Literature DB >> 20161360

Intensity Standardization Simplifies Brain MR Image Segmentation.

Ying Zhuge1, Jayaram K Udupa.   

Abstract

Typically, brain MR images present significant intensity variation across patients and scanners. Consequently, training a classifier on a set of images and using it subsequently for brain segmentation may yield poor results. Adaptive iterative methods usually need to be employed to account for the variations of the particular scan. These methods are complicated, difficult to implement and often involve significant computational costs. In this paper, a simple, non-iterative method is proposed for brain MR image segmentation. Two preprocessing techniques, namely intensity inhomogeneity correction, and more importantly MR image intensity standardization, used prior to segmentation, play a vital role in making the MR image intensities have a tissue-specific numeric meaning, which leads us to a very simple brain tissue segmentation strategy.Vectorial scale-based fuzzy connectedness and certain morphological operations are utilized first to generate the brain intracranial mask. The fuzzy membership value of each voxel within the intracranial mask for each brain tissue is then estimated. Finally, a maximum likelihood criterion with spatial constraints taken into account is utilized in classifying all voxels in the intracranial mask into different brain tissue groups. A set of inhomogeneity corrected and intensity standardized images is utilized as a training data set. We introduce two methods to estimate fuzzy membership values. In the first method, called SMG (for simple membership based on a gaussian model), the fuzzy membership value is estimated by fitting a multivariate Gaussian model to the intensity distribution of each brain tissue whose mean intensity vector and covariance matrix are estimated and fixed from the training data sets. The second method, called SMH (for simple membership based on a histogram), estimates fuzzy membership value directly via the intensity distribution of each brain tissue obtained from the training data sets. We present several studies to evaluate the performance of these two methods based on 10 clinical MR images of normal subjects and 10 clinical MR images of Multiple Sclerosis (MS) patients. A quantitative comparison indicates that both methods have overall better accuracy than the k-nearest neighbors (kNN) method, and have much better efficiency than the Finite Mixture (FM) model based Expectation-Maximization (EM) method. Accuracy is similar for our methods and EM method for the normal subject data sets, but much better for our methods for the patient data sets.

Entities:  

Year:  2009        PMID: 20161360      PMCID: PMC2777695          DOI: 10.1016/j.cviu.2009.06.003

Source DB:  PubMed          Journal:  Comput Vis Image Underst        ISSN: 1077-3142            Impact factor:   3.876


  25 in total

1.  Numerical tissue characterization in MS via standardization of the MR image intensity scale.

Authors:  Y Ge; J K Udupa; L G Nyúl; L Wei; R I Grossman
Journal:  J Magn Reson Imaging       Date:  2000-11       Impact factor: 4.813

2.  Parametric estimate of intensity inhomogeneities applied to MRI.

Authors:  M Styner; C Brechbühler; G Székely; G Gerig
Journal:  IEEE Trans Med Imaging       Date:  2000-03       Impact factor: 10.048

Review 3.  Current methods in medical image segmentation.

Authors:  D L Pham; C Xu; J L Prince
Journal:  Annu Rev Biomed Eng       Date:  2000       Impact factor: 9.590

4.  Parameter estimation and tissue segmentation from multispectral MR images.

Authors:  Z Liang; J R Macfall; D P Harrington
Journal:  IEEE Trans Med Imaging       Date:  1994       Impact factor: 10.048

5.  Adaptive segmentation of MRI data.

Authors:  W M Wells; W L Grimson; R Kikinis; F A Jolesz
Journal:  IEEE Trans Med Imaging       Date:  1996       Impact factor: 10.048

6.  A nonparametric method for automatic correction of intensity nonuniformity in MRI data.

Authors:  J G Sled; A P Zijdenbos; A C Evans
Journal:  IEEE Trans Med Imaging       Date:  1998-02       Impact factor: 10.048

7.  Normal brain volume measurements using multispectral MRI segmentation.

Authors:  M Vaidyanathan; L P Clarke; C Heidtman; R P Velthuizen; L O Hall
Journal:  Magn Reson Imaging       Date:  1997       Impact factor: 2.546

8.  Automated segmentation of multiple sclerosis lesions by model outlier detection.

Authors:  K Van Leemput; F Maes; D Vandermeulen; A Colchester; P Suetens
Journal:  IEEE Trans Med Imaging       Date:  2001-08       Impact factor: 10.048

9.  Multiple sclerosis lesion quantification using fuzzy-connectedness principles.

Authors:  J K Udupa; L Wei; S Samarasekera; Y Miki; M A van Buchem; R I Grossman
Journal:  IEEE Trans Med Imaging       Date:  1997-10       Impact factor: 10.048

Review 10.  Review of MR image segmentation techniques using pattern recognition.

Authors:  J C Bezdek; L O Hall; L P Clarke
Journal:  Med Phys       Date:  1993 Jul-Aug       Impact factor: 4.071

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2.  Automatic segmentation and volumetric quantification of white matter hyperintensities on fluid-attenuated inversion recovery images using the extreme value distribution.

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3.  Minimally interactive segmentation of 4D dynamic upper airway MR images via fuzzy connectedness.

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4.  Body-wide hierarchical fuzzy modeling, recognition, and delineation of anatomy in medical images.

Authors:  Jayaram K Udupa; Dewey Odhner; Liming Zhao; Yubing Tong; Monica M S Matsumoto; Krzysztof C Ciesielski; Alexandre X Falcao; Pavithra Vaideeswaran; Victoria Ciesielski; Babak Saboury; Syedmehrdad Mohammadianrasanani; Sanghun Sin; Raanan Arens; Drew A Torigian
Journal:  Med Image Anal       Date:  2014-04-24       Impact factor: 8.545

5.  Tissue-based MRI intensity standardization: application to multicentric datasets.

Authors:  Nicolas Robitaille; Abderazzak Mouiha; Burt Crépeault; Fernando Valdivia; Simon Duchesne
Journal:  Int J Biomed Imaging       Date:  2012-05-03

6.  Fuzzy logic: A "simple" solution for complexities in neurosciences?

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Journal:  Surg Neurol Int       Date:  2011-02-26

7.  Automated glioma grading on conventional MRI images using deep convolutional neural networks.

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Journal:  Med Phys       Date:  2020-05-11       Impact factor: 4.506

8.  Transfer learning by feature-space transformation: A method for Hippocampus segmentation across scanners.

Authors:  Annegreet van Opbroek; Hakim C Achterberg; Meike W Vernooij; M A Ikram; Marleen de Bruijne
Journal:  Neuroimage Clin       Date:  2018-08-14       Impact factor: 4.881

9.  A Contrast Augmentation Approach to Improve Multi-Scanner Generalization in MRI.

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10.  Incremental learning with SVM for multimodal classification of prostatic adenocarcinoma.

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  10 in total

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