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Unifying framework for multimodal brain MRI segmentation based on Hidden Markov Chains.
Med Image Anal. 2008 Dec; 12(6):639-52.MI

Abstract

In the frame of 3D medical imaging, accurate segmentation of multimodal brain MR images is of interest for many brain disorders. However, due to several factors such as noise, imaging artifacts, intrinsic tissue variation and partial volume effects, tissue classification remains a challenging task. In this paper, we present a unifying framework for unsupervised segmentation of multimodal brain MR images including partial volume effect, bias field correction, and information given by a probabilistic atlas. Here-proposed method takes into account neighborhood information using a Hidden Markov Chain (HMC) model. Due to the limited resolution of imaging devices, voxels may be composed of a mixture of different tissue types, this partial volume effect is included to achieve an accurate segmentation of brain tissues. Instead of assigning each voxel to a single tissue class (i.e., hard classification), we compute the relative amount of each pure tissue class in each voxel (mixture estimation). Further, a bias field estimation step is added to the proposed algorithm to correct intensity inhomogeneities. Furthermore, atlas priors were incorporated using probabilistic brain atlas containing prior expectations about the spatial localization of different tissue classes. This atlas is considered as a complementary sensor and the proposed method is extended to multimodal brain MRI without any user-tunable parameter (unsupervised algorithm). To validate this new unifying framework, we present experimental results on both synthetic and real brain images, for which the ground truth is available. Comparison with other often used techniques demonstrates the accuracy and the robustness of this new Markovian segmentation scheme.

Authors+Show Affiliations

Université Strasbourg I, LSIIT: UMR CNRS 7005, ENSPS/LSIIT, Pole API, Bd S. Brant, BP 10413 F-67412 Illkirch, France. bricq@lsiit.u-strasbg.frNo affiliation info availableNo affiliation info available

Pub Type(s)

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

Language

eng

PubMed ID

18440268

Citation

Bricq, S, et al. "Unifying Framework for Multimodal Brain MRI Segmentation Based On Hidden Markov Chains." Medical Image Analysis, vol. 12, no. 6, 2008, pp. 639-52.
Bricq S, Collet Ch, Armspach JP. Unifying framework for multimodal brain MRI segmentation based on Hidden Markov Chains. Med Image Anal. 2008;12(6):639-52.
Bricq, S., Collet, C. h., & Armspach, J. P. (2008). Unifying framework for multimodal brain MRI segmentation based on Hidden Markov Chains. Medical Image Analysis, 12(6), 639-52. https://doi.org/10.1016/j.media.2008.03.001
Bricq S, Collet Ch, Armspach JP. Unifying Framework for Multimodal Brain MRI Segmentation Based On Hidden Markov Chains. Med Image Anal. 2008;12(6):639-52. PubMed PMID: 18440268.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - Unifying framework for multimodal brain MRI segmentation based on Hidden Markov Chains. AU - Bricq,S, AU - Collet,Ch, AU - Armspach,J P, Y1 - 2008/03/17/ PY - 2007/06/22/received PY - 2008/03/07/revised PY - 2008/03/07/accepted PY - 2008/4/29/pubmed PY - 2009/2/26/medline PY - 2008/4/29/entrez SP - 639 EP - 52 JF - Medical image analysis JO - Med Image Anal VL - 12 IS - 6 N2 - In the frame of 3D medical imaging, accurate segmentation of multimodal brain MR images is of interest for many brain disorders. However, due to several factors such as noise, imaging artifacts, intrinsic tissue variation and partial volume effects, tissue classification remains a challenging task. In this paper, we present a unifying framework for unsupervised segmentation of multimodal brain MR images including partial volume effect, bias field correction, and information given by a probabilistic atlas. Here-proposed method takes into account neighborhood information using a Hidden Markov Chain (HMC) model. Due to the limited resolution of imaging devices, voxels may be composed of a mixture of different tissue types, this partial volume effect is included to achieve an accurate segmentation of brain tissues. Instead of assigning each voxel to a single tissue class (i.e., hard classification), we compute the relative amount of each pure tissue class in each voxel (mixture estimation). Further, a bias field estimation step is added to the proposed algorithm to correct intensity inhomogeneities. Furthermore, atlas priors were incorporated using probabilistic brain atlas containing prior expectations about the spatial localization of different tissue classes. This atlas is considered as a complementary sensor and the proposed method is extended to multimodal brain MRI without any user-tunable parameter (unsupervised algorithm). To validate this new unifying framework, we present experimental results on both synthetic and real brain images, for which the ground truth is available. Comparison with other often used techniques demonstrates the accuracy and the robustness of this new Markovian segmentation scheme. SN - 1361-8423 UR - https://www.unboundmedicine.com/medline/citation/18440268/Unifying_framework_for_multimodal_brain_MRI_segmentation_based_on_Hidden_Markov_Chains_ DB - PRIME DP - Unbound Medicine ER -