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基于机器学习的脑电活动指标在辅助诊断运动员脑震荡中的验证。

Validation of a Machine Learning Brain Electrical Activity-Based Index to Aid in Diagnosing Concussion Among Athletes.

机构信息

Department of Emergency Medicine, University of Rochester School of Medicine, Rochester, New York.

Office for Sports Concussion Research, University of Arkansas, Fayetteville.

出版信息

JAMA Netw Open. 2021 Feb 1;4(2):e2037349. doi: 10.1001/jamanetworkopen.2020.37349.

Abstract

IMPORTANCE

An objective, reliable indicator of the presence and severity of concussive brain injury and of the readiness for the return to activity has the potential to reduce concussion-related disability.

OBJECTIVE

To validate the classification accuracy of a previously derived, machine learning, multimodal, brain electrical activity-based Concussion Index in an independent cohort of athletes with concussion.

DESIGN, SETTING, AND PARTICIPANTS: This prospective diagnostic cohort study was conducted at 10 clinical sites (ie, US universities and high schools) between February 4, 2017, and March 20, 2019. A cohort comprising a consecutive sample of 207 athletes aged 13 to 25 years with concussion and 373 matched athlete controls without concussion were assessed with electroencephalography, cognitive testing, and symptom inventories within 72 hours of injury, at return to play, and 45 days after return to play. Variables from the multimodal assessment were used to generate a Concussion Index at each time point. Athletes with concussion had experienced a witnessed head impact, were removed from play for 5 days or more, and had an initial Glasgow Coma Scale score of 13 to 15. Participants were excluded for known neurologic disease or history within the last year of traumatic brain injury. Athlete controls were matched to athletes with concussion for age, sex, and type of sport played.

MAIN OUTCOMES AND MEASURES

Classification accuracy of the Concussion Index at time of injury using a prespecified cutoff of 70 or less (total range, 0-100, where ≤70 indicates it is likely the individual has a concussion and >70 indicates it is likely the individual does not have a concussion).

RESULTS

Of 580 eligible participants with analyzable data, 207 had concussion (124 male participants [59.9%]; mean [SD] age, 19.4 [2.5] years), and 373 were athlete controls (187 male participants [50.1%]; mean [SD] age, 19.6 [2.2] years). The Concussion Index had a sensitivity of 86.0% (95% CI, 80.5%-90.4%), specificity of 70.8% (95% CI, 65.9%-75.4%), negative predictive value of 90.1% (95% CI, 86.1%-93.3%), positive predictive value of 62.0% (95% CI, 56.1%-67.7%), and area under receiver operator characteristic curve of 0.89. At day 0, the mean (SD) Concussion Index among athletes with concussion was significantly lower than among athletes without concussion (75.0 [14.0] vs 32.7 [27.2]; P < .001). Among athletes with concussion, there was a significant increase in the Concussion Index between day 0 and return to play, with a mean (SD) paired difference between these time points of -41.2 (27.0) (P < .001).

CONCLUSIONS AND RELEVANCE

These results suggest that the multimodal brain activity-based Concussion Index has high classification accuracy for identification of the likelihood of concussion at time of injury and may be associated with the return to control values at the time of recovery. The Concussion Index has the potential to aid in the clinical diagnosis of concussion and in the assessment of athletes' readiness to return to play.

摘要

重要性

客观、可靠地评估脑震荡的存在和严重程度以及恢复活动的准备情况,有可能减少与脑震荡相关的残疾。

目的

验证先前从脑电活动衍生的、基于机器学习的多模态脑震荡指数在具有脑震荡的运动员独立队列中的分类准确性。

设计、设置和参与者:这项前瞻性诊断队列研究于 2017 年 2 月 4 日至 2019 年 3 月 20 日在 10 个临床地点(即美国大学和高中)进行。一个连续样本的 207 名年龄在 13 至 25 岁之间的脑震荡运动员和 373 名无脑震荡的匹配运动员对照者,在受伤后 72 小时内,在返回比赛和返回比赛后 45 天,进行了脑电图、认知测试和症状量表评估。多模态评估中的变量用于在每个时间点生成脑震荡指数。脑震荡运动员经历了目击性头部撞击,被停赛 5 天或更长时间,初始格拉斯哥昏迷量表评分为 13 至 15 分。已知有神经疾病或在过去一年中有创伤性脑损伤史的参与者被排除在外。运动员对照者根据年龄、性别和所从事的运动类型与脑震荡运动员相匹配。

主要结果和测量

使用预先规定的 70 或以下(总范围为 0-100,其中≤70 表示个体很可能患有脑震荡,>70 表示个体很可能没有脑震荡)的截断值,评估脑震荡指数在受伤时的分类准确性。

结果

在 580 名具有可分析数据的合格参与者中,207 名患有脑震荡(124 名男性参与者[59.9%];平均[SD]年龄 19.4[2.5]岁),373 名是运动员对照者(187 名男性参与者[50.1%];平均[SD]年龄 19.6[2.2]岁)。脑震荡指数的敏感性为 86.0%(95%CI,80.5%-90.4%),特异性为 70.8%(95%CI,65.9%-75.4%),阴性预测值为 90.1%(95%CI,86.1%-93.3%),阳性预测值为 62.0%(95%CI,56.1%-67.7%),受试者工作特征曲线下面积为 0.89。在第 0 天,脑震荡运动员的平均(SD)脑震荡指数明显低于无脑震荡运动员(75.0[14.0]与 32.7[27.2];P < .001)。在脑震荡运动员中,脑震荡指数在第 0 天和返回比赛时有明显升高,这两个时间点之间的平均(SD)配对差异为-41.2(27.0)(P < .001)。

结论和相关性

这些结果表明,基于多模态脑活动的脑震荡指数在受伤时对脑震荡的可能性具有较高的分类准确性,并且可能与恢复时恢复到控制值有关。脑震荡指数有可能有助于脑震荡的临床诊断和运动员重返赛场的评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6b8b/7885039/5f79d3be60ca/jamanetwopen-e2037349-g001.jpg

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