工作流程
医学
医疗保健
最佳实践
临床决策支持系统
临床实习
食品药品监督管理局
人工智能
计算机科学
决策支持系统
风险分析(工程)
护理部
管理
数据库
经济
经济增长
作者
William J. Nahm,Nayyab Sohail,Joshua Burshtein,Mohamad Goldust,Maria M. Tsoukas
摘要
ABSTRACT This comprehensive review examines artificial intelligence (AI) applications in dermatology, approved by the United States (U.S.) Food and Drug Administration (FDA) and international organizations, evaluating their clinical implementation and impact on healthcare delivery. We identified fifteen regulatory‐approved AI devices globally, including three FDA‐approved systems in the U.S. The FDA‐approved devices primarily focused on melanoma and skin cancer detection through specialized hardware, while international platforms emphasized broader applications, mobile accessibility, and condition‐specific tools for managing various skin conditions. Beyond these specific tools, we analyzed how AI can enhance clinical dermatology through screening systems, diagnostic support, administrative automation, and practice optimization. AI's integration into medical education can provide immediate feedback, support resident training, and complement traditional instruction, while patient education applications can improve treatment adherence through personalized content delivery. While AI shows promise across these domains, successful implementation requires addressing challenges in representation disparities, data privacy, algorithmic fairness, and clinical workflow integration. Future development should focus on standardized validation protocols, diverse training sets, robust real‐world studies, and comprehensive assessment of patient outcomes beyond traditional performance metrics. AI's role appears most effective as augmentation to clinical expertise, particularly in improving access to specialized care and supporting clinical decision‐making.
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