DocumentCode :
617460
Title :
MR prostate segmentation via distributed discriminative dictionary (DDD) learning
Author :
Yanrong Guo ; Yiqiang Zhan ; Yaozong Gao ; Jianguo Jiang ; Dinggang Shen
Author_Institution :
Sch. of Comput. & Inf., Hefei Univ. of Technol., Hefei, China
fYear :
2013
fDate :
7-11 April 2013
Firstpage :
868
Lastpage :
871
Abstract :
Segmenting prostate from MR images is important yet challenging. Due to non-Gaussian distribution of prostate appearances in MR images, the popular active appearance model (AAM) has its limited performance. Although the newly developed sparse dictionary learning method[1, 2] can model the image appearance in a non-parametric fashion, the learned dictionaries still lack the discriminative power between prostate and non-prostate tissues, which is critical for accurate prostate segmentation. In this paper, we propose to integrate deformable model with a novel learning scheme, namely the Distributed Discriminative Dictionary (DDD) learning, which can capture image appearance in a non-parametric and discriminative fashion. In particular, three strategies are designed to boost the tissue discriminative power of DDD. First, minimum Redundancy Maximum Relevance (mRMR) feature selection is performed to constrain the dictionary learning in a discriminative feature space. Second, linear discriminant analysis (LDA) is employed to assemble residuals from different dictionaries for optimal separation between prostate and non-prostate tissues. Third, instead of learning the global dictionaries, we learn a set of local dictionaries for the local regions (each with small appearance variations) along prostate boundary, thus achieving better tissue differentiation locally. In the application stage, DDDs will provide the appearance cues to robustly drive the deformable model onto the prostate boundary. Experiments on 50 MR prostate images show that our method can yield a Dice Ratio of 88% compared to the manual segmentations, and have 7% improvement over the conventional AAM.
Keywords :
Gaussian distribution; biological organs; biological tissues; biomedical MRI; feature extraction; image segmentation; learning (artificial intelligence); medical image processing; Dice ratio; MRI; deformable model; discriminative fashion; discriminative feature space; distributed discriminative dictionary learning; image appearance; linear discriminant analysis; magnetic resonance prostate segmentation; minimum redundancy maximum relevance feature selection; nonGaussian distribution; nonparametric fashion; optimal separation; popular active appearance model; prostate boundary; sparse dictionary learning method; tissue differentiation; tissue discriminative power; Active appearance model; Deformable models; Dictionaries; Image segmentation; Shape; Silicon; Standards; Prostate segmentation; deformable segmentation; magnetic resonance image; sparse dictionary learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Biomedical Imaging (ISBI), 2013 IEEE 10th International Symposium on
Conference_Location :
San Francisco, CA
ISSN :
1945-7928
Print_ISBN :
978-1-4673-6456-0
Type :
conf
DOI :
10.1109/ISBI.2013.6556613
Filename :
6556613
Link To Document :
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