DocumentCode :
155342
Title :
Automated classification of static ultrasound images of ovarian tumours based on decision level fusion
Author :
Khazendar, S. ; Al-Assam, H. ; Du, Honglei ; Jassim, S. ; Sayasneh, A. ; Bourne, T. ; Kaijser, J. ; Timmerman, D.
Author_Institution :
Dept. of Appl. Comput., Univ. of Buckingham, Buckingham, UK
fYear :
2014
fDate :
25-26 Sept. 2014
Firstpage :
148
Lastpage :
153
Abstract :
Ovarian cancer is the most deadly cancer of the female reproductive system. Early detection of ovarian carcinoma continues to be a challenging task. Manual classifications are generally based on subjective assessment by experts, which may result in different diagnoses. In this paper, we propose a new method for automatic ovarian tumour classification based on decision level fusion. The proposed method first extracts two different types of features (Histogram and Local Binary Pattern) from ultrasound images of the ovary. Support Vector Machine (SVM) is then used to classify ovarian tumour based on each type of features separately. The method then employs a novel decision fusion that categorizes SVM-based decision scores into a measure of confidence to assist the final diagnostic decision making. Experimental results on 187 ultrasound images of ovarian tumour show classification accuracy of 90%, 81% and 69% based on classification decisions of high, medium and low confidence respectively, whereas 18% of the cases were unclassified as inconclusive not sure cases. The paper argues that such confidence based prediction outcomes are more meaningful than other classical alternatives and closer to the reality in diagnosis of ovarian cancers.
Keywords :
biomedical ultrasonics; cancer; feature extraction; gynaecology; image classification; image fusion; medical image processing; patient diagnosis; support vector machines; SVM-based decision scores; automated static ultrasound image classification; automatic ovarian tumour classification; decision level fusion; diagnostic decision making; feature extraction; female reproductive system; manual classifications; ovarian cancer; ovarian carcinoma; support vector machine; Accuracy; Cancer; Feature extraction; Histograms; Support vector machines; Tumors; Ultrasonic imaging; decision level function; feature extraction; ovarian tumour; support vector machine; ultrasound;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Science and Electronic Engineering Conference (CEEC), 2014 6th
Conference_Location :
Colchester
Type :
conf
DOI :
10.1109/CEEC.2014.6958571
Filename :
6958571
Link To Document :
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