Extension of automated melanoma screening for non-melanocytic skin lesions

Kouhei Shimizu, H. Iyatomi, K. Norton, M. E. Celebi
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引用次数: 9

Abstract

In this paper, we present an automated melanoma screening system that supports not only melanocytic skin lesions (MSLs) but also non-melanocytic skin lesions (NoMSLs). Melanoma is known as the most fatal skin cancer. Therefore, early detection is highly desired. However, melanoma diagnosis is not easy even for expert dermatologists. In such a background, several researchers have developed automated methods for melanoma detection but they mostly focused only on MSLs while NoMSLs have been almost neglected. To expand the scope to NoMSLs, we developed two melanoma classification models, namely the single-shot and the double-shot. The single-shot model differentiates melanomas from all the other skin lesions including NoMSLs. The double-shot model divides the task into two subtasks. Firstly, it differentiates MSLs from NoMSLs and then differentiates melanomas from the other MSLs. The single-shot achieved a sensitivity (SE) of 92.9% and a specificity (SP) of 83.9%, while the double-shot achieved an SE of 97.6% and an SP of 92.2% when 10 image features were used. The double-shot showed superior detection performance to the single-shot except when their constituent image features were limited.
扩展非黑素细胞性皮肤病变的黑色素瘤自动筛查
在本文中,我们提出了一个自动黑色素瘤筛查系统,不仅支持黑色素细胞皮肤病变(MSLs),也支持非黑色素细胞皮肤病变(NoMSLs)。黑色素瘤被认为是最致命的皮肤癌。因此,早期发现是非常必要的。然而,即使对皮肤科专家来说,黑色素瘤的诊断也不容易。在这样的背景下,一些研究人员开发了黑色素瘤检测的自动化方法,但他们大多只关注MSLs,而NoMSLs几乎被忽视。为了将范围扩大到NoMSLs,我们开发了两种黑色素瘤分类模型,即单次和双次。单次注射模型将黑色素瘤与包括NoMSLs在内的所有其他皮肤病变区分开来。双镜头模型将任务划分为两个子任务。首先区分MSLs和NoMSLs,然后区分黑色素瘤和其他MSLs。当使用10个图像特征时,单次射击的灵敏度(SE)为92.9%,特异性(SP)为83.9%,双次射击的SE为97.6%,SP为92.2%。除了组成图像的特征有限外,双镜头的检测性能优于单镜头。
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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