Kentucky Spinal Cord Injury Research Center, University of Louisville, Louisville, Kentucky, USA.
Department of Electrical and Computer Engineering, University of Louisville, Louisville, Kentucky, USA.
Sci Rep. 2019 Oct 9;9(1):14474. doi: 10.1038/s41598-019-50938-y.
The appropriate selection of individual-specific spinal cord epidural stimulation (scES) parameters is crucial to re-enable independent standing with self-assistance for balance in individuals with chronic, motor complete spinal cord injury, which is a key achievement toward the recovery of functional mobility. To date, there are no available algorithms that contribute to the selection of scES parameters for facilitating standing in this population. Here, we introduce a novel framework for EMG data processing that implements spectral analysis by continuous wavelet transform and machine learning methods for characterizing epidural stimulation-promoted EMG activity resulting in independent standing. Analysis of standing data collected from eleven motor complete research participants revealed that independent standing was promoted by EMG activity characterized by lower median frequency, lower variability of median frequency, lower variability of activation pattern, lower variability of instantaneous maximum power, and higher total power. Additionally, the high classification accuracy of assisted and independent standing allowed the development of a prediction algorithm that can provide feedback on the effectiveness of muscle-specific activation for standing promoted by the tested scES parameters. This framework can support researchers and clinicians during the process of selection of epidural stimulation parameters for standing motor rehabilitation.
对于慢性完全性脊髓损伤患者,选择个体化的脊髓硬膜外刺激(scES)参数对于重新实现自我辅助独立站立和平衡至关重要,这是恢复功能性移动能力的关键成就。迄今为止,尚无可用的算法可以帮助选择 scES 参数以促进该人群站立。在这里,我们引入了一种新的 EMG 数据处理框架,该框架通过连续小波变换实现了频谱分析,并采用机器学习方法来描述硬膜外刺激促进的 EMG 活动,从而实现独立站立。对 11 名完全运动研究参与者的站立数据进行分析,结果表明,EMG 活动的特征是中位频率较低、中位频率变异性较低、激活模式变异性较低、瞬时最大功率变异性较低和总功率较高,从而促进了独立站立。此外,辅助和独立站立的高分类准确性允许开发一种预测算法,该算法可以为测试的 scES 参数促进的站立肌肉特异性激活的有效性提供反馈。该框架可以在选择硬膜外刺激参数进行站立运动康复的过程中为研究人员和临床医生提供支持。