Department of Pathology and Laboratory Medicine, The University of North Carolina at Chapel Hill, NC, USA.
Histopathology. 2012 Sep;61(3):436-44. doi: 10.1111/j.1365-2559.2012.04229.x. Epub 2012 Jun 11.
We applied digital image analysis techniques to study selected types of melanocytic lesions.
We used advanced digital image analysis to compare melanocytic lesions as follows: (i) melanoma to nevi, (ii) melanoma subtypes to nevi, (iii) severely dysplastic nevi to other nevi and (iv) melanoma to severely dysplastic nevi. We were successful in differentiating melanoma from nevi [receiver operating characteristic area (ROC) 0.95] using image-derived features, among which those related to nuclear size and shape and distance between nuclei were most important. Dividing melanoma into subtypes, even greater separation was obtained (ROC area 0.98 for superficial spreading melanoma; 0.95 for lentigo maligna melanoma; and 0.99 for unclassified). Severely dysplastic nevi were best differentiated from conventional and mildly dysplastic nevi by differences in cellular staining qualities (ROC area 0.84). We found that melanomas were separated from severely dysplastic nevi by features related to shape and staining qualities (ROC area 0.95). All comparisons were statistically significant (P < 0.0001).
We offer a unique perspective into the evaluation of melanocytic lesions and demonstrate a technological application with increasing prevalence, and with potential use as an adjunct to traditional diagnosis in the future.
我们应用数字图像分析技术来研究几种特定类型的黑素细胞病变。
我们使用先进的数字图像分析来比较黑素细胞病变,包括:(i)黑素瘤与痣,(ii)黑素瘤亚型与痣,(iii)重度异型痣与其他痣,以及 (iv)黑素瘤与重度异型痣。我们成功地使用图像衍生特征区分了黑素瘤和痣[受试者工作特征曲线(ROC)区域 0.95],其中与核大小和形状以及核间距离相关的特征最为重要。将黑素瘤分为亚型后,可获得更大的分离效果(浅表扩散性黑素瘤的 ROC 区域为 0.98;恶性雀斑样痣黑素瘤为 0.95;未分类为 0.99)。重度异型痣与常规型和轻度异型痣的最佳区分是细胞染色质量的差异(ROC 区域为 0.84)。我们发现,黑素瘤与重度异型痣的分离与形状和染色质量相关的特征有关(ROC 区域为 0.95)。所有比较均具有统计学意义(P<0.0001)。
我们提供了一种评估黑素细胞病变的独特视角,并展示了一种具有越来越高的应用前景的技术应用,它可能成为未来传统诊断的辅助手段。