maximum a posteriori probability principle, by taking all these effects into account simultaneously in order to improve image segmentation performance. Instead of labeling each image voxel with a unique tissue type, the percentage of each voxel belonging to different tissues, which we call a mixture, is considered to address the PV effect. A Markov random field model is used to describe the noise effect by considering the nearby spatial information of the tissue mixture. The inhomogeneity effect is modeled as a bias field characterized by a zero mean Gaussian prior probability. The well-known fuzzy C-mean model is extended to define the likelihood function of the observed image. This framework reduces theoretically, under some assumptions, to the adaptive fuzzy C-mean (AFCM) algorithm proposed by Pham and Prince. Digital phantom and real clinical MR images were used to test the proposed framework. Improved performance over the AFCM algorithm was observed in a clinical environment where the inhomogeneity, noise level and PV effect are commonly encountered.
机译:噪声,部分体积(PV)效应和图像强度不均匀性给分割脑部磁共振(MR)图像带来了艰巨的任务。当前大多数MR图像分割方法仅关注上面列出的一种或两种效果。本文的目的是基于最大后验概率原理,提出一个统一的框架,同时考虑所有这些影响,以提高图像分割性能。代替使用独特的组织类型标记每个图像体素,可以将属于不同组织的每个体素的百分比(我们称为混合物)视为解决PV效应的方法。通过考虑组织混合物附近的空间信息,使用马尔可夫随机场模型来描述噪声效果。不均匀性效应被建模为以零均值高斯先验概率为特征的偏置场。扩展了众所周知的模糊C均值模型,以定义观察图像的似然函数。在某些假设下,该框架从理论上简化为Pham和Prince提出的自适应模糊C均值(AFCM)算法。数字幻影和真实的临床MR图像用于测试该框架。在通常遇到不均匀性,噪声水平和PV效应的临床环境中,观察到了比AFCM算法更高的性能。

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