ARiEAL Research Centre, McMaster University, Hamilton, Canada.
School of Biomedical Engineering, McMaster University, Hamilton, Canada.
Sci Rep. 2019 Nov 22;9(1):17341. doi: 10.1038/s41598-019-53751-9.
Concussion has been shown to leave the afflicted with significant cognitive and neurobehavioural deficits. The persistence of these deficits and their link to neurophysiological indices of cognition, as measured by event-related potentials (ERP) using electroencephalography (EEG), remains restricted to population level analyses that limit their utility in the clinical setting. In the present paper, a convolutional neural network is extended to capitalize on characteristics specific to EEG/ERP data in order to assess for post-concussive effects. An aggregated measure of single-trial performance was able to classify accurately (85%) between 26 acutely to post-acutely concussed participants and 28 healthy controls in a stratified 10-fold cross-validation design. Additionally, the model was evaluated in a longitudinal subsample of the concussed group to indicate a dissociation between the progression of EEG/ERP and that of self-reported inventories. Concordant with a number of previous studies, symptomatology was found to be uncorrelated to EEG/ERP results as assessed with the proposed models. Our results form a first-step towards the clinical integration of neurophysiological results in concussion management and motivate a multi-site validation study for a concussion assessment tool in acute and post-acute cases.
脑震荡会导致患者出现明显的认知和神经行为缺陷。这些缺陷的持续存在及其与认知的神经生理指标的联系,如通过脑电图(EEG)的事件相关电位(ERP)来测量,仍然仅限于人群水平的分析,这限制了它们在临床环境中的应用。在本文中,扩展了卷积神经网络以利用 EEG/ERP 数据的特点,以便评估脑震荡后的影响。在分层的 10 折交叉验证设计中,单次试验表现的综合测量能够准确地区分 26 名急性至亚急性脑震荡参与者和 28 名健康对照组(准确率为 85%)。此外,该模型在脑震荡组的纵向亚组中进行了评估,以表明 EEG/ERP 的进展与自我报告的量表的进展之间存在差异。与许多先前的研究一致,症状学被发现与使用所提出的模型评估的 EEG/ERP 结果无关。我们的研究结果为脑震荡管理中神经生理结果的临床整合迈出了第一步,并为急性和亚急性病例的脑震荡评估工具的多中心验证研究提供了动力。