A Machine Learning Approach to Concussion Risk Estimation Among Players Exhibiting Visible Signs in Professional Hockey

IF 9.3 1区 医学 Q1 SPORT SCIENCES Sports Medicine Pub Date : 2024-09-17 DOI:10.1007/s40279-024-02112-2
Jared M. Bruce, Kaitlin E. Riegler, Willem Meeuwisse, Paul Comper, Michael G. Hutchison, J. Scott Delaney, Ruben J. Echemendia
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Abstract

Background

The identification of concussion risk factors, such as visible signs and mechanisms of injury, improves concussion identification. Exploring individual risk factors, such as concussion history, may help to improve existing concussion risk models and algorithms.

Objectives

The primary aim of the current study was to use machine learning techniques to develop a comprehensive, prospectively coded concussion risk model in professional hockey among players exhibiting visible signs. The secondary aim was to examine whether including concussion history improves model performance.

Methods

Data from the National Hockey League (NHL) spotter program, including coded visible signs and mechanisms of injury associated with possible concussive events, were extracted from the 2018–2019 to the 2021–2022 seasons. Each unique spotter event was matched with data extracted from the medical record to determine whether the event was associated with a subsequent physician diagnosed concussion. We compared the ability of three machine learning-based approaches to identify the likelihood of physician diagnosed concussion: conditional inference tree, conditional inference random forest, and logistic regression.

Results

A total of 1563 unique events with visible signs were identified by spotters (183 leading to a concussion diagnosis). A randomly selected training sample had 1250 events (146 concussions) and the remaining set-aside test sample had 313 events (37 concussions). The obtained models performed at a high level with large effects in the training [area under the receiver operating characteristic curve (AUC) = 0.79] and set-aside test data (AUC = 0.82). Concussion history was retained in the tree and logistic regression models, with each additional prior concussion associated with a 1.32 times increased odds of concussion diagnosis.

Conclusions

We present simple tree and logistic algorithms for concussion screening and as diagnostic aids. Our results show that player concussion history can explain additional risk above and beyond that explained by visible signs and mechanisms of injury alone.

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用机器学习方法估算职业冰球运动员出现明显体征的脑震荡风险
背景识别脑震荡风险因素(如可见体征和损伤机制)可提高脑震荡识别率。本研究的主要目的是利用机器学习技术开发一种全面的、前瞻性编码的脑震荡风险模型,该模型适用于表现出明显体征的职业冰球运动员。方法从 2018-2019 至 2021-2022 赛季的美国国家曲棍球联盟(NHL)观测员计划中提取数据,包括与可能的脑震荡事件相关的编码可见体征和损伤机制。每个独特的观察者事件都与从医疗记录中提取的数据进行了匹配,以确定该事件是否与随后医生诊断的脑震荡有关。我们比较了三种基于机器学习的方法识别医生诊断为脑震荡的可能性的能力:条件推理树、条件推理随机森林和逻辑回归。随机选取的训练样本有 1250 个事件(146 例脑震荡),其余的预留测试样本有 313 个事件(37 例脑震荡)。所获得的模型在训练数据(接收者操作特征曲线下面积(AUC)= 0.79)和预留测试数据(AUC = 0.82)中具有较高的效果。在树型和逻辑回归模型中保留了脑震荡病史,每增加一次脑震荡病史,脑震荡诊断几率就会增加 1.32 倍。我们的研究结果表明,球员的脑震荡病史可以在可见体征和受伤机制所能解释的风险之外解释更多的风险。
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来源期刊
Sports Medicine
Sports Medicine 医学-运动科学
CiteScore
18.40
自引率
5.10%
发文量
165
审稿时长
6-12 weeks
期刊介绍: Sports Medicine focuses on providing definitive and comprehensive review articles that interpret and evaluate current literature, aiming to offer insights into research findings in the sports medicine and exercise field. The journal covers major topics such as sports medicine and sports science, medical syndromes associated with sport and exercise, clinical medicine's role in injury prevention and treatment, exercise for rehabilitation and health, and the application of physiological and biomechanical principles to specific sports. Types of Articles: Review Articles: Definitive and comprehensive reviews that interpret and evaluate current literature to provide rationale for and application of research findings. Leading/Current Opinion Articles: Overviews of contentious or emerging issues in the field. Original Research Articles: High-quality research articles. Enhanced Features: Additional features like slide sets, videos, and animations aimed at increasing the visibility, readership, and educational value of the journal's content. Plain Language Summaries: Summaries accompanying articles to assist readers in understanding important medical advances. Peer Review Process: All manuscripts undergo peer review by international experts to ensure quality and rigor. The journal also welcomes Letters to the Editor, which will be considered for publication.
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