Khattak Mohammed, Kierkegaard Patrick, McGregor Alison, Perry Daniel C
Faculty of Health and Life Science, University of Liverpool, Liverpool, UK.
Department of Surgery & Cancer, Faculty of Medicine, Imperial College, London, UK.
Bone Joint J. 2025 Jun 1;107-B(6):582-586. doi: 10.1302/0301-620X.107B6.BJJ-2024-1567.R1.
The deployment of AI in medical imaging, particularly in areas such as fracture detection, represents a transformative advancement in orthopaedic care. AI-driven systems, leveraging deep-learning algorithms, promise to enhance diagnostic accuracy, reduce variability, and streamline workflows by analyzing radiograph images swiftly and accurately. Despite these potential benefits, the integration of AI into clinical settings faces substantial barriers, including slow adoption across health systems, technical challenges, and a major lag between technology development and clinical implementation. This commentary explores the role of AI in healthcare, highlighting its potential to enhance patient outcomes through more accurate and timely diagnoses. It addresses the necessity of bridging the gap between AI innovation and practical application. It also emphasizes the importance of implementation science in effectively integrating AI technologies into healthcare systems, using frameworks such as the Consolidated Framework for Implementation Research and the Knowledge-to-Action Cycle to guide this process. We call for a structured approach to address the challenges of deploying AI in clinical settings, ensuring that AI's benefits translate into improved healthcare delivery and patient care.
人工智能在医学成像领域的应用,尤其是在骨折检测等方面,代表了骨科护理的一项变革性进展。人工智能驱动的系统利用深度学习算法,有望通过快速准确地分析X光图像来提高诊断准确性、减少变异性并简化工作流程。尽管有这些潜在益处,但将人工智能整合到临床环境中面临重大障碍,包括卫生系统采用缓慢、技术挑战以及技术开发与临床应用之间的严重滞后。本评论探讨了人工智能在医疗保健中的作用,强调其通过更准确和及时的诊断来改善患者治疗效果的潜力。它阐述了弥合人工智能创新与实际应用之间差距的必要性。它还强调了实施科学在将人工智能技术有效整合到医疗保健系统中的重要性,使用诸如实施研究综合框架和知识转化行动循环等框架来指导这一过程。我们呼吁采取结构化方法来应对在临床环境中部署人工智能的挑战,确保人工智能的益处转化为改善医疗服务提供和患者护理。