Literature DB >> 17258932

A Dirichlet process mixture model for brain MRI tissue classification.

Adelino R Ferreira da Silva1.   

Abstract

Accurate classification of magnetic resonance images according to tissue type or region of interest has become a critical requirement in diagnosis, treatment planning, and cognitive neuroscience. Several authors have shown that finite mixture models give excellent results in the automated segmentation of MR images of the human normal brain. However, performance and robustness of finite mixture models deteriorate when the models have to deal with a variety of anatomical structures. In this paper, we propose a nonparametric Bayesian model for tissue classification of MR images of the brain. The model, known as Dirichlet process mixture model, uses Dirichlet process priors to overcome the limitations of current parametric finite mixture models. To validate the accuracy and robustness of our method we present the results of experiments carried out on simulated MR brain scans, as well as on real MR image data. The results are compared with similar results from other well-known MRI segmentation methods.

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Year:  2006        PMID: 17258932     DOI: 10.1016/j.media.2006.12.002

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  13 in total

1.  Tractography segmentation using a hierarchical Dirichlet processes mixture model.

Authors:  Xiaogang Wang; W Eric L Grimson; Carl-Fredrik Westin
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2.  Tractography segmentation using a hierarchical Dirichlet processes mixture model.

Authors:  Xiaogang Wang; W Eric L Grimson; Carl-Fredrik Westin
Journal:  Inf Process Med Imaging       Date:  2009

3.  Three-dimensional brain magnetic resonance imaging segmentation via knowledge-driven decision theory.

Authors:  Nishant Verma; Gautam S Muralidhar; Alan C Bovik; Matthew C Cowperthwaite; Mark G Burnett; Mia K Markey
Journal:  J Med Imaging (Bellingham)       Date:  2014-10-01

4.  Mixture models with a prior on the number of components.

Authors:  Jeffrey W Miller; Matthew T Harrison
Journal:  J Am Stat Assoc       Date:  2017-11-13       Impact factor: 5.033

5.  Robust Intensity Standardization in Brain Magnetic Resonance Images.

Authors:  Giorgio De Nunzio; Rosella Cataldo; Alessandra Carlà
Journal:  J Digit Imaging       Date:  2015-12       Impact factor: 4.056

6.  Spatio-Temporal Analysis of Early Brain Development.

Authors:  Neda Sadeghi; Marcel Prastawa; John H Gilmore; Weili Lin; Guido Gerig
Journal:  Conf Rec Asilomar Conf Signals Syst Comput       Date:  2010

7.  Segmentation of brain magnetic resonance images for measurement of gray matter atrophy in multiple sclerosis patients.

Authors:  Kunio Nakamura; Elizabeth Fisher
Journal:  Neuroimage       Date:  2008-10-22       Impact factor: 6.556

8.  A Bayesian non-parametric Potts model with application to pre-surgical FMRI data.

Authors:  Timothy D Johnson; Zhuqing Liu; Andreas J Bartsch; Thomas E Nichols
Journal:  Stat Methods Med Res       Date:  2012-05-23       Impact factor: 3.021

9.  Spatial based expectation maximizing (EM).

Authors:  M A Balafar
Journal:  Diagn Pathol       Date:  2011-10-26       Impact factor: 2.644

10.  Overfitting Bayesian Mixture Models with an Unknown Number of Components.

Authors:  Zoé van Havre; Nicole White; Judith Rousseau; Kerrie Mengersen
Journal:  PLoS One       Date:  2015-07-15       Impact factor: 3.240

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