Title :
Computer-Aided Diagnosis in Hysteroscopic Imaging
Author :
Neofytou, M.S. ; Tanos, V. ; Constantinou, I. ; Kyriacou, E.C. ; Pattichis, M.S. ; Pattichis, C.S.
Author_Institution :
Dept. of Comput. Sci., Univ. of Cyprus, Nicosia, Cyprus
Abstract :
The paper presents the development of a computer-aided diagnostic (CAD) system for the early detection of endometrial cancer. The proposed CAD system supports reproducibility through texture feature standardization, standardized multifeature selection, and provides physicians with comparative distributions of the extracted texture features. The CAD system was validated using 516 regions of interest (ROIs) extracted from 52 subjects. The ROIs were equally distributed among normal and abnormal cases. To support reproducibility, the RGB images were first gamma corrected and then converted into HSV and YCrCb. From each channel of the gamma-corrected YCrCb, HSV, and RGB color systems, we extracted the following texture features: 1) statistical features (SFs), 2) spatial gray-level dependence matrices (SGLDM), and 3) gray-level difference statistics (GLDS). The texture features were then used as inputs with support vector machines (SVMs) and the probabilistic neural network (PNN) classifiers. After accounting for multiple comparisons, texture features extracted from abnormal ROIs were found to be significantly different than texture features extracted from normal ROIs. Compared to texture features extracted from normal ROIs, abnormal ROIs were characterized by lower image intensity, while variance, entropy, and contrast gave higher values. In terms of ROI classification, the best results were achieved by using SF and GLDS features with an SVM classifier. For this combination, the proposed CAD system achieved an 81% correct classification rate.
Keywords :
biomedical optical imaging; cancer; feature extraction; image classification; image texture; medical image processing; probability; statistics; support vector machines; CAD system; PNN classifiers; RGB color systems; RGB imaging; ROI; SVM; computer-aided diagnosis; endometrial cancer; gamma-corrected YCrCb; gray-level difference statistics; hysteroscopic imaging; image intensity; probabilistic neural network classifiers; regions of interest; spatial gray-level dependence matrices; support vector machines; texture feature extraction; Cancer; Design automation; Entropy; Feature extraction; Image color analysis; Imaging; Support vector machines; Classification; computer-aided diagnostic (CAD); computer-aided hysteroscopy; endometrial cancer; endoscopy; hysteroscopy; texture features;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2014.2332760