Tjønndal Anne, Røsten Stian
Department of Leadership and Innovation, Faculty of Social Sciences, Nord University, Bodø, Norway.
Front Sports Act Living. 2022 Apr 20;4:837643. doi: 10.3389/fspor.2022.837643. eCollection 2022.
Sports injury prevention is an important part of the athlete welfare and safeguarding research field. In sports injury prevention, sport-related concussion (SRC) has proved to be one of the most difficult and complex injuries to manage in terms of prevention, diagnosis, classification, treatment and rehabilitation. SRC can cause long-term health issues and is a commonly reported injury in both adult and youth athletes around the world. Despite increased knowledge of the prevalence of SRC, very few tools are available for diagnosing SRC in athletic settings. Recent technological innovations have resulted in different machine learning and deep learning methodologies being tested to improve the management of this complex sports injury. The purpose of this article is to summarize and map the existing research literature on the use of machine learning in the management of SRC, ascertain where there are gaps in the existing research and identify recommendations for future research. This is explored through a scoping review. A systematic search in the three electronic databases SPORTDiscus, PubMed and Scopus identified an initial 522 studies, of which 24 were included in the final review, the majority of which focused on machine learning for the prediction and prevention of SRC ( = 10), or machine learning for the diagnosis and classification of SRC ( = 11). Only 3 studies explored machine learning approaches for the treatment and rehabilitation of SRC. A main finding is that current research highlights promising practical uses (e.g., more accurate and rapid injury assessment or return-to-sport participation criteria) of machine learning in the management of SRC. The review also revealed a narrow research focus in the existing literature. As current research is primarily conducted on male adolescents or adults from team sports in North America there is an urgent need to include wider demographics in more diverse samples and sports contexts in the machine learning algorithms. If research datasets continue to be based on narrow samples of athletes, the development of any new diagnostic and predictive tools for SRC emerging from this research will be at risk. Today, these risks appear to mainly affect the health and safety of female athletes.
运动损伤预防是运动员福利与保障研究领域的重要组成部分。在运动损伤预防方面,与运动相关的脑震荡(SRC)已被证明是在预防、诊断、分类、治疗和康复方面最难管理且最复杂的损伤之一。SRC会导致长期健康问题,是全球成年和青少年运动员中常见的报告损伤。尽管对SRC的患病率有了更多了解,但在体育环境中用于诊断SRC的工具却很少。最近的技术创新导致不同的机器学习和深度学习方法被测试,以改善对这种复杂运动损伤的管理。本文的目的是总结和梳理关于机器学习在SRC管理中的现有研究文献,确定现有研究中的差距,并为未来研究提出建议。这通过范围综述进行探讨。在三个电子数据库SPORTDiscus、PubMed和Scopus中进行的系统检索最初识别出522项研究,其中24项被纳入最终综述,其中大多数研究聚焦于用于SRC预测和预防的机器学习(n = 10),或用于SRC诊断和分类的机器学习(n = 11)。只有3项研究探索了用于SRC治疗和康复的机器学习方法。一个主要发现是,当前研究突出了机器学习在SRC管理中的有前景的实际用途(例如,更准确和快速的损伤评估或重返运动参与标准)。该综述还揭示了现有文献中研究重点狭窄。由于当前研究主要针对北美团队运动中的男性青少年或成年人,迫切需要在更多样化的样本和运动背景中纳入更广泛的人口统计数据到机器学习算法中。如果研究数据集继续基于狭窄的运动员样本,那么从该研究中产生的任何用于SRC的新诊断和预测工具的开发都将面临风险。如今,这些风险似乎主要影响女性运动员的健康和安全。