TY - JOUR
T1 - Stacked Predictive Sparse Decomposition for Classification of Histology Sections
AU - Chang, Hang
AU - Zhou, Yin
AU - Borowsky, Alexander
AU - Barner, Kenneth
AU - Spellman, Paul
AU - Parvin, Bahram
N1 - Funding Information:
This work was supported by National Institute of Health (NIH) U24 CA1437991 and NIH R01 CA140663 carried out at Lawrence Berkeley National Laboratory under Contract No. DE-AC02-05CH11231.
Publisher Copyright:
© 2014, Springer Science+Business Media New York.
PY - 2015/5/1
Y1 - 2015/5/1
N2 - Image-based classification of histology sections, in terms of distinct components (e.g., tumor, stroma, normal), provides a series of indices for histology composition (e.g., the percentage of each distinct components in histology sections), and enables the study of nuclear properties within each component. Furthermore, the study of these indices, constructed from each whole slide image in a large cohort, has the potential to provide predictive models of clinical outcome. For example, correlations can be established between the constructed indices and the patients’ survival information at cohort level, which is a fundamental step towards personalized medicine. However, performance of the existing techniques is hindered as a result of large technical variations (e.g., variations of color/textures in tissue images due to non-standard experimental protocols) and biological heterogeneities (e.g., cell type, cell state) that are always present in a large cohort. We propose a system that automatically learns a series of dictionary elements for representing the underlying spatial distribution using stacked predictive sparse decomposition. The learned representation is then fed into the spatial pyramid matching framework with a linear support vector machine classifier. The system has been evaluated for classification of distinct histological components for two cohorts of tumor types. Throughput has been increased by using of graphical processing unit (GPU), and evaluation indicates a superior performance results, compared with previous research.
AB - Image-based classification of histology sections, in terms of distinct components (e.g., tumor, stroma, normal), provides a series of indices for histology composition (e.g., the percentage of each distinct components in histology sections), and enables the study of nuclear properties within each component. Furthermore, the study of these indices, constructed from each whole slide image in a large cohort, has the potential to provide predictive models of clinical outcome. For example, correlations can be established between the constructed indices and the patients’ survival information at cohort level, which is a fundamental step towards personalized medicine. However, performance of the existing techniques is hindered as a result of large technical variations (e.g., variations of color/textures in tissue images due to non-standard experimental protocols) and biological heterogeneities (e.g., cell type, cell state) that are always present in a large cohort. We propose a system that automatically learns a series of dictionary elements for representing the underlying spatial distribution using stacked predictive sparse decomposition. The learned representation is then fed into the spatial pyramid matching framework with a linear support vector machine classifier. The system has been evaluated for classification of distinct histological components for two cohorts of tumor types. Throughput has been increased by using of graphical processing unit (GPU), and evaluation indicates a superior performance results, compared with previous research.
KW - Classification
KW - Sparse coding
KW - Tissue histology
KW - Unsupervised feature learning
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U2 - 10.1007/s11263-014-0790-9
DO - 10.1007/s11263-014-0790-9
M3 - Article
AN - SCOPUS:84939942022
SN - 0920-5691
VL - 113
SP - 3
EP - 18
JO - International Journal of Computer Vision
JF - International Journal of Computer Vision
IS - 1
ER -