Department of Laboratory Medicine, Institute of Biomedicine, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.
Department of Clinical Pathology, Region Västra Götaland, Sahlgrenska University Hospital, Gothenburg, Sweden.
Diagn Pathol. 2024 Aug 3;19(1):106. doi: 10.1186/s13000-024-01532-y.
Surgical excision with clear histopathological margins is the preferred treatment to prevent progression of lentigo maligna (LM) to invasive melanoma. However, the assessment of resection margins on sun-damaged skin is challenging. We developed a deep learning model for detection of melanocytes in resection margins of LM.
In total, 353 whole slide images (WSIs) were included. 295 WSIs were used for training and 58 for validation and testing. The algorithm was trained with 3,973 manual pixel-wise annotations. The AI analyses were compared to those of three blinded dermatopathologists and two pathology residents, who performed their evaluations without AI and AI-assisted. Immunohistochemistry (SOX10) served as the reference standard. We used a dichotomized cutoff for low and high risk of recurrence (≤ 25 melanocytes in an area of 0.5 mm for low risk and > 25 for high risk).
The AI model achieved an area under the receiver operating characteristic curve (AUC) of 0.84 in discriminating margins with low and high recurrence risk. In comparison, the AUC for dermatopathologists ranged from 0.72 to 0.90 and for the residents in pathology, 0.68 to 0.80. Additionally, with aid of the AI model the performance of two pathologists significantly improved.
The deep learning showed notable accuracy in detecting resection margins of LM with a high versus low risk of recurrence. Furthermore, the use of AI improved the performance of 2/5 pathologists. This automated tool could aid pathologists in the assessment or pre-screening of LM margins.
外科切除并保证明确的组织病理学切缘是预防原位恶性黑素瘤(LM)进展为侵袭性黑素瘤的首选治疗方法。然而,在日光损伤皮肤上评估切除边缘是具有挑战性的。我们开发了一种用于检测 LM 切除边缘黑素细胞的深度学习模型。
共纳入 353 张全切片图像(WSIs)。295 张 WSI 用于训练,58 张用于验证和测试。该算法使用 3973 个手动像素级注释进行训练。将 AI 分析与 3 名盲法皮肤科病理学家和 2 名病理住院医师的分析进行比较,他们在没有 AI 和 AI 辅助的情况下进行评估。免疫组织化学(SOX10)作为参考标准。我们使用二分类截断值来区分低复发风险(≤0.5mm 面积内有 25 个以下黑素细胞为低风险,>25 个为高风险)和高复发风险。
AI 模型在区分低复发风险和高复发风险的边缘方面的曲线下面积(AUC)为 0.84。相比之下,皮肤科病理学家的 AUC 范围为 0.72 至 0.90,病理住院医师的 AUC 范围为 0.68 至 0.80。此外,借助 AI 模型,两名病理学家的表现显著提高。
深度学习在检测具有高复发风险与低复发风险的 LM 切除边缘方面表现出显著的准确性。此外,AI 的使用提高了 2/5 名病理学家的性能。这种自动化工具可以帮助病理学家评估或筛选 LM 边缘。