Title :
A unifying framework for partial volume segmentation of brain MR images
Author :
Van Leemput, Koen ; Maes, Frederik ; Vandermeulen, Dirk ; Suetens, Paul
Author_Institution :
Med. Image Comput. (Radiol.-ESAT/PSI), Univ. Hosp. Gasthuisberg, Leuven, Belgium
Abstract :
Accurate brain tissue segmentation by intensity-based voxel classification of magnetic resonance (MR) images is complicated by partial volume (PV) voxels that contain a mixture of two or more tissue types. In this paper, we present a statistical framework for PV segmentation that encompasses and extends existing techniques. We start from a commonly used parametric statistical image model in which each voxel belongs to one single tissue type, and introduce an additional downsampling step that causes partial voluming along the borders between tissues. An expectation-maximization approach is used to simultaneously estimate the parameters of the resulting model and perform a PV classification. We present results on well-chosen simulated images and on real MR images of the brain, and demonstrate that the use of appropriate spatial prior knowledge not only improves the classifications, but is often indispensable for robust parameter estimation as well. We conclude that general robust PV segmentation of MR brain images requires statistical models that describe the spatial distribution of brain tissues more accurately than currently available models.
Keywords :
Monte Carlo methods; biological tissues; biomedical MRI; brain models; image classification; image sampling; image segmentation; medical image processing; parameter estimation; statistical analysis; PV segmentation; brain MR images; brain tissue segmentation; downsampling step; expectation-maximization approach; intensity-based voxel classification; magnetic resonance images; one single tissue type; parametric statistical image model; partial volume classification; partial volume segmentation; partial volume voxels; partial voluming; real MR images; robust parameter estimation; simulated images; spatial distribution; spatial prior knowledge; statistical framework; tissue borders; tissue types; unifying framework; Biomedical engineering; Biomedical imaging; Brain modeling; Hospitals; Image segmentation; Magnetic resonance; Markov random fields; Monte Carlo methods; Parameter estimation; Robustness; Algorithms; Brain; Computer Simulation; Humans; Image Enhancement; Imaging, Three-Dimensional; Likelihood Functions; Magnetic Resonance Imaging; Models, Biological; Models, Statistical; Pattern Recognition, Automated; Phantoms, Imaging; Quality Control; Reproducibility of Results; Sensitivity and Specificity;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2002.806587