Artificial Intelligence and Machine Learning in Rotator Cuff Tears.

IF 2.5 4区 医学 Q2 SPORT SCIENCES
Sports Medicine and Arthroscopy Review Pub Date : 2023-09-01 Epub Date: 2023-11-17 DOI:10.1097/JSA.0000000000000371
Hugo C Rodriguez, Brandon Rust, Payton Yerke Hansen, Nicola Maffulli, Manu Gupta, Anish G Potty, Ashim Gupta
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引用次数: 0

Abstract

Rotator cuff tears (RCTs) negatively impacts patient well-being. Artificial intelligence (AI) is emerging as a promising tool in medical decision-making. Within AI, deep learning allows to autonomously solve complex tasks. This review assesses the current and potential applications of AI in the management of RCT, focusing on diagnostic utility, challenges, and future perspectives. AI demonstrates promise in RCT diagnosis, aiding clinicians in interpreting complex imaging data. Deep learning frameworks, particularly convoluted neural networks architectures, exhibit remarkable diagnostic accuracy in detecting RCTs on magnetic resonance imaging. Advanced segmentation algorithms improve anatomic visualization and surgical planning. AI-assisted radiograph interpretation proves effective in ruling out full-thickness tears. Machine learning models predict RCT diagnosis and postoperative outcomes, enhancing personalized patient care. Challenges include small data sets and classification complexities, especially for partial thickness tears. Current applications of AI in RCT management are promising yet experimental. The potential of AI to revolutionize personalized, efficient, and accurate care for RCT patients is evident. The integration of AI with clinical expertise holds potential to redefine treatment strategies and optimize patient outcomes. Further research, larger data sets, and collaborative efforts are essential to unlock the transformative impact of AI in orthopedic surgery and RCT management.

肩袖撕裂中的人工智能和机器学习。
肩袖撕裂(rct)会对患者的健康产生负面影响。人工智能(AI)正在成为医疗决策的一个有前途的工具。在人工智能中,深度学习可以自主解决复杂的任务。本文评估了人工智能在随机对照试验管理中的当前和潜在应用,重点是诊断效用、挑战和未来前景。人工智能在RCT诊断中展示了前景,帮助临床医生解释复杂的成像数据。深度学习框架,特别是卷积神经网络架构,在检测磁共振成像的随机对照试验方面表现出显著的诊断准确性。先进的分割算法提高解剖可视化和手术计划。人工智能辅助x线片解释证明可有效排除全层撕裂。机器学习模型预测RCT诊断和术后结果,增强个性化患者护理。挑战包括小数据集和分类复杂性,特别是部分厚度撕裂。目前人工智能在RCT管理中的应用前景广阔,但仍处于试验阶段。人工智能在为随机对照试验患者带来个性化、高效和准确护理方面的潜力是显而易见的。人工智能与临床专业知识的整合有可能重新定义治疗策略并优化患者结果。进一步的研究、更大的数据集和协作对于释放人工智能在骨科手术和随机对照试验管理中的变革性影响至关重要。
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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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
50
审稿时长
>12 weeks
期刊介绍: Sports Medicine and Arthroscopy Review helps physicians digest the large volume of clinical literature in sports medicine and arthroscopy, identify the most important new developments, and apply new information effectively in clinical practice. Each issue is guest-edited by an acknowledged expert and focuses on a single topic or controversy. The Guest Editor invites the leading specialists on the topic to write review articles that highlight the most important advances. This unique format makes the journal more in-depth, authoritative, and practical than most publications in this field. The journal also includes dozens of full-color and black-and-white arthroscopic images and illustrations.
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