Shimizu Kouhei, Iyatomi Hitoshi, Celebi M Emre, Norton Kerri-Ann, Tanaka Masaru
IEEE Trans Biomed Eng. 2015 Jan;62(1):274-83. doi: 10.1109/TBME.2014.2348323. Epub 2014 Aug 15.
This paper proposes a new computer-aided method for the skin lesion classification applicable to both melanocytic skin lesions (MSLs) and nonmelanocytic skin lesions (NoMSLs). The computer-aided skin lesion classification has drawn attention as an aid for detection of skin cancers. Several researchers have developed methods to distinguish between melanoma and nevus, which are both categorized as MSL. However, most of these studies did not focus on NoMSLs such as basal cell carcinoma (BCC), the most common skin cancer and seborrheic keratosis (SK) despite their high incidence rates. It is preferable to deal with these NoMSLs as well as MSLs especially for the potential users who are not enough capable of diagnosing pigmented skin lesions on their own such as dermatologists in training and physicians with different expertise. We developed a new method to distinguish among melanomas, nevi, BCCs, and SKs. Our method calculates 828 candidate features grouped into three categories: color, subregion, and texture. We introduced two types of classification models: a layered model that uses a task decomposition strategy and flat models to serve as performance baselines. We tested our methods on 964 dermoscopy images: 105 melanomas, 692 nevi, 69 BCCs, and 98 SKs. The layered model outperformed the flat models, achieving detection rates of 90.48%, 82.51%, 82.61%, and 80.61% for melanomas, nevi, BCCs, and SKs, respectively. We also identified specific features effective for the classification task including irregularity of color distribution. The results show promise for enhancing the capability of the computer-aided skin lesion classification.
本文提出了一种新的计算机辅助方法,用于皮肤病变分类,该方法适用于黑素细胞性皮肤病变(MSL)和非黑素细胞性皮肤病变(NoMSL)。计算机辅助皮肤病变分类作为一种辅助皮肤癌检测的手段已引起关注。几位研究人员已开发出区分黑色素瘤和痣的方法,这两种都归类为MSL。然而,尽管基底细胞癌(BCC)和脂溢性角化病(SK)等非黑素细胞性皮肤病变发病率很高,但这些研究大多未关注它们。对于那些自身没有足够能力诊断色素性皮肤病变的潜在用户,如实习皮肤科医生和具有不同专业知识的医生来说,处理这些非黑素细胞性皮肤病变以及黑素细胞性皮肤病变是很有必要的。我们开发了一种新方法来区分黑色素瘤、痣、基底细胞癌和脂溢性角化病。我们的方法计算了828个候选特征,分为三类:颜色、子区域和纹理。我们引入了两种分类模型:一种使用任务分解策略的分层模型和作为性能基线的扁平模型。我们在964张皮肤镜图像上测试了我们的方法:105例黑色素瘤、692例痣、69例基底细胞癌和98例脂溢性角化病。分层模型的表现优于扁平模型,对黑色素瘤、痣、基底细胞癌和脂溢性角化病的检测率分别达到90.48%、82.51%、82.61%和80.61%。我们还确定了对分类任务有效的特定特征,包括颜色分布的不规则性。结果显示出增强计算机辅助皮肤病变分类能力的前景。