학술논문

A subset-search and ranking based feature-selection for histology image classification using global and local quantification
Document Type
Conference
Source
2015 International Conference on Image Processing Theory, Tools and Applications (IPTA) Image Processing Theory, Tools and Applications (IPTA), 2015 International Conference on. :313-318 Nov, 2015
Subject
Aerospace
Communication, Networking and Broadcast Technologies
Computing and Processing
General Topics for Engineers
Signal Processing and Analysis
Feature extraction
Indexes
Standards
Liver
Support vector machines
Correlation
Electronic mail
framework
fibrosis
feature selection
support vector machines
feature ranking
Language
ISSN
2154-512X
Abstract
Biopsy remains the gold standard for the diagnosis of chronic liver diseases. However, the variability in the diagnostic between readers leads to define a method to objectively describe histologic tissue. A complete framework has been implemented to analyze images of any tissue. Based on subset selection and feature ranking approaches, a feature selection computes the most relevant subset of descriptors in terms of classification from a wide initial list of descriptors. In comparison with equivalent methods, this implementation can find lists of descriptors which are significantly shorter for an equivalent accuracy. Furthermore, it enables the classification of slides using combinations of global and local measurements. The results have pointed that it could reach an accuracy of 90.5% (ROC-AUC=81.1%) in a human liver fibrosis grading approach by selecting 3 of the 457 global and local descriptors. The feature ranking approach gave less accurate subsets than the subset selection.