Melanoma Skin Cancer Detection Based on ABCD Rule

Nabeel F. Lattoofi, I. Al-Sharuee, Mohammed Y. Kamil, Ayoob H. Obaid, Aya A. Mahidi, Ammar A. Omar, A. Saleh
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引用次数: 11

Abstract

Skin cancer is the most common cancers in the last years, especially in the human body; the Melanoma is the most destructive type of skin lesions. Detect cancer is important at the initial stage, but only an expert dermatologist can detect which one is non-melanoma and melanoma. Computer-aided diagnosis (CADs) application to skin cancer is relatively understudied. The purpose of this paper is the automated detection of Melanoma via digital image processing. In this project, the algorithm consists of automatic ABCD (asymmetry, border irregularity, colour, and dermoscopic structure) rule of dermoscopy lesions images is implemented. Before that, we use hair removal as a pre-processing step which is based on morphological filter and thresholding. Finally, the lesions are classified as either melanoma or benign. The used dataset is containing 200 dermoscopic images, where 120 are benign lesions and 80 malignant melanomas. The proposed method shows an accuracy of 93.2%, 92.59% specificity, and 90.15% sensitivity.
基于ABCD规则的黑色素瘤皮肤癌检测
皮肤癌是近年来最常见的癌症,尤其是在人体中;黑色素瘤是最具破坏性的皮肤病变。在最初阶段检测癌症很重要,但只有专业的皮肤科医生才能检测出哪个是非黑色素瘤,哪个是黑色素瘤。计算机辅助诊断(cad)在皮肤癌中的应用研究相对较少。本文的目的是通过数字图像处理实现黑色素瘤的自动检测。在本课题中,算法实现了皮肤镜病变图像的自动ABCD(不对称、边缘不规则、颜色和皮肤镜结构)规则。在此之前,我们将脱毛作为基于形态滤波和阈值分割的预处理步骤。最后,病变被分类为黑色素瘤或良性。使用的数据集包含200张皮肤镜图像,其中120张为良性病变,80张为恶性黑色素瘤。该方法准确率为93.2%,特异度为92.59%,灵敏度为90.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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