Chen Chun-Chuan, Lee Si-Huei, Wang Wei-Jen, Lin Yu-Chen, Su Mu-Chun
Department of Biomedical Sciences and Engineering, National Central University, Taoyuan, Taiwan, R. O. C.
Department of Physical medicine and Rehabilitation, Taipei Veterans General Hospital, Taiepi, Taiwan, R. O. C.
PLoS One. 2017 Jun 14;12(6):e0178822. doi: 10.1371/journal.pone.0178822. eCollection 2017.
Rehabilitation is the main therapeutic approach for reducing poststroke functional deficits in the affected upper limb; however, significant between-patient variability in rehabilitation efficacy indicates the need to target patients who are likely to have clinically significant improvement after treatment. Many studies have determined robust predictors of recovery and treatment gains and yielded many great results using linear approachs. Evidence has emerged that the nonlinearity is a crucial aspect to study the inter-areal communication in human brains and abnormality of oscillatory activities in the motor system is linked to the pathological states. In this study, we hypothesized that combinations of linear and nonlinear (cross-frequency) network connectivity parameters are favourable biomarkers for stratifying patients for upper limb rehabilitation with increased accuracy. We identified the biomarkers by using 37 prerehabilitation electroencephalogram (EEG) datasets during a movement task through effective connectivity and logistic regression analyses. The predictive power of these biomarkers was then tested by using 16 independent datasets (i.e. construct validation). In addition, 14 right handed healthy subjects were also enrolled for comparisons. The result shows that the beta plus gamma or theta network features provided the best classification accuracy of 92%. The predictive value and the sensitivity of these biomarkers were 81.3% and 90.9%, respectively. Subcortical lesion, the time poststroke and initial Wolf Motor Function Test (WMFT) score were identified as the most significant clinical variables affecting the classification accuracy of this predictive model. Moreover, 12 of 14 normal controls were classified as having favourable recovery. In conclusion, EEG-based linear and nonlinear motor network biomarkers are robust and can help clinical decision making.
康复是减少中风后受影响上肢功能缺陷的主要治疗方法;然而,患者之间康复效果存在显著差异,这表明需要针对那些治疗后可能有临床显著改善的患者。许多研究已经确定了恢复和治疗效果的可靠预测指标,并使用线性方法取得了许多重要成果。有证据表明,非线性是研究人类大脑区域间通信的关键方面,运动系统振荡活动的异常与病理状态有关。在本研究中,我们假设线性和非线性(跨频率)网络连接参数的组合是更准确地对上肢康复患者进行分层的有利生物标志物。我们通过有效连接和逻辑回归分析,利用37个运动任务前康复期脑电图(EEG)数据集确定了这些生物标志物。然后使用16个独立数据集(即构建验证)测试了这些生物标志物的预测能力。此外,还招募了14名右利手健康受试者进行比较。结果表明,β加γ或θ网络特征提供了92%的最佳分类准确率。这些生物标志物的预测价值和敏感性分别为81.3%和90.9%。皮质下病变、中风后时间和初始沃尔夫运动功能测试(WMFT)评分被确定为影响该预测模型分类准确率的最显著临床变量。此外,14名正常对照中有12名被分类为恢复良好。总之,基于脑电图的线性和非线性运动网络生物标志物是可靠的,有助于临床决策。