Elbaum M, Kopf A W, Rabinovitz H S, Langley R G, Kamino H, Mihm M C, Sober A J, Peck G L, Bogdan A, Gutkowicz-Krusin D, Greenebaum M, Keem S, Oliviero M, Wang S
Electro-Optical Sciences, Inc, Irvington, NY, USA.
J Am Acad Dermatol. 2001 Feb;44(2):207-18. doi: 10.1067/mjd.2001.110395.
Differentiation of melanoma from melanocytic nevi is difficult even for skin cancer specialists. This motivates interest in computer-assisted analysis of lesion images.
Our purpose was to offer fully automatic differentiation of melanoma from dysplastic and other melanocytic nevi through multispectral digital dermoscopy.
At 4 clinical centers, images were taken of pigmented lesions suspected of being melanoma before biopsy. Ten gray-level (MelaFind) images of each lesion were acquired, each in a different portion of the visible and near-infrared spectrum. The images of 63 melanomas (33 invasive, 30 in situ) and 183 melanocytic nevi (of which 111 were dysplastic) were processed automatically through a computer expert system to separate melanomas from nevi. The expert system used either a linear or a nonlinear classifier. The "gold standard" for training and testing these classifiers was concordant diagnosis by two dermatopathologists.
On resubstitution, 100% sensitivity was achieved at 85% specificity with a 13-parameter linear classifier and 100%/73% with a 12-parameter nonlinear classifier. Under leave-one-out cross-validation, the linear classifier gave 100%/84% (sensitivity/specificity), whereas the nonlinear classifier gave 95%/68%. Infrared image features were significant, as were features based on wavelet analysis.
Automatic differentiation of invasive and in situ melanomas from melanocytic nevi is feasible, through multispectral digital dermoscopy.
即使对于皮肤癌专家而言,区分黑色素瘤和黑素细胞痣也很困难。这激发了人们对病变图像计算机辅助分析的兴趣。
我们的目的是通过多光谱数字皮肤镜检查实现黑色素瘤与发育异常及其他黑素细胞痣的全自动区分。
在4个临床中心,对活检前疑似黑色素瘤的色素沉着病变进行图像采集。每个病变获取10张灰度(MelaFind)图像,每张图像位于可见光谱和近红外光谱的不同部分。通过计算机专家系统对63例黑色素瘤(33例浸润性、30例原位性)和183例黑素细胞痣(其中111例为发育异常性)的图像进行自动处理,以区分黑色素瘤和痣。专家系统使用线性或非线性分类器。训练和测试这些分类器的“金标准”是两位皮肤病理学家的一致诊断。
在重新代入时,13参数线性分类器在特异性为85%时实现了100%的敏感性,12参数非线性分类器实现了100%/73%(敏感性/特异性)。在留一法交叉验证中,线性分类器给出了100%/84%(敏感性/特异性),而非线性分类器给出了95%/68%。红外图像特征以及基于小波分析的特征都很重要。
通过多光谱数字皮肤镜检查,从黑素细胞痣中自动区分浸润性和原位黑色素瘤是可行的。