Supplementary Data: Development and Performance Evaluation of a Deep Learning Model for the Histopathological Diagnosis of Actinic Keratosis: A Diagnostic Case-Control-Accuracy Study
Description
The dataset contains clinical data. Abstract: Actinic keratosis (AK) is a precancerous skin lesion with the potential to progress into squamous cell carcinoma (SCC), with an overall prevalence of 14\%. Although AK is not routinely biopsied, it represents a significant portion of dermatopathology cases. Advances in histopathology now allow for the digitization of slides using whole slide imaging (WSI). While deep learning models (DLMs) have shown promise in various medical fields, their application in dermatopathology remains limited. Building on prior research, we developed a U-Net-based DLM to detect AK in histopathological slides. A total of 371 cases were used to develop the DLM, with two optimal classification thresholds identified for different tasks. In the test cohort, the DLM achieved an overall accuracy of 98.9\% at the patch level and an intersection over union (IoU) of 78.8\%. At the WSI level, the DLM reached an accuracy of 96.8\% and an IoU of 67.7\%. Additionally, 626 remaining cases were evaluated in a Diagnostic Case-Control-Accuracy Study, where the DLM's performance on AK slides and negative controls was compared to the gold standard, achieving an accuracy of 97.6\%. Our findings demonstrate the potential of DLMs to reliably detect AK in routine dermatopathology, suggesting their future impact as technology continues to advance.
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German Federal Ministry for Economic Affairs and Climate Action (BMWK) and the European Social Fund (ESF) within the EXIST Transfer of Research
Bundesministerium für Bildung und Forschung