Department of Electrical and Computer Engineering, Missouri University of Science and Technology, 116 Emerson Electric Company Hall, 301 West 16th Street, Rolla, MO 65409-0040, USA.
Comput Med Imaging Graph. 2011 Mar;35(2):148-54. doi: 10.1016/j.compmedimag.2010.09.009. Epub 2010 Nov 12.
Dermoscopy, also known as dermatoscopy or epiluminescence microscopy (ELM), permits visualization of features of pigmented melanocytic neoplasms that are not discernable by examination with the naked eye. White areas, prominent in early malignant melanoma and melanoma in situ, contribute to early detection of these lesions. An adaptive detection method has been investigated to identify white and hypopigmented areas based on lesion histogram statistics. Using the Euclidean distance transform, the lesion is segmented in concentric deciles. Overlays of the white areas on the lesion deciles are determined. Calculated features of automatically detected white areas include lesion decile ratios, normalized number of white areas, absolute and relative size of largest white area, relative size of all white areas, and white area eccentricity, dispersion, and irregularity. Using a back-propagation neural network, the white area statistics yield over 95% diagnostic accuracy of melanomas from benign nevi. White and hypopigmented areas in melanomas tend to be central or paracentral. The four most powerful features on multivariate analysis are lesion decile ratios. Automatic detection of white and hypopigmented areas in melanoma can be accomplished using lesion statistics. A neural network can achieve good discrimination of melanomas from benign nevi using these areas. Lesion decile ratios are useful white area features.
皮肤镜检,也称为皮肤光学显微镜检查或表皮透光显微镜检查(ELM),可以观察到肉眼无法分辨的色素性黑素细胞肿瘤的特征。白色区域在早期恶性黑色素瘤和原位黑色素瘤中很明显,有助于早期发现这些病变。已经研究了一种自适应检测方法,基于病变的直方图统计来识别白色和色素减退区域。使用欧几里得距离变换,将病变分为同心十分位数进行分割。在病变的十分位数上叠加白色区域。自动检测到的白色区域的计算特征包括病变十分位数比、白色区域的归一化数量、最大白色区域的绝对和相对大小、所有白色区域的相对大小以及白色区域的偏心度、离散度和不规则度。使用反向传播神经网络,白色区域统计信息可实现对良性痣黑素瘤的诊断准确率超过 95%。黑素瘤中的白色和色素减退区域往往位于中央或旁中央。多变量分析中最有力的四个特征是病变十分位数比。使用病变统计信息可以自动检测黑素瘤中的白色和色素减退区域。神经网络可以使用这些区域很好地区分黑素瘤和良性痣。病变十分位数比是有用的白色区域特征。