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优化脑震荡护理寻求:使用机器学习预测延迟性脑震荡报告。

Optimizing Concussion Care Seeking: Using Machine Learning to Predict Delayed Concussion Reporting.

机构信息

Center for Child Health, Behavior, and Development, Seattle Children's Research Institute & Department of Pediatrics, University of Washington, Seattle, Washington, USA.

Investigation performed at the University of Georgia, Athens, Georgia, USA.

出版信息

Am J Sports Med. 2024 Jul;52(9):2372-2383. doi: 10.1177/03635465241259455.

Abstract

BACKGROUND

Early medical attention after concussion may minimize symptom duration and burden; however, many concussions are undiagnosed or have a delay in diagnosis after injury. Many concussion symptoms (eg, headache, dizziness) are not visible, meaning that early identification is often contingent on individuals reporting their injury to medical staff. A fundamental understanding of the types and levels of factors that explain when concussions are reported can help identify promising directions for intervention.

PURPOSE

To identify individual and institutional factors that predict immediate (vs delayed) injury reporting.

STUDY DESIGN

Case-control study; Level of evidence, 3.

METHODS

This study was a secondary analysis of data from the Concussion Assessment, Research and Education (CARE) Consortium study. The sample included 3213 collegiate athletes and military service academy cadets who were diagnosed with a concussion during the study period. Participants were from 27 civilian institutions and 3 military institutions in the United States. Machine learning techniques were used to build models predicting who would report an injury immediately after a concussive event (measured by an athletic trainer denoting the injury as being reported "immediately" or "at a delay"), including both individual athlete/cadet and institutional characteristics.

RESULTS

In the sample as a whole, combining individual factors enabled prediction of reporting immediacy, with mean accuracies between 55.8% and 62.6%, depending on classifier type and sample subset; adding institutional factors improved reporting prediction accuracies by 1 to 6 percentage points. At the individual level, injury-related altered mental status and loss of consciousness were most predictive of immediate reporting, which may be the result of observable signs leading to the injury report being externally mediated. At the institutional level, important attributes included athletic department annual revenue and ratio of athletes to athletic trainers.

CONCLUSION

Further study is needed on the pathways through which institutional decisions about resource allocation, including decisions about sports medicine staffing, may contribute to reporting immediacy. More broadly, the relatively low accuracy of the machine learning models tested suggests the importance of continued expansion in how reporting is understood and facilitated.

摘要

背景

在脑震荡后尽早接受医学治疗可能会减少症状持续时间和负担;然而,许多脑震荡患者未被诊断出,或在受伤后存在诊断延迟。许多脑震荡症状(例如头痛、头晕)是不可见的,这意味着早期识别通常取决于个人向医务人员报告其受伤情况。对解释何时报告脑震荡的各种因素的类型和水平有一个基本的了解,可以帮助确定有希望的干预方向。

目的

确定个体和机构因素,预测即时(与延迟)报告损伤。

研究设计

病例对照研究;证据水平,3 级。

方法

本研究是对 Concussion Assessment,Research and Education(CARE)Consortium 研究数据的二次分析。该样本包括在研究期间被诊断患有脑震荡的 3213 名大学生运动员和军事院校学员。参与者来自美国的 27 个民用机构和 3 个军事机构。机器学习技术被用于构建预测谁会在脑震荡事件后立即报告损伤的模型(由运动训练员表示损伤“立即”或“延迟”报告),包括个体运动员/学员和机构特征。

结果

在整个样本中,结合个体因素可以预测报告的及时性,根据分类器类型和样本子集,平均准确率在 55.8%至 62.6%之间;添加机构因素可将报告预测准确率提高 1 至 6 个百分点。在个体层面上,与损伤相关的精神状态改变和意识丧失是最能预测即时报告的因素,这可能是由于可见的损伤报告导致了外部介导。在机构层面上,重要的属性包括体育部年度收入和运动员与运动训练员的比例。

结论

需要进一步研究机构关于资源分配的决策(包括运动医学人员配置决策)的途径,这些决策可能会影响报告的及时性。更广泛地说,测试的机器学习模型的准确性相对较低,这表明需要继续扩展对报告的理解和促进方式。

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