Title :
Quick Reduct-ACO based feature selection for TRUS prostate cancer image classification
Author :
Manavalan, R. ; Thangavel, K.
Author_Institution :
Dept. of Comput. Sci. & Applic, K.S.R. Coll. of Arts & Sci., Namakkal, India
Abstract :
Ultrasound imaging is most suitable method for early detection of prostate cancer. It is very difficult to distinguish benign and malignant in the early stage of cancer. This is reflected in the high percentage of unnecessary biopsies that are performed and many deaths caused by late detection or misdiagnosis. A computer based classification system can provide a second opinion to the radiologists. Generally objects are described in terms of a set of measurable features in pattern recognition. Feature selection is a process of selecting the most wanted or dominating features set from the original features set in order to reduce the cost of data visualization and increasing classification efficiency and accuracy. The Region of Interest (ROI) is identified from the Transrectal Ultrasound (TRUS) images using DBSCAN clustering with morphological operators. Then the statistical texture features are extracted from the ROIs. Rough Set based Quick Reduct (QR) and Evolutionary based Ant Colony Optimization (ACO) is studied. In this paper, Hybridization of Rough Set based QR and ACO is proposed for dimensionality reduction. The selected features may have the best discriminatory power for classifying prostate cancer based on TRUS images. Support Vector Machine (SVM) is tailored for evaluation of the proposed feature selection methods through classification. Then, the comparative analysis is performed among these methods. Experimental results show that the proposed method QR-ACO produces significant results. Number of features selected using QR-ACO algorithm is minimal, and is successful and has high detection accuracy.
Keywords :
ant colony optimisation; biomedical ultrasonics; cancer; data visualisation; evolutionary computation; feature extraction; image classification; image texture; medical image processing; pattern clustering; rough set theory; statistical analysis; support vector machines; DBSCAN clustering; QR-ACO algorithm; ROI; SVM; TRUS prostate cancer image classification; comparative analysis; computer based classification system; data visualization cost reduction; dimensionality reduction; evolutionary based ant colony optimization; morphological operators; pattern recognition; prostate cancer detection; quick reduct-ACO based feature selection; region of interest; rough set based QR hybridization; rough set based quick reduct; statistical texture feature extraction; support vector machine; transrectal ultrasound images; ultrasound imaging; Accuracy; Biomedical imaging; Classification algorithms; Feature extraction; Prostate cancer; Support vector machines; ACO; DBSCAN; M3-filter; Prostate-Cancer; QR-ACO; Rough Set;
Conference_Titel :
Pattern Recognition, Informatics and Medical Engineering (PRIME), 2012 International Conference on
Conference_Location :
Salem, Tamilnadu
Print_ISBN :
978-1-4673-1037-6
DOI :
10.1109/ICPRIME.2012.6208367