Yates Louise C, Yates Elliot, Li Xuanxuan, Lu Yiping, Yakoub Kamal, Davies David, Belli Antonio, Sawlani Vijay
Department of Radiology, Worcester Acute Hospitals NHS Trust, Worcester, UK.
Department of Anaesthesia, Worcestershire Acute Hospitals NHS Trust, Worcester, UK.
BMJ Open Sport Exerc Med. 2025 Mar 24;11(1):e002090. doi: 10.1136/bmjsem-2024-002090. eCollection 2025.
Sportspeople suffering from mild traumatic brain injury (mTBI) who return prematurely to sport are at an increased risk of delayed recovery, repeat concussion events and, in the longer-term, the development of chronic traumatic encephalopathy. Therefore, determining the appropriate recovery time, without unnecessarily delaying return to sport, is paramount at a professional/semi-professional level, yet notoriously difficult to predict.
To use machine learning to develop a multivariate model for the prediction of concussion recovery in sportspeople.
Demographics, injury history, Sport Concussion Assessment Tool fifth edition questionnaire and MRI head reports were collected for sportspeople who suffered mTBI and were referred to a tertiary university hospital in the West Midlands over 3 years. Random forest (RF) machine learning algorithms were trained and tuned on a 90% outcome-balanced corpus subset, with subsequent validation testing on the previously unseen 10% subset for binary prediction of greater than five missed sporting games. Confusion matrices and receiver operator curves were used to determine model discrimination.
375 sportspeople were included. A final composite model accuracy of 94.6% based on the unseen testing subset was obtained, yielding a sensitivity of 100% and specificity of 93.8% with a positive predictive value of 71.4% and a negative predictive value of 100%. The area under the curve was 96.3%.
In this large single-centre cohort study, a composite RF machine learning algorithm demonstrated high performance in predicting sporting games missed post-mTBI injury. Validation of this novel model on larger external datasets is therefore warranted.
ISRCTN16974791.
轻度创伤性脑损伤(mTBI)的运动员过早重返运动,延迟恢复、再次发生脑震荡事件的风险会增加,从长远来看,还会增加慢性创伤性脑病的发病风险。因此,在专业/半专业层面,确定适当的恢复时间,同时又不过度延迟重返运动,至关重要,但这很难预测。
利用机器学习开发一个多变量模型,用于预测运动员脑震荡的恢复情况。
收集了3年多来因mTBI被转诊至西米德兰兹郡一家三级大学医院的运动员的人口统计学信息、损伤史、运动脑震荡评估工具第五版问卷以及头部MRI报告。随机森林(RF)机器学习算法在90%结果平衡的语料库子集上进行训练和调整,随后在之前未见过的10%子集上进行验证测试,以对超过五场错过的体育比赛进行二元预测。使用混淆矩阵和受试者工作特征曲线来确定模型的辨别力。
纳入了375名运动员。基于未见过的测试子集,最终复合模型的准确率为94.6%,灵敏度为100%,特异度为93.8%,阳性预测值为71.4%,阴性预测值为100%。曲线下面积为96.3%。
在这项大型单中心队列研究中,一种复合RF机器学习算法在预测mTBI损伤后错过的体育比赛方面表现出高性能。因此,有必要在更大的外部数据集上对这个新模型进行验证。
ISRCTN16974791。