Neuroscience and Neuroengineering Research Lab., Biomedical Engineering Department, School of Electrical Engineering, Iran University of Science and Technology (IUST), Tehran, Iran.
BMC Bioinformatics. 2021 Jan 22;22(1):26. doi: 10.1186/s12859-020-03953-0.
Brain Computer Interfaces (BCIs) translate the activity of the nervous system to a control signal which is interpretable for an external device. Using continuous motor BCIs, the user will be able to control a robotic arm or a disabled limb continuously. In addition to decoding the target position, accurate decoding of force amplitude is essential for designing BCI systems capable of performing fine movements like grasping. In this study, we proposed a stack Long Short-Term Memory (LSTM) neural network which was able to accurately predict the force amplitude applied by three freely moving rats using their Local Field Potential (LFP) signal.
The performance of the network was compared with the Partial Least Square (PLS) method. The average coefficient of correlation (r) for three rats were 0.67 in PLS and 0.73 in LSTM based network and the coefficient of determination ([Formula: see text]) were 0.45 and 0.54 for PLS and LSTM based network, respectively. The network was able to accurately decode the force values without explicitly using time lags in the input features. Additionally, the proposed method was able to predict zero-force values very accurately due to benefiting from an output nonlinearity.
The proposed stack LSTM structure was able to predict applied force from the LFP signal accurately. In addition to higher accuracy, these results were achieved without explicitly using time lags in input features which can lead to more accurate and faster BCI systems.
脑机接口(BCI)将神经系统的活动转化为可被外部设备解读的控制信号。使用连续运动 BCI,用户将能够连续控制机械臂或残疾肢体。除了解码目标位置外,准确解码力幅值对于设计能够执行精细运动(如抓握)的 BCI 系统至关重要。在这项研究中,我们提出了一种堆叠长短期记忆(LSTM)神经网络,该网络能够使用三只自由移动的大鼠的局部场电位(LFP)信号准确地预测所施加的力幅值。
我们将网络的性能与偏最小二乘法(PLS)进行了比较。对于三只大鼠,网络的平均相关系数(r)在 PLS 中为 0.67,在基于 LSTM 的网络中为 0.73,而决定系数([Formula: see text])在 PLS 中为 0.45,在基于 LSTM 的网络中为 0.54。该网络能够准确地解码力值,而无需在输入特征中显式使用时间延迟。此外,由于受益于输出非线性,该方法能够非常准确地预测零力值。
所提出的堆叠 LSTM 结构能够从 LFP 信号中准确地预测所施加的力。除了更高的准确性之外,这些结果是在不显式使用输入特征中的时间延迟的情况下实现的,这可以使 BCI 系统更准确、更快。