Musat Carmina Liana, Mereuta Claudiu, Nechita Aurel, Tutunaru Dana, Voipan Andreea Elena, Voipan Daniel, Mereuta Elena, Gurau Tudor Vladimir, Gurău Gabriela, Nechita Luiza Camelia
Faculty of Medicine and Pharmacy, 'Dunarea de Jos' University of Galati, 800008 Galati, Romania.
Faculty of Physical Education and Sport, 'Dunarea de Jos' University of Galati, 800008 Galati, Romania.
Diagnostics (Basel). 2024 Nov 10;14(22):2516. doi: 10.3390/diagnostics14222516.
This review provides a comprehensive analysis of the transformative role of artificial intelligence (AI) in predicting and preventing sports injuries across various disciplines. By exploring the application of machine learning (ML) and deep learning (DL) techniques, such as random forests (RFs), convolutional neural networks (CNNs), and artificial neural networks (ANNs), this review highlights AI's ability to analyze complex datasets, detect patterns, and generate predictive insights that enhance injury prevention strategies. AI models improve the accuracy and reliability of injury risk assessments by tailoring prevention strategies to individual athlete profiles and processing real-time data. A literature review was conducted through searches in PubMed, Google Scholar, Science Direct, and Web of Science, focusing on studies from 2014 to 2024 and using keywords such as 'artificial intelligence', 'machine learning', 'sports injury', and 'risk prediction'. While AI's predictive power supports both team and individual sports, its effectiveness varies based on the unique data requirements and injury risks of each, with team sports presenting additional complexity in data integration and injury tracking across multiple players. This review also addresses critical issues such as data quality, ethical concerns, privacy, and the need for transparency in AI applications. By shifting the focus from reactive to proactive injury management, AI technologies contribute to enhanced athlete safety, optimized performance, and reduced human error in medical decisions. As AI continues to evolve, its potential to revolutionize sports injury prediction and prevention promises further advancements in athlete health and performance while addressing current challenges.
本综述全面分析了人工智能(AI)在预测和预防各学科运动损伤方面的变革性作用。通过探讨机器学习(ML)和深度学习(DL)技术的应用,如随机森林(RF)、卷积神经网络(CNN)和人工神经网络(ANN),本综述突出了AI分析复杂数据集、检测模式以及生成预测性见解以加强损伤预防策略的能力。AI模型通过根据运动员个人资料定制预防策略并处理实时数据,提高了损伤风险评估的准确性和可靠性。通过在PubMed、谷歌学术、科学Direct和科学网中进行检索,开展了一项文献综述,重点关注2014年至2024年的研究,并使用了“人工智能”、“机器学习”、“运动损伤”和“风险预测”等关键词。虽然AI的预测能力对团队运动和个人运动都有支持作用,但其有效性因各自独特的数据要求和损伤风险而异,团队运动在跨多个运动员的数据整合和损伤跟踪方面呈现出额外的复杂性。本综述还讨论了数据质量、伦理问题、隐私以及AI应用中透明度需求等关键问题。通过将重点从反应性损伤管理转向主动性损伤管理,AI技术有助于提高运动员安全性、优化表现并减少医疗决策中的人为错误。随着AI不断发展,其在革新运动损伤预测和预防方面的潜力有望在解决当前挑战的同时,在运动员健康和表现方面取得进一步进展。