肌肉骨骼成像的人工智能辅助分析——机器学习模型现状的叙述性回顾。

IF 5 2区 医学 Q1 ORTHOPEDICS
Felix C. Oettl, Bálint Zsidai, Jacob F. Oeding, Michael T. Hirschmann, Robert Feldt, David Fendrich, Matthew J. Kraeutler, Philipp W. Winkler, Pawel Szaro, Kristian Samuelsson, ESSKA Artificial Intelligence Working Group
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引用次数: 0

摘要

人工智能(AI)在肌肉骨骼放射学中的潜力日益得到认可,为成像量增加和接受过奖学金培训的放射科医生短缺所带来的挑战提供了解决方案。人工智能的整合不是为了取代放射科医生,而是为了增强他们的能力,提高工作流程效率和诊断准确性。本文回顾了人工智能在肌肉骨骼成像中的应用现状,重点关注通用多模态模型和专业基础模型。人工智能已被证明在肌肉骨骼成像、增强骨折检测、脊柱侧凸评估和下肢对齐分析方面是有效的。在骨关节炎中,人工智能通过识别细微的结构变化来帮助早期发现。人工智能加速的MRI重建可将扫描时间缩短90%,同时保持诊断质量,提高效率和可及性。新兴的多模式模型进一步将影像与临床数据相结合,推动了精准医疗的发展。技术挑战依然存在,特别是在解决运动人工制品和解剖复杂性方面。伦理考虑,包括数据隐私、算法偏见和模型透明度,对于负责任的实施仍然至关重要。尽管在临床验证和实施方面仍存在挑战,但广义和狭义人工智能模型的结合显示出推进精准医疗和实现高质量医疗民主化的希望。证据等级V级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence-assisted analysis of musculoskeletal imaging—A narrative review of the current state of machine learning models

Artificial intelligence-assisted analysis of musculoskeletal imaging—A narrative review of the current state of machine learning models

Artificial intelligence-assisted analysis of musculoskeletal imaging—A narrative review of the current state of machine learning models

Artificial intelligence-assisted analysis of musculoskeletal imaging—A narrative review of the current state of machine learning models

Artificial intelligence-assisted analysis of musculoskeletal imaging—A narrative review of the current state of machine learning models

The potential of Artificial intelligence (AI) is increasingly recognized in musculoskeletal radiology, offering solutions to challenges posed by increasing imaging volumes and fellowship trained radiologist shortages. The integration of AI is not intended to replace radiologists but to augment their capabilities, improving workflow efficiency and diagnostic accuracy. This narrative review examines the current landscape of AI applications in musculoskeletal imaging, focusing on both general-purpose multimodal models and specialized foundation models. AI has proven effective in musculoskeletal imaging, enhancing fracture detection, scoliosis assessment, and lower limb alignment analysis. In osteoarthritis, AI aids early detection by identifying subtle structural changes. AI-accelerated MRI reconstruction reduces scan times by up to 90% while maintaining diagnostic quality, improving efficiency and accessibility. Emerging multimodal models further integrate imaging with clinical data, advancing precision medicine. Technical challenges persist, particularly in addressing motion artifacts and anatomical complexity. Ethical considerations, including data privacy, algorithmic bias, and model transparency, remain crucial for responsible implementation. While challenges remain in clinical validation and implementation, the combination of broad and narrow AI models shows promise in advancing precision medicine and democratizing quality care.

Level of Evidence

Level V.

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来源期刊
CiteScore
8.10
自引率
18.40%
发文量
418
审稿时长
2 months
期刊介绍: Few other areas of orthopedic surgery and traumatology have undergone such a dramatic evolution in the last 10 years as knee surgery, arthroscopy and sports traumatology. Ranked among the top 33% of journals in both Orthopedics and Sports Sciences, the goal of this European journal is to publish papers about innovative knee surgery, sports trauma surgery and arthroscopy. Each issue features a series of peer-reviewed articles that deal with diagnosis and management and with basic research. Each issue also contains at least one review article about an important clinical problem. Case presentations or short notes about technical innovations are also accepted for publication. The articles cover all aspects of knee surgery and all types of sports trauma; in addition, epidemiology, diagnosis, treatment and prevention, and all types of arthroscopy (not only the knee but also the shoulder, elbow, wrist, hip, ankle, etc.) are addressed. Articles on new diagnostic techniques such as MRI and ultrasound and high-quality articles about the biomechanics of joints, muscles and tendons are included. Although this is largely a clinical journal, it is also open to basic research with clinical relevance. Because the journal is supported by a distinguished European Editorial Board, assisted by an international Advisory Board, you can be assured that the journal maintains the highest standards. Official Clinical Journal of the European Society of Sports Traumatology, Knee Surgery and Arthroscopy (ESSKA).
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