DocumentCode
744135
Title
A Global Covariance Descriptor for Nuclear Atypia Scoring in Breast Histopathology Images
Author
Khan, Adnan Mujahid ; Sirinukunwattana, Korsuk ; Rajpoot, Nasir
Author_Institution
Inst. of Cancer Res., London, UK
Volume
19
Issue
5
fYear
2015
Firstpage
1637
Lastpage
1647
Abstract
Nuclear atypia scoring is a diagnostic measure commonly used to assess tumor grade of various cancers, including breast cancer. It provides a quantitative measure of deviation in visual appearance of cell nuclei from those in normal epithelial cells. In this paper, we present a novel image-level descriptor for nuclear atypia scoring in breast cancer histopathology images. The method is based on the region covariance descriptor that has recently become a popular method in various computer vision applications. The descriptor in its original form is not suitable for classification of histopathology images as cancerous histopathology images tend to possess diversely heterogeneous regions in a single field of view. Our proposed image-level descriptor, which we term as the geodesic mean of region covariance descriptors, possesses all the attractive properties of covariance descriptors lending itself to tractable geodesic-distance-based k-nearest neighbor classification using efficient kernels. The experimental results suggest that the proposed image descriptor yields high classification accuracy compared to a variety of widely used image-level descriptors.
Keywords
biomedical optical imaging; cancer; cellular biophysics; computer vision; covariance analysis; image classification; medical image processing; tumours; breast cancer histopathology images; cancerous histopathology images; cell nuclei; classification accuracy; computer vision applications; diagnostic measure; global covariance descriptor; histopathology image classification; image-level descriptors; normal epithelial cells; nuclear atypia scoring; quantitative measure; region covariance descriptors; tractable geodesic-distance-based k-nearest neighbor classification; tumor grade; visual appearance; Covariance matrices; Informatics; Kernel; Manifolds; Measurement; Symmetric matrices; Tumors; Generalized geometric mean; Nuclear atypia scoring; Riemannian manifold; generalized geometric mean; histopathology images analysis; nuclear atypia (NA) scoring; region covariance (RC) descriptor;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2015.2447008
Filename
7128313
Link To Document