Artificial intelligence (AI) algorithms using deep learning have advanced the classification of skin disease images; however these algorithms have been mostly applied "in silico" and not validated clinically. Most dermatology AI algorithms perform binary classification tasks (e.g. malignancy versus benign lesions), but this task is not representative of dermatologists' diagnostic range. The American Academy of Dermatology Task Force on Augmented Intelligence published a position statement emphasizing the importance of clinical validation to create human-computer synergy, termed augmented intelligence (AuI). Liu et al's recent paper, "A deep learning system for differential diagnosis of skin diseases" represents a significant advancement of AI in dermatology, bringing it closer to clinical impact. However, significant issues must be addressed before this algorithm can be integrated into clinical workflow. These issues include accurate and equitable model development, defining and assessing appropriate clinical outcomes, and real-world integration.
翻译:利用深层学习的人工智能(AI)算法提高了皮肤病图象的分类;然而,这些算法大多是“硅”应用的,没有临床验证;大多数皮肤学AI算法都执行二进制分类任务(例如恶性与良性损伤),但这项任务并不代表皮肤学诊断范围;美国皮肤学学会强化情报工作队发表了立场声明,强调临床验证对于建立称为“强化情报”的人体计算机协同作用的重要性;刘等人最近发表的论文“皮肤病不同诊断的深层次学习系统”代表了皮肤学的人工智能的重大进步,使其更接近临床影响;然而,在将这一算法纳入临床工作流程之前,必须解决重大问题,这些问题包括准确和公平的模型开发、界定和评估适当的临床结果以及现实世界一体化。