NCAA运动员运动相关脑震荡的症状负担、认知状态和心理困扰风险的预测:来自NCAA- dod CARE联盟的研究结果

IF 5.4 2区 医学 Q3 ENGINEERING, BIOMEDICAL
Lauren L Czerniak, Gian-Gabriel P Garcia, Max W Genthe, Yueyun Xia, Mariel S Lavieri, Michael A McCrea, Thomas W McAllister, Paul F Pasquina, Spencer W Liebel, Steven P Broglio
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引用次数: 0

摘要

目的:运动相关性脑震荡(SRC)是运动医学中最复杂的损伤之一,许多运动员在其大学生涯中都会经历一次或多次的SRC。然而,从运动员大学生涯的开始到结束,尚不清楚哪种方法可以准确预测运动员报告的症状负担、认知状态和心理困扰风险的变化。目前还不清楚哪些因素(例如,脑震荡的次数)对这种变化的影响最大。方法:我们研究了来自脑震荡评估、研究和教育(CARE)联盟的3201名大学代表队运动员(男性1668名,女性1533名)。使用五种机器学习方法,我们预测了运动员在大学生涯中报告的症状负担(即运动脑震荡评估工具[SCAT]),认知状态(即脑震荡标准化评估[SAC])和心理困扰风险(即简短症状量表18 [BSI-18])的变化。结果:所有机器学习方法都优于假设均方误差没有变化的简单模型(即机器学习有助于避免大的预测误差)。我们发现,在所有感兴趣的指标(例如SCAT/SAC/BSI-18)中,初始基线评估分数是最重要的。我们还发现,当运动员在最初的基线评估中表现较差时,对得分变化的预测往往越大,越好。结论:这项研究提供了关于运动员在大学生涯中关键功能领域变化的见解,以及机器学习如何帮助提高对这种变化的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Symptom Burden, Cognitive Status, and Risk of Psychological Distress in NCAA Athletes with Sport-Related Concussion(s): Findings from the NCAA-DoD CARE Consortium.

Purpose: Sport-related concussion (SRC) is one of the most complex injuries in sports medicine, and many athletes experience one or multiple SRCs over their collegiate career. However, from the start to the end of an athlete's collegiate career, it remains unclear which methods can accurately predict the change, if any, in an athlete's reported symptom burden, cognitive status, and risk of psychological distress. It is also unclear which factors (e.g., number of concussions) have the greatest influence on this change.

Methods: We consider 3201 (1668 male, 1533 female) collegiate varsity athletes from the Concussion Assessment, Research, and Education (CARE) Consortium. Using five machine learning methods, we predict the change in athletes' reported symptom burden (i.e., Sport Concussion Assessment Tool [SCAT]), cognitive status (i.e., Standardized Assessment of Concussion [SAC]), and risk of psychological distress (i.e., Brief Symptom Inventory 18 [BSI-18]) over their collegiate careers.

Results: All machine learning methods outperform a simple model that assumes no change with respect to mean squared error (i.e., machine learning helps avoid large prediction errors). We find that the initial baseline evaluation score is of greatest importance across all metrics of interest (e.g., SCAT/SAC/BSI-18). We also find that when an athlete has a poorer performance on the initial baseline evaluation, the prediction for the change in score is often larger and change for the better.

Conclusion: This research provides insights on an athlete's change in critical areas of functioning over their collegiate career, and how machine learning can help improve the prediction of this change.

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来源期刊
Annals of Biomedical Engineering
Annals of Biomedical Engineering 工程技术-工程:生物医学
CiteScore
7.50
自引率
15.80%
发文量
212
审稿时长
3 months
期刊介绍: Annals of Biomedical Engineering is an official journal of the Biomedical Engineering Society, publishing original articles in the major fields of bioengineering and biomedical engineering. The Annals is an interdisciplinary and international journal with the aim to highlight integrated approaches to the solutions of biological and biomedical problems.
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