A computer-aided diagnosis system for malignant melanomas

被引:0
作者
N. Razmjooy
B. Somayeh Mousavi
Fazlollah Soleymani
M. Hosseini Khotbesara
机构
[1] Islamic Azad University,Young Researchers Club, Majlesi Branch
[2] Islamic Azad University,Young Researchers Club, Zahedan Branch
[3] Islamic Azad University,Department of Medicine, Ardabil Branch
[4] Islamic Azad University,Department of Mathematics, Zahedan Branch
来源
Neural Computing and Applications | 2013年 / 23卷
关键词
Malignant melanoma; Support vector machine; Segmentation; Feature extraction; Texture; ABCD rule; Sequential minimal optimization;
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学科分类号
摘要
The aim of this study is to provide an efficient way to segment the malignant melanoma images. This method first eliminates extra hair and scales using edge detection; afterward, it deduces a color image into an intensity image and approximately segments the image by intensity thresholding. Some morphological operations are used to focus on an image area where a melanoma boundary potentially exists and then used to localize the boundary in that area. The distributions of texture and a new feature known as AIBQ features in the next step provide a good discrimination of skin lesions to feature extraction. Finally, we rely on quantitative image analysis to measure a series of candidate attributes hoped to contain enough information to differentiate malignant from benign melanomas. The selected features are applied to a support vector machine to classify the melanomas as malignant or benign. By our approach, we obtained 95 % correct classification of malignant or benign melanoma on real melanoma images.
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页码:2059 / 2071
页数:12
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