• DocumentCode
    254232
  • Title

    Classification of Histology Sections via Multispectral Convolutional Sparse Coding

  • Author

    Yin Zhou ; Hang Chang ; Barner, Kenneth ; Spellman, Paul ; Parvin, Bahram

  • Author_Institution
    ECE Dept., Univ. of Delaware, Newark, DE, USA
  • fYear
    2014
  • fDate
    23-28 June 2014
  • Firstpage
    3081
  • Lastpage
    3088
  • Abstract
    Image-based classification of histology sections plays an important role in predicting clinical outcomes. However this task is very challenging due to the presence of large technical variations (e.g., fixation, staining) and biological heterogeneities (e.g., cell type, cell state). In the field of biomedical imaging, for the purposes of visualization and/or quantification, different stains are typically used for different targets of interest (e.g., cellular/subcellular events), which generates multi-spectrum data (images) through various types of microscopes and, as a result, provides the possibility of learning biological-component-specific features by exploiting multispectral information. We propose a multispectral feature learning model that automatically learns a set of convolution filter banks from separate spectra to efficiently discover the intrinsic tissue morphometric signatures, based on convolutional sparse coding (CSC). The learned feature representations are then aggregated through the spatial pyramid matching framework (SPM) and finally classified using a linear SVM. The proposed system has been evaluated using two large-scale tumor cohorts, collected from The Cancer Genome Atlas (TCGA). Experimental results show that the proposed model 1) outperforms systems utilizing sparse coding for unsupervised feature learning (e.g., PSDSPM [5]), 2) is competitive with systems built upon features with biological prior knowledge (e.g., SMLSPM [4]).
  • Keywords
    convolution; filtering theory; image classification; image coding; image representation; medical image processing; spectral analysis; tumours; unsupervised learning; CSC; SPM; TCGA; The Cancer Genome Atlas; biological heterogeneities; biological prior knowledge; biological-component-specific feature learning; biomedical imaging; clinical outcome prediction; convolution filter banks; histology section classification; image-based classification; intrinsic tissue morphometric signatures; large-scale tumor cohorts; learned feature representations; linear SVM; microscopes; multispectral convolutional sparse coding; multispectral feature learning model; multispectral information; multispectrum data generation; spatial pyramid matching framework; unsupervised feature learning; Convolutional codes; Encoding; Feature extraction; Histograms; Kernel; Training; Tumors;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
  • Conference_Location
    Columbus, OH
  • Type

    conf

  • DOI
    10.1109/CVPR.2014.394
  • Filename
    6909790