Medical Image Analysis Group, Eindhoven University of Technology, Eindhoven, The Netherlands.
MohsA Skin Centre, Eindhoven, The Netherlands.
Exp Dermatol. 2021 May;30(5):733-738. doi: 10.1111/exd.14306. Epub 2021 Mar 3.
Basal cell carcinoma (BCC) is the most common type of skin cancer with incidence rates rising each year. Mohs micrographic surgery (MMS) is most often chosen as treatment for BCC on the face for which each frozen section has to be histologically analysed to ensure complete tumor removal. This causes a heavy burden on health economics.
To develop and evaluate a deep learning model for the automated detection of BCC-negative slides and classification of BCC in histopathology slides of MMS based on whole-slide image (WSI).
Two deep learning models were developed on the basis of 171 digitized H&E frozen slides from 70 different patients. The first model had a U-Net architecture and was used for the segmentation of BCC. A subsequent convolutional neural network used the segmentation to classify the whole slide as BCC or BCC-negative.
Quantitative evaluation over manually labelled ground truth data resulted in a Dice score of 0.66 for the segmentation of BCC and an area under the receiver operating characteristic curve (AUC) of 0.90 for the slide-level classification.
This study demonstrates that through WSIs deep learning models may be a feasible option to improve the clinical workflow and reduce costs in histological analysis of BCC in MMS.
基底细胞癌(BCC)是最常见的皮肤癌,发病率逐年上升。Mohs 显微外科手术(MMS)通常是面部 BCC 的首选治疗方法,因为每个冷冻切片都必须进行组织学分析,以确保肿瘤完全切除。这给卫生经济学带来了沉重的负担。
开发和评估一种基于全切片图像(WSI)的深度学习模型,用于自动检测 MMS 组织病理学切片中的 BCC 阴性切片和 BCC 分类。
基于 70 名不同患者的 171 张数字化 H&E 冷冻切片,开发了两种深度学习模型。第一种模型采用 U-Net 架构,用于 BCC 的分割。随后的卷积神经网络利用分割对整个幻灯片进行 BCC 或 BCC 阴性分类。
对人工标记的地面真实数据进行定量评估,BCC 分割的 Dice 得分为 0.66,幻灯片级分类的接收者操作特征曲线下面积(AUC)为 0.90。
本研究表明,通过 WSI,深度学习模型可能是改善 MMS 中 BCC 组织学分析的临床工作流程和降低成本的可行选择。