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首页> 外文期刊>The Journal of investigative dermatology. >Automated Delineation of Dermal-Epidermal Junction in Reflectance Confocal Microscopy Image Stacks of Human Skin
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Automated Delineation of Dermal-Epidermal Junction in Reflectance Confocal Microscopy Image Stacks of Human Skin

机译:人体皮肤反射共聚焦显微镜图像中皮肤-表皮交界的自动描绘

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摘要

Reflectance confocal microscopy (RCM) images skin noninvasively, with optical sectioning and nuclear-level resolution comparable with that of pathology. On the basis of the assessment of the dermal epidermal junction (DEJ) and morphologic features in its vicinity, skin cancer can be diagnosed in vivo with high sensitivity and specificity. However, the current visual, qualitative approach for reading images leads to subjective variability in diagnosis. We hypothesize that machine learning based algorithms may enable a more quantitative, objective approach. Testing and validation were performed with two algorithms that can automatically delineate the DEJ in RCM stacks of normal human skin. The test set was composed of 15 fair- and 15 dark-skin stacks (30 subjects) with expert labelings. In dark skin, in which the contrast is high owing to melanin, the algorithm produced an average error of 7.9 +/- 6.4 mu m. In fair skin, the algorithm delineated the DEJ as a transition zone, with average error of 8.3 +/- 5.8 mu m for the epidermis-to-transition zone boundary and 7.6 +/- 5.6 mu m for the transition zone-to-dermis. Our results suggest that automated algorithms may quantitatively guide the delineation of the DEJ, to assist in objective reading of RCM images. Further development of such algorithms may guide assessment of abnormal morphological features at the DEJ.
机译:反射共聚焦显微镜(RCM)可无创地对皮肤成像,光学切片和核级分辨率可与病理媲美。根据对皮肤表皮交界处(DEJ)及其附近形态特征的评估,可以在体内以高灵敏度和特异性诊断皮肤癌。然而,当前用于读取图像的视觉,定性方法导致诊断的主观可变性。我们假设基于机器学习的算法可以实现更定量,更客观的方法。测试和验证使用两种算法进行,可以自动描绘正常人皮肤的RCM堆栈中的DEJ。测试集由15个皮肤白皙和15个深色皮肤堆叠(30个受试者)组成,并带有专业标签。在黑色素引起对比度高的深色皮肤中,该算法产生的平均误差为7.9 +/- 6.4微米。在白皙皮肤中,该算法将DEJ划定为过渡区,表皮至过渡区边界的平均误差为8.3 +/- 5.8μm,过渡区至真皮的平均误差为7.6 +/- 5.6μm 。我们的结果表明,自动算法可以定量地指导DEJ的描绘,以帮助客观读取RCM图像。这种算法的进一步发展可以指导DEJ异常形态特征的评估。

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