Harnessing Artificial Intelligence for Shoulder Ultrasonography: A Narrative Review.

Wei-Ting Wu, Yi-Chung Shu, Che-Yu Lin, Consuelo B Gonzalez-Suarez, Levent Özçakar, Ke-Vin Chang
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Abstract

Shoulder pain is a common musculoskeletal complaint requiring accurate imaging for diagnosis and management. Ultrasound is favored for its accessibility, dynamic imaging, and high-resolution soft tissue visualization. However, its operator dependency and variability in interpretation present challenges. Recent advancements in artificial intelligence (AI), particularly deep learning algorithms like convolutional neural networks, offer promising applications in musculoskeletal imaging, enhancing diagnostic accuracy and efficiency. This narrative review explores AI integration in shoulder ultrasound, emphasizing automated pathology detection, image segmentation, and outcome prediction. Deep learning models have demonstrated high accuracy in grading bicipital peritendinous effusion and discriminating rotator cuff tendon tears, while machine learning techniques have shown efficacy in predicting the success of ultrasound-guided percutaneous irrigation for rotator cuff calcification. AI-powered segmentation models have improved anatomical delineation; however, despite these advancements, challenges remain, including the need for large, well-annotated datasets, model generalizability across diverse populations, and clinical validation. Future research should optimize AI algorithms for real-time applications, integrate multimodal imaging, and enhance clinician-AI collaboration.

利用人工智能进行肩部超声检查:述评。
肩痛是一种常见的肌肉骨骼疾病,需要准确的影像学诊断和治疗。超声因其可及性、动态成像和高分辨率软组织可视化而受到青睐。然而,它的算子依赖性和解释的可变性带来了挑战。人工智能(AI)的最新进展,特别是卷积神经网络等深度学习算法,在肌肉骨骼成像方面提供了有前途的应用,提高了诊断的准确性和效率。这篇叙述性综述探讨了人工智能在肩部超声中的应用,强调了自动病理检测、图像分割和结果预测。深度学习模型在分级二头腹膜积液和鉴别肩袖肌腱撕裂方面显示出很高的准确性,而机器学习技术在预测超声引导下经皮冲洗治疗肩袖钙化的成功方面显示出有效性。人工智能分割模型改进了解剖描绘;然而,尽管取得了这些进展,挑战仍然存在,包括对大型、注释良好的数据集的需求,模型在不同人群中的推广,以及临床验证。未来的研究应该优化实时应用的人工智能算法,整合多模态成像,加强临床医生与人工智能的协作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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