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A novel classification system for dysplastic nevus and malignant melanoma

机译:增生性痣和恶性黑色素瘤的新型分类系统

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Melanoma is a potentially deadly form of skin cancer, however, if detected early, it is curable. A dysplastic nevus (atypical mole) is not cancerous but may represent a precursor to malignancy as nearly 40% of melanomas arise from a preexisting mole. In this study, we propose a system to classify a skin lesion image as melanoma (M), dysplastic nevus (D), and benign (B). For this purpose we develop a new two layered-system. The first layer consists of three binary Support Vector Machine (SVM) classifiers, one for each pair of classes, M vs B, M vs D, and B vs D. The second layer is a novel decision maker function, which uses probability memberships derived from the first layer. Each lesion is characterized with five features, which mostly overlaps with the ABCD rule of dermatology. The dataset we used have 112 lesions with 54 M, 38 D, and 20 B cases. In the experiments of melanoma detection, we obtained 98% specificity, 76% sensitivity, and 85% F-measure accuracy.
机译:黑色素瘤是一种可能致命的皮肤癌,但是,如果及早发现,它是可以治愈的。增生痣(非典型痣)不是癌性的,但可能代表了恶性肿瘤的先兆,因为近40%的黑色素瘤是由既有痣引起的。在这项研究中,我们提出了一种将皮肤病变图像分类为黑色素瘤(M),增生性痣(D)和良性(B)的系统。为此,我们开发了一个新的两层系统。第一层由三个二进制支持向量机(SVM)分类器组成,每个分类对分别是M对B,M对D和B对D。第二层是新颖的决策者函数,它使用派生的概率隶属关系从第一层开始。每个病变均具有五个特征,这些特征大多与ABCD皮肤病学规则重叠。我们使用的数据集有112个病灶,分别为54 M,38 D和20 B例。在黑色素瘤检测实验中,我们获得了98%的特异性,76%的灵敏度和85%的F-measure准确性。

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