DocumentCode :
782086
Title :
Novel Round-Robin Tabu Search Algorithm for Prostate Cancer Classification and Diagnosis Using Multispectral Imagery
Author :
Tahir, Muhammad Atif ; Bouridane, Ahmed
Author_Institution :
Fac. ofComputing, Eng., & Math. Sci., West of England Univ., Bristol
Volume :
10
Issue :
4
fYear :
2006
Firstpage :
782
Lastpage :
793
Abstract :
Quantitative cell imagery in cancer pathology has progressed greatly in the last 25 years. The application areas are mainly those in which the diagnosis is still critically reliant upon the analysis of biopsy samples, which remains the only conclusive method for making an accurate diagnosis of the disease. Biopsies are usually analyzed by a trained pathologist who, by analyzing the biopsies under a microscope, assesses the normality or malignancy of the samples submitted. Different grades of malignancy correspond to different structural patterns as well as to apparent textures. In the case of prostate cancer, four major groups have to be recognized: stroma, benign prostatic hyperplasia, prostatic intraepithelial neoplasia, and prostatic carcinoma. Recently, multispectral imagery has been used to solve this multiclass problem. Unlike conventional RGB color space, multispectral images allow the acquisition of a large number of spectral bands within the visible spectrum, resulting in a large feature vector size. For such a high dimensionality, pattern recognition techniques suffer from the well-known "curse-of-dimensionality" problem. This paper proposes a novel round-robin tabu search (RR-TS) algorithm to address the curse-of-dimensionality for this multiclass problem. The experiments have been carried out on a number of prostate cancer textured multispectral images, and the results obtained have been assessed and compared with previously reported works. The system achieved 98%-100% classification accuracy when testing on two datasets. It outperformed principal component/linear discriminant classifier (PCA-LDA), tabu search/nearest neighbor classifier (TS-1NN), and bagging/boosting with decision tree (C4.5) classifier
Keywords :
biological organs; biomedical optical imaging; cancer; cellular biophysics; image classification; medical image processing; patient diagnosis; principal component analysis; search problems; trees (mathematics); tumours; benign prostatic hyperplasia; biopsy; cancer diagnosis; cancer pathology; conventional RGB color space; curse-of-dimensionality problem; decision tree classifier; multispectral imagery; pattern recognition technique; principal component-linear discriminant classifier; prostate cancer classification; prostatic carcinoma; prostatic intraepithelial neoplasia; quantitative cell imagery; round-robin tabu search algorithm; stroma; tabu search-nearest neighbor classifier; Biopsy; Classification tree analysis; Diseases; Microscopy; Multispectral imaging; Neoplasms; Pathology; Pattern recognition; Prostate cancer; Round robin; Feature selection; multispectral images; nearest neighbor (1NN) classifier; prostate cancer diagnosis; round-robin (RR) classification; tabu search (TS);
fLanguage :
English
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
Publisher :
ieee
ISSN :
1089-7771
Type :
jour
DOI :
10.1109/TITB.2006.879596
Filename :
1707691
Link To Document :
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