Yi Paul H, Garner Hillary W, Hirschmann Anna, Jacobson Jon A, Omoumi Patrick, Oh Kangrok, Zech John R, Lee Young Han
University of Maryland Medical Intelligent Imaging Center, University of Maryland School of Medicine, Baltimore, MD.
Department of Diagnostic Radiology and Nuclear Medicine, University of Maryland School of Medicine, Baltimore, MD.
AJR Am J Roentgenol. 2024 Mar;222(3):e2329530. doi: 10.2214/AJR.23.29530. Epub 2023 Jul 12.
Artificial intelligence (AI) is increasingly used in clinical practice for musculoskeletal imaging tasks, such as disease diagnosis and image reconstruction. AI applications in musculoskeletal imaging have focused primarily on radiography, CT, and MRI. Although musculoskeletal ultrasound stands to benefit from AI in similar ways, such applications have been relatively underdeveloped. In comparison with other modalities, ultrasound has unique advantages and disadvantages that must be considered in AI algorithm development and clinical translation. Challenges in developing AI for musculoskeletal ultrasound involve both clinical aspects of image acquisition and practical limitations in image processing and annotation. Solutions from other radiology subspecialties (e.g., crowdsourced annotations coordinated by professional societies), along with use cases (most commonly rotator cuff tendon tears and palpable soft-tissue masses), can be applied to musculoskeletal ultrasound to help develop AI. To facilitate creation of high-quality imaging datasets for AI model development, technologists and radiologists should focus on increasing uniformity in musculoskeletal ultrasound performance and increasing annotations of images for specific anatomic regions. This Expert Panel Narrative Review summarizes available evidence regarding AI's potential utility in musculoskeletal ultrasound and challenges facing its development. Recommendations for future AI advancement and clinical translation in musculoskeletal ultrasound are discussed.
人工智能(AI)在临床实践中越来越多地用于肌肉骨骼成像任务,如疾病诊断和图像重建。AI在肌肉骨骼成像中的应用主要集中在X线摄影、CT和MRI上。尽管肌肉骨骼超声也能以类似方式从AI中受益,但此类应用相对不够发达。与其他成像方式相比,超声具有独特的优缺点,在AI算法开发和临床转化中必须予以考虑。开发用于肌肉骨骼超声的AI面临的挑战既涉及图像采集的临床方面,也涉及图像处理和标注的实际限制。其他放射学子专业的解决方案(例如,由专业协会协调的众包标注)以及用例(最常见的是肩袖肌腱撕裂和可触及的软组织肿块)可应用于肌肉骨骼超声,以帮助开发AI。为便于创建用于AI模型开发的高质量成像数据集,技术人员和放射科医生应专注于提高肌肉骨骼超声性能的一致性,并增加特定解剖区域图像的标注。本专家小组叙述性综述总结了关于AI在肌肉骨骼超声中的潜在效用及其发展面临挑战的现有证据。文中还讨论了肌肉骨骼超声未来AI进展和临床转化的建议。