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From de‐skilling to up‐skilling: How artificial intelligence will augment the modern physician
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10
Autoren
2026
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Abstract
The integration of artificial intelligence (AI) into orthopaedic practice is no longer a theoretical future but an inevitable reality. As AI models increasingly demonstrate superior performance in specific diagnostic and administrative tasks, concerns have arisen regarding the potential replacement of physicians and the erosion of clinical competency. This narrative review synthesizes current evidence to reframe the debate from a fear of replacement to a strategy of augmentation. Pathways leading to 'deskilling'-the loss of existing expertise-and the emerging threat of 'never-skilling', where trainees fail to acquire foundational proficiencies due to premature reliance on automation, are analysed. Current AI applications function primarily as assistants rather than autonomous agents, offering an opportunity for 'upskilling' by liberating clinicians from repetitive administrative burdens and standardizing diagnostic accuracy. However, realizing this benefit requires deliberate educational mechanisms; one has to argue that maintaining clinical excellence requires a shift in training paradigms, emphasizing critical oversight where human reasoning validates AI outputs. AI will not replace the orthopaedic surgeon in the foreseeable future; rather, it will necessitate an evolution of the physician's role. By automating routine tasks, AI allows the modern physician to operate at a higher level, focusing on complex decision-making, procedural excellence and patient empathy. The future requires mechanisms to ensure AI remains a tool for professional elevation rather than a catalyst for skill degradation. Level of Evidence: Level V.
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Autoren
Institutionen
- University of Zurich(CH)
- Universitätsklinik Balgrist(CH)
- Tripler Army Medical Center(US)
- Sahlgrenska University Hospital(SE)
- Skåne University Hospital(SE)
- University of Gothenburg(SE)
- Chalmers University of Technology(SE)
- Ten Medical Design (Sweden)(SE)
- Universitätsmedizin Rostock(DE)
- University of Basel(CH)
- Kantonsspital Baselland Standort Bruderholz(CH)
- Istituto Ortopedico Rizzoli(IT)
- University of Bologna(IT)