Alexander Pan, Nathalie de Carvalho, Luisa Silva, Ucalene Harris, Stephen Dusza, Aditi Sahu, Kivanc Kose, Jilliana Monnier, Chih-Shan Chen, Manu Jain
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引用次数: 0
摘要
反射共聚焦显微镜-光学相干断层扫描(RCM-OCT)设备在检测和评估体内基底细胞癌(BCC)的深度方面已显示出其实用性,但对于新手来说,其解读难度很大。将人工智能(AI)应用于 RCM-OCT 可以为读者提供帮助。我们使用活检确认的 BCC 的 OCT 光栅来训练人工智能 (AI) 模型,以检测和创建三维 BCC 渲染并自动测量肿瘤深度。训练好的人工智能模型被应用于一个单独的测试集,该测试集包含 BCC、良性病变和正常皮肤的光栅。进行了盲读分析以及肿瘤深度与组织病理学的相关性分析。从仅查看 OCT 光栅(灵敏度为 73.3%,特异度为 45.5%)到查看带有人工智能生成的 BCC 渲染的光栅(灵敏度为 86.7%,特异度为 48.5%),BCC 检测结果均有所改善。在 AI 与组织学测量深度之间,肿瘤深度测量的皮尔逊相关性 r2 = 0.59(p=0.02)。因此,将 AI 添加到 RCM-OCT 设备中可广泛扩大其用途。
Artificial intelligence algorithms and three-dimensional volumetric rendering for basal cell carcinoma detection and tumour depth assessment in reflectance confocal microscopy-optical coherence tomography images: a pilot study.
The reflectance confocal microscopy (RCM)-optical coherence tomography (OCT) device has shown utility in detecting and assessing the depth of basal cell carcinoma (BCC) in vivo but is challenging for novices to interpret. Artificial intelligence (AI) applied to RCM-OCT could aid readers. We trained AI models, using OCT rasters of biopsy-confirmed BCC, to detect BCC, create three-dimensional rendering and automatically measure tumour depth. Trained AI models were applied to a separate test set containing rasters of BCC, benign lesions, and healthy skin. Blinded reader analysis and tumour depth correlation with histopathology were conducted. BCC detection improved from viewing OCT rasters only (sensitivity 73.3%, specificity 45.5%) to viewing rasters with AI-generated BCC rendering (sensitivity 86.7%, specificity 48.5%). A Pearson correlation r2 = 0.59 (P = 0.02) was achieved for the tumour depth measurement between AI and histological measured depths. Thus, addition of AI to the RCM-OCT device may expand its utility widely.
期刊介绍:
Clinical and Experimental Dermatology (CED) is a unique provider of relevant and educational material for practising clinicians and dermatological researchers. We support continuing professional development (CPD) of dermatology specialists to advance the understanding, management and treatment of skin disease in order to improve patient outcomes.