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Validation Study of Automated Dermal/Epidermal Junction Localization Algorithm in Reflectance Confocal Microscopy Images of Skin

机译:自动皮肤/表皮交界处定位算法在皮肤反射共聚焦显微镜图像中的验证研究

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Reflectance confocal microscopy (RCM) has seen increasing clinical application for noninvasive diagnosis of skin cancer. Identifying the location of the dermal-epidermal junction (DEJ) in the image stacks is key for effective clinical imaging. For example, one clinical imaging procedure acquires a dense stack of 0.5×0.5mm FOV images and then, after manual determination of DEJ depth, collects a 5×5mm mosaic at that depth for diagnosis. However, especially in lightly pigmented skin, RCM images have low contrast at the DEJ which makes repeatable, objective visual identification challenging. We have previously published proof of concept for an automated algorithm for DEJ detection in both highly- and lightly-pigmented skin types based on sequential feature segmentation and classification. In lightly-pigmented skin the change of skin texture with depth was detected by the algorithm and used to locate the DEJ. Here we report on further validation of our algorithm on a more extensive collection of 24 image stacks (15 fair skin, 9 dark skin). We compare algorithm performance against classification by three clinical experts. We also evaluate inter-expert consistency among the experts. The average correlation across experts was 0.81 for lightly pigmented skin, indicating the difficulty of the problem. The algorithm achieved epidermis/dermis misclassification rates smaller than 10% (based on 25×25 mm tiles) and average distance from the expert labeled boundaries of ~6.4 μm for fair skin and -5.3 um for dark skin, well within average cell size and less than 2x the instrument resolution in the optical axis.
机译:反射共聚焦显微镜(RCM)在皮肤癌的非侵入性诊断中已得到越来越多的临床应用。识别图像堆栈中真皮-表皮交界处(DEJ)的位置是有效临床成像的关键。例如,一种临床成像程序会获取0.5×0.5mm FOV图像的密集堆栈,然后在手动确定DEJ深度后,在该深度处收集5×5mm马赛克以进行诊断。但是,尤其是在浅色皮肤中,RCM图像在DEJ处的对比度较低,这使得可重复的客观视觉识别具有挑战性。我们先前已经发布了基于连续特征分割和分类的,针对高色素和轻度色素皮肤类型的DEJ检测自动算法的概念验证。该算法检测到浅色皮肤中皮肤质地随深度的变化,并用于定位DEJ。在这里,我们报告了我们的算法在24个图像堆栈(15个白皙的皮肤,9个深色皮肤)的更广泛集合上的进一步验证。我们比较了三位临床专家对分类算法的性能。我们还评估专家之间的专家间一致性。专家对浅色皮肤的平均相关系数是0.81,表明该问题很困难。该算法实现的表皮/真皮误分类率小于10%(基于25×25 mm瓷砖),白皙皮肤与专家标记边界的平均距离约为6.4μm,深色皮肤为-5.3 um,均在平均细胞大小和小于光轴上仪器分辨率的2倍。

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