Lo Mastro Antonio, Grassi Enrico, Berritto Daniela, Russo Anna, Reginelli Alfonso, Guerra Egidio, Grassi Francesca, Boccia Francesco
Department of Radiology, University of Campania "Luigi Vanvitelli", Naples, Italy.
Department of Orthopaedics, University of Florence, Florence, Italy.
Jpn J Radiol. 2025 Apr;43(4):551-585. doi: 10.1007/s11604-024-01702-4. Epub 2024 Nov 14.
Fractures are one of the most common reasons of admission to emergency department affecting individuals of all ages and regions worldwide that can be misdiagnosed during radiologic examination. Accurate and timely diagnosis of fracture is crucial for patients, and artificial intelligence that uses algorithms to imitate human intelligence to aid or enhance human performs is a promising solution to address this issue. In the last few years, numerous commercially available algorithms have been developed to enhance radiology practice and a large number of studies apply artificial intelligence to fracture detection. Recent contributions in literature have described numerous advantages showing how artificial intelligence performs better than doctors who have less experience in interpreting musculoskeletal X-rays, and assisting radiologists increases diagnostic accuracy and sensitivity, improves efficiency, and reduces interpretation time. Furthermore, algorithms perform better when they are trained with big data on a wide range of fracture patterns and variants and can provide standardized fracture identification across different radiologist, thanks to the structured report. In this review article, we discuss the use of artificial intelligence in fracture identification and its benefits and disadvantages. We also discuss its current potential impact on the field of radiology and radiomics.
骨折是全球各年龄段和地区人群急诊入院最常见的原因之一,在放射学检查中可能会被误诊。准确及时地诊断骨折对患者至关重要,利用算法模仿人类智能以辅助或增强人类表现的人工智能是解决这一问题的一个有前景的办法。在过去几年里,已经开发出许多商用算法来改进放射学实践,大量研究将人工智能应用于骨折检测。文献中的最新研究成果描述了许多优势,表明人工智能在解读肌肉骨骼X光片方面比经验较少的医生表现更好,协助放射科医生可提高诊断准确性和敏感性,提高效率,并减少解读时间。此外,当算法使用关于广泛骨折模式和变体的大数据进行训练时,表现会更好,并且由于结构化报告,算法可以在不同放射科医生之间提供标准化的骨折识别。在这篇综述文章中,我们讨论了人工智能在骨折识别中的应用及其优缺点。我们还讨论了它目前对放射学和放射组学领域的潜在影响。