Romero-Laiseca Maria Alejandra, Delisle-Rodriguez Denis, Cardoso Vivianne, Gurve Dharmendra, Loterio Flavia, Posses Nascimento Jorge Henrique, Krishnan Sridhar, Frizera-Neto Anselmo, Bastos-Filho Teodiano
IEEE Trans Neural Syst Rehabil Eng. 2020 Apr;28(4):988-996. doi: 10.1109/TNSRE.2020.2974056. Epub 2020 Feb 14.
A low-cost Brain-Machine Interface (BMI) based on electroencephalography for lower-limb motor recovery of post-stroke patients is proposed here, which provides passive pedaling as feedback, when patients trigger a Mini-Motorized Exercise Bike (MMEB) by executing pedaling motor imagery (MI). This system was validated in an On-line phase by eight healthy subjects and two post-stroke patients, which felt a closed-loop commanding the MMEB due to the fast response of our BMI. It was developed using methods of low-computational cost, such as Riemannian geometry for feature extraction, Pair-Wise Feature Proximity (PWFP) for feature selection, and Linear Discriminant Analysis (LDA) for pedaling imagery recognition. The On-line phase was composed of two sessions, where each participant completed a total of 12 trials per session executing pedaling MI for triggering the MMEB. As a result, the MMEB was successfully triggered by healthy subjects for almost all trials (ACC up to 100%), while the two post-stroke patients, PS1 and PS2, achieved their best performance (ACC of 41.67% and 91.67%, respectively) in Session #2. These patients improved their latency (2.03 ± 0.42 s and 1.99 ± 0.35 s, respectively) when triggering the MMEB, and their performance suggests the hypothesis that our system may be used with chronic stroke patients for lower-limb recovery, providing neural relearning and enhancing neuroplasticity.
本文提出了一种基于脑电图的低成本脑机接口(BMI),用于中风后患者的下肢运动恢复。当患者通过执行踏板运动想象(MI)触发微型电动健身自行车(MMEB)时,该接口提供被动踏板作为反馈。该系统在在线阶段由8名健康受试者和2名中风后患者进行了验证,由于我们的BMI响应速度快,他们感觉能闭环控制MMEB。它是使用低计算成本的方法开发的,如用于特征提取的黎曼几何、用于特征选择的成对特征接近度(PWFP)以及用于踏板想象识别的线性判别分析(LDA)。在线阶段由两个环节组成,每个参与者在每个环节中总共完成12次试验,通过执行踏板MI来触发MMEB。结果,健康受试者几乎在所有试验中都成功触发了MMEB(准确率高达100%),而两名中风后患者PS1和PS2在第2环节中取得了最佳表现(准确率分别为41.67%和91.67%)。这些患者在触发MMEB时缩短了延迟时间(分别为2.03±0.42秒和1.99±0.35秒),他们的表现支持了这样一个假设,即我们的系统可用于慢性中风患者的下肢恢复,提供神经再学习并增强神经可塑性。