Lorber Andrea, Wiltgen Marco, Hofmann-Wellenhof Rainer, Koller Silvia, Weger Wolfgang, Ahlgrimm-Siess Verena, Smolle Josef, Gerger Armin
Department of Dermatology, Medical University Graz, Graz, Austria.
Skin Res Technol. 2009 May;15(2):237-41. doi: 10.1111/j.1600-0846.2009.00361.x.
BACKGROUND/PURPOSE: In vivo confocal laser scanning microscopy (CLSM) represents a novel imaging tool that allows the non-invasive examination of skin cancer morphology at a quasi histological resolution without biopsy. Previous studies dealt with the search for diagnostic, but subjective visual criteria. In this study we examined the correlation between objectively reproducible image-analysis features und visual morphology in melanocytic skin tumours using CLSM.
Eight hundred and fifty-seven CLSM tumour images including 408 benign nevi and 449 melanoma images were evaluated. Image analysis was based on features of the wavelet transform and classification tree analysis (CART) was used for classification purposes. In a second step, morphologic details of CLSM images, which have turned out to be of diagnostic significance by the classification algorithm were evaluated.
CART analysis of the whole set of CLSM images correctly classified 97.55% of all melanoma images and 96.32% of all nevi images. Seven classification tree nodes seemed to indicate benign nevi, whereas six nodes were suggestive for melanoma morphology. The visual examination of selected nodes demonstrated that monomorphic melanocytic cells and melanocytic cell nests are characteristic for benign nevi whereas polymorphic melanocytic cells, disarray of melanocytic architecture and poorly defined or absent keratinocyte cell borders are characteristic for melanoma.
Well-known, but subjective CLSM criteria could be objectively reproduced by image analysis features and classification tree analysis. Moreover, features not accessible to the human eye seem to contribute to classification success.
背景/目的:体内共聚焦激光扫描显微镜(CLSM)是一种新型成像工具,可在无需活检的情况下以准组织学分辨率对皮肤癌形态进行非侵入性检查。以往的研究致力于寻找诊断性的但主观的视觉标准。在本研究中,我们使用CLSM检查了黑素细胞性皮肤肿瘤中客观可重复的图像分析特征与视觉形态之间的相关性。
评估了857张CLSM肿瘤图像,包括408例良性痣和449例黑色素瘤图像。图像分析基于小波变换的特征,并使用分类树分析(CART)进行分类。第二步,评估了CLSM图像的形态学细节,这些细节已通过分类算法证明具有诊断意义。
对所有CLSM图像进行CART分析,正确分类了97.55%的黑色素瘤图像和96.32%的痣图像。七个分类树节点似乎表明是良性痣,而六个节点提示为黑色素瘤形态。对选定节点的视觉检查表明,单形性黑素细胞和黑素细胞巢是良性痣的特征,而多形性黑素细胞、黑素细胞结构紊乱以及角质形成细胞边界不清晰或缺失是黑色素瘤的特征。
通过图像分析特征和分类树分析可以客观地重现众所周知但主观的CLSM标准。此外,人眼无法获取的特征似乎有助于分类成功。