DocumentCode :
3506435
Title :
Comparison of sparse coding and kernel methods for histopathological classification of gliobastoma multiforme
Author :
Han, Ju ; Chang, Hang ; Loss, Leandro ; Zhang, Kai ; Baehner, Fredrick L. ; Gray, Joe W. ; Spellman, Paul ; Parvin, Bahram
Author_Institution :
Life Sci. Div., Lawrence Berkeley Nat. Lab., Berkeley, CA, USA
fYear :
2011
fDate :
March 30 2011-April 2 2011
Firstpage :
711
Lastpage :
714
Abstract :
This paper compares the performance of redundant representation and sparse coding against classical kernel methods for classifying histological sections. Sparse coding has been proven an effective technique for restoration, and has recently been extended to classification. The main issue with histology sections classification is inherent heterogeneity, which is a result of technical and biological variations. Technical variations originate from sample preparation, fixation, and staining from multiple laboratories, whereas biological variations originate from tissue content. Image patches are represented with invariant features at local and global scales, where local refers to responses measured with Laplacian of Gaussians, and global refers to measurements in the color space. Experiments are designed to learn dictionaries through sparse coding, and to train classifiers through kernel methods using normal, necrotic, apoptotic, and tumor regions with characteristics of high cellularity. Two different kernel methods, that of a support vector machine (SVM) and a kernel discriminant analysis (KDA), were used for comparative analysis. Preliminary investigation on the histological samples of Glioblastoma multiforme (GBM) indicates the kernel methods perform as good, if not better, than sparse coding with redundant representation.
Keywords :
biomedical optical imaging; brain; image classification; image colour analysis; learning (artificial intelligence); medical image processing; support vector machines; tumours; Gaussian Laplacian; apoptotic regions; classifier training; color space measurements; glioblastoma multiforme; histological heterogeneity; histological section classification; histopathological classification; image patches; kernel discriminant analysis; kernel methods; necrotic regions; normal regions; redundant representation; sample fixation; sample preparation; sample staining; sparse coding methods; support vector machine; tissue content; tumor regions; Cancer; Dictionaries; Encoding; Kernel; Support vector machines; Training; Tumors; Histology sections; dictionary learning; kernel methods; sparse coding;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Biomedical Imaging: From Nano to Macro, 2011 IEEE International Symposium on
Conference_Location :
Chicago, IL
ISSN :
1945-7928
Print_ISBN :
978-1-4244-4127-3
Electronic_ISBN :
1945-7928
Type :
conf
DOI :
10.1109/ISBI.2011.5872505
Filename :
5872505
Link To Document :
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