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Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm.

机译:通过隐藏的马尔可夫随机场模型和期望最大化算法对大脑MR图像进行分割。

摘要

The finite mixture (FM) model is the most commonly used model for statistical segmentation of brain magnetic resonance (MR) images because of its simple mathematical form and the piecewise constant nature of ideal brain MR images. However, being a histogram-based model, the FM has an intrinsic limitation--no spatial information is taken into account. This causes the FM model to work only on well-defined images with low levels of noise; unfortunately, this is often not the the case due to artifacts such as partial volume effect and bias field distortion. Under these conditions, FM model-based methods produce unreliable results. In this paper, we propose a novel hidden Markov random field (HMRF) model, which is a stochastic process generated by a MRF whose state sequence cannot be observed directly but which can be indirectly estimated through observations. Mathematically, it can be shown that the FM model is a degenerate version of the HMRF model. The advantage of the HMRF model derives from the way in which the spatial information is encoded through the mutual influences of neighboring sites. Although MRF modeling has been employed in MR image segmentation by other researchers, most reported methods are limited to using MRF as a general prior in an FM model-based approach. To fit the HMRF model, an EM algorithm is used. We show that by incorporating both the HMRF model and the EM algorithm into a HMRF-EM framework, an accurate and robust segmentation can be achieved. More importantly, the HMRF-EM framework can easily be combined with other techniques. As an example, we show how the bias field correction algorithm of Guillemaud and Brady (1997) can be incorporated into this framework to achieve a three-dimensional fully automated approach for brain MR image segmentation.
机译:有限混合(FM)模型是脑磁共振(MR)图像的统计分割最常用的模型,因为它具有简单的数学形式和理想的大脑MR图像的分段恒定性质。但是,作为基于直方图的模型,FM具有一个固有的局限性-不考虑空间信息。这将导致FM模型仅适用于噪声水平低的清晰图像。不幸的是,由于伪影(例如部分体积效应和偏置场失真),通常不是这种情况。在这种情况下,基于FM模型的方法无法获得可靠的结果。在本文中,我们提出了一种新颖的隐马尔可夫随机场(HMRF)模型,该模型是MRF产生的随机过程,其状态序列无法直接观察,但可以通过观察间接估计。从数学上可以看出,FM模型是HMRF模型的退化版本。 HMRF模型的优势来自通过相邻站点的相互影响对空间信息进行编码的方式。尽管其他研究人员已将MRF建模用于MR图像分割,但大多数报道的方法仅限于在基于FM模型的方法中将MRF用作常规方法。为了拟合HMRF模型,使用了EM算法。我们表明,通过将HMRF模型和EM算法合并到HMRF-EM框架中,可以实现准确而稳健的分割。更重要的是,HMRF-EM框架可以轻松地与其他技术结合。作为一个例子,我们展示了如何将Guillemaud和Brady(1997)的偏置场校正算法结合到该框架中,以实现针对大脑MR图像分割的三维全自动方法。

著录项

  • 作者

    Zhang Y; Brady M; Smith S;

  • 作者单位
  • 年度 2001
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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