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Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm.
IEEE Trans Med Imaging. 2001 Jan; 20(1):45-57.IT

Abstract

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.

Authors+Show Affiliations

FMRIB Centre, John Radcliffe Hospital, University of Oxford, UK. yongyue@fmrib.ox.ac.ukNo affiliation info availableNo affiliation info available

Pub Type(s)

Journal Article
Research Support, Non-U.S. Gov't

Language

eng

PubMed ID

11293691

Citation

Zhang, Y, et al. "Segmentation of Brain MR Images Through a Hidden Markov Random Field Model and the Expectation-maximization Algorithm." IEEE Transactions On Medical Imaging, vol. 20, no. 1, 2001, pp. 45-57.
Zhang Y, Brady M, Smith S. Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm. IEEE Trans Med Imaging. 2001;20(1):45-57.
Zhang, Y., Brady, M., & Smith, S. (2001). Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm. IEEE Transactions On Medical Imaging, 20(1), 45-57.
Zhang Y, Brady M, Smith S. Segmentation of Brain MR Images Through a Hidden Markov Random Field Model and the Expectation-maximization Algorithm. IEEE Trans Med Imaging. 2001;20(1):45-57. PubMed PMID: 11293691.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm. AU - Zhang,Y, AU - Brady,M, AU - Smith,S, PY - 2001/4/11/pubmed PY - 2001/6/23/medline PY - 2001/4/11/entrez SP - 45 EP - 57 JF - IEEE transactions on medical imaging JO - IEEE Trans Med Imaging VL - 20 IS - 1 N2 - 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. SN - 0278-0062 UR - https://www.unboundmedicine.com/medline/citation/11293691/Segmentation_of_brain_MR_images_through_a_hidden_Markov_random_field_model_and_the_expectation_maximization_algorithm_ DB - PRIME DP - Unbound Medicine ER -