Artificial Intelligence in Fracture Diagnosis on Radiographs: Evidence, Pitfalls, and Pathways for Clinical Integration (2020–2025)
Mohammed K Elbahi, Abubakr Muhammed, Mohammed Fadlelmola Abdalla Mohamednour, Fatima S Mukhtar

TL;DR
AI can help diagnose fractures in radiographs with accuracy similar to radiologists, but challenges like dataset bias and generalizability remain.
Contribution
A narrative synthesis of 2020–2025 literature on AI in fracture diagnosis, highlighting performance, regulatory approvals, and integration challenges.
Findings
AI systems achieved pooled sensitivity and specificity above 90% in fracture detection, comparable to radiologists.
AI assistance improved radiologists' sensitivity by 6-8% without reducing specificity in real-world settings.
Commercial AI platforms like OsteoDetect and BoneView received FDA and CE approvals for clinical use.
Abstract
Missed fractures remain one of the most frequent sources of diagnostic errors in emergency departments, often leading to delayed treatment, morbidity, and increased healthcare costs. Artificial intelligence (AI), particularly deep learning systems, has been increasingly investigated as an adjunct for musculoskeletal imaging. Over the past five years, multiple studies have evaluated the diagnostic performance, clinical utility, and limitations of AI in fracture detection. This article is a narrative synthesis of literature published from 2020 to 2025, focusing on systematic reviews, meta-analyses, and high-quality prospective studies addressing AI-assisted fracture diagnosis on radiographs and other imaging modalities. Key themes examined include diagnostic accuracy, anatomical and modality-specific performance, real-world deployment, regulatory approvals, and remaining challenges to…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Medical Imaging and Analysis · Radiology practices and education
