Blanco-Diaz Cristian Felipe, Guerrero-Mendez Cristian David, de Andrade Rafhael Milanezi, Badue Claudine, De Souza Alberto Ferreira, Delisle-Rodriguez Denis, Bastos-Filho Teodiano
Postgraduate Program in Electrical Engineering, Federal University of Espirito Santo, Vitoria, Brazil.
Graduate Program in Mechanical Engineering, Federal University of Espirito Santo, Vitoria, Brazil.
Med Biol Eng Comput. 2024 Dec;62(12):3763-3779. doi: 10.1007/s11517-024-03147-3. Epub 2024 Jul 19.
Stroke is a neurological condition that usually results in the loss of voluntary control of body movements, making it difficult for individuals to perform activities of daily living (ADLs). Brain-computer interfaces (BCIs) integrated into robotic systems, such as motorized mini exercise bikes (MMEBs), have been demonstrated to be suitable for restoring gait-related functions. However, kinematic estimation of continuous motion in BCI systems based on electroencephalography (EEG) remains a challenge for the scientific community. This study proposes a comparative analysis to evaluate two artificial neural network (ANN)-based decoders to estimate three lower-limb kinematic parameters: x- and y-axis position of the ankle and knee joint angle during pedaling tasks. Long short-term memory (LSTM) was used as a recurrent neural network (RNN), which reached Pearson correlation coefficient (PCC) scores close to 0.58 by reconstructing kinematic parameters from the EEG features on the delta band using a time window of 250 ms. These estimates were evaluated through kinematic variance analysis, where our proposed algorithm showed promising results for identifying pedaling and rest periods, which could increase the usability of classification tasks. Additionally, negative linear correlations were found between pedaling speed and decoder performance, thereby indicating that kinematic parameters between slower speeds may be easier to estimate. The results allow concluding that the use of deep learning (DL)-based methods is feasible for the estimation of lower-limb kinematic parameters during pedaling tasks using EEG signals. This study opens new possibilities for implementing controllers most robust for MMEBs and BCIs based on continuous decoding, which may allow for maximizing the degrees of freedom and personalized rehabilitation.
中风是一种神经疾病,通常会导致身体运动的自主控制能力丧失,使个体难以进行日常生活活动(ADL)。集成到机器人系统中的脑机接口(BCI),如电动迷你健身自行车(MMEB),已被证明适用于恢复与步态相关的功能。然而,基于脑电图(EEG)的BCI系统中连续运动的运动学估计仍然是科学界面临的一项挑战。本研究提出了一项比较分析,以评估两种基于人工神经网络(ANN)的解码器,用于估计三个下肢运动学参数:蹬踏任务期间踝关节的x轴和y轴位置以及膝关节角度。长短期记忆(LSTM)被用作循环神经网络(RNN),通过使用250毫秒的时间窗口从δ波段的EEG特征重建运动学参数,其皮尔逊相关系数(PCC)得分接近0.58。这些估计通过运动学方差分析进行评估,我们提出的算法在识别蹬踏和休息时段方面显示出有希望的结果,这可能会提高分类任务的可用性。此外,发现蹬踏速度和解码器性能之间存在负线性相关,从而表明较慢速度下的运动学参数可能更容易估计。结果表明,使用基于深度学习(DL)的方法来估计使用EEG信号进行蹬踏任务期间的下肢运动学参数是可行的。本研究为基于连续解码实现对MMEB和BCI最稳健的控制器开辟了新的可能性,这可能允许最大化自由度和个性化康复。