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使用临床数据进行机器学习以预测与运动相关的脑震荡康复情况。

Machine learning to predict sports-related concussion recovery using clinical data.

机构信息

School of Biomedical Informatics, The University of Texas Health Science Center at Houston (UTHealth), Houston, TX, USA.

Department of Epidemiology, Human Genetics, and Environmental Sciences, The University of Texas Health Science Center at Houston (UTHealth), Dallas, TX, USA; Children's Health and The University of Texas Health Science Center at Houston (UTHealth), Dallas, TX, USA; Children's Health Andrews Institute for Orthopaedics and Sports Medicine, Plano, TX, USA.

出版信息

Ann Phys Rehabil Med. 2022 Jun;65(4):101626. doi: 10.1016/j.rehab.2021.101626. Epub 2022 Feb 14.

Abstract

OBJECTIVES

Sport-related concussions (SRCs) are a concern for high school athletes. Understanding factors contributing to SRC recovery time may improve clinical management. However, the complexity of the many clinical measures of concussion data precludes many traditional methods. This study aimed to answer the question, what is the utility of modeling clinical concussion data using machine-learning algorithms for predicting SRC recovery time and protracted recovery?

METHODS

This was a retrospective case series of participants aged 8 to 18 years with a diagnosis of SRC. A 6-part measure was administered to assess pre-injury risk factors, initial injury severity, and post-concussion symptoms, including the Vestibular Ocular Motor Screening (VOMS) measure, King-Devick Test and C3 Logix Trails Test data. These measures were used to predict recovery time (days from injury to full medical clearance) and binary protracted recovery (recovery time > 21 days) according to several sex-stratified machine-learning models. The ability of the models to discriminate protracted recovery was compared to a human-driven model according to the area under the receiver operating characteristic curve (AUC).

RESULTS

For 293 males (mean age 14.0 years) and 362 females (mean age 13.7 years), the median (interquartile range) time to recover from an SRC was 26 (18-39) and 21 (14-31) days, respectively. Among 9 machine-learning models trained, the gradient boosting on decision-tree algorithms achieved the best performance to predict recovery time and protracted recovery in males and females. The models' performance improved when VOMS data were used in conjunction with the King-Devick Test and C3 Logix Trails Test data. For males and females, the AUC was 0.84 and 0.78 versus 0.74 and 0.73, respectively, for statistical models for predicting protracted recovery.

CONCLUSIONS

Machine-learning models were able to manage the complexity of the vestibular-ocular motor system data. These results demonstrate the clinical utility of machine-learning models to inform prognostic evaluation for SRC recovery time and protracted recovery.

摘要

目的

与运动相关的脑震荡(SRC)是高中生关注的问题。了解导致 SRC 恢复时间的因素可能有助于改善临床管理。然而,许多脑震荡数据的临床指标的复杂性排除了许多传统方法。本研究旨在回答这个问题,即使用机器学习算法对临床脑震荡数据进行建模对于预测 SRC 恢复时间和延长恢复时间是否有用?

方法

这是一项回顾性病例系列研究,参与者为 8 至 18 岁,诊断为 SRC。对 6 项指标进行评估,以评估受伤前的危险因素、初始损伤严重程度和脑震荡后症状,包括前庭眼动筛查(VOMS)、金-德文测试和 C3 逻辑测试数据。这些指标用于根据几个性别分层的机器学习模型预测恢复时间(从受伤到完全医疗清除的天数)和二进制延长恢复(恢复时间>21 天)。根据接受者操作特征曲线(AUC)下的面积,将模型预测延长恢复的能力与人类驱动的模型进行比较。

结果

对于 293 名男性(平均年龄 14.0 岁)和 362 名女性(平均年龄 13.7 岁),SRC 恢复的中位数(四分位距)分别为 26(18-39)和 21(14-31)天。在训练的 9 个机器学习模型中,梯度提升决策树算法在预测男性和女性的恢复时间和延长恢复方面表现最佳。当 VOMS 数据与金-德文测试和 C3 逻辑测试数据一起使用时,模型的性能得到了提高。对于男性和女性,预测延长恢复的统计学模型的 AUC 分别为 0.84 和 0.78,而 0.74 和 0.73。

结论

机器学习模型能够处理前庭眼动系统数据的复杂性。这些结果表明,机器学习模型在为 SRC 恢复时间和延长恢复提供预后评估方面具有临床应用价值。

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