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神经网络与机器学习算法在 EEG 步态解码中的实证比较。

An empirical comparison of neural networks and machine learning algorithms for EEG gait decoding.

机构信息

Non-Invasive Brain Machine Interface Laboratory, Electrical and Computer Engineering Department, Houston, 77004, USA.

出版信息

Sci Rep. 2020 Mar 9;10(1):4372. doi: 10.1038/s41598-020-60932-4.

Abstract

Previous studies of Brain Computer Interfaces (BCI) based on scalp electroencephalography (EEG) have demonstrated the feasibility of decoding kinematics for lower limb movements during walking. In this computational study, we investigated offline decoding analysis with different models and conditions to assess how they influence the performance and stability of the decoder. Specifically, we conducted three computational decoding experiments that investigated decoding accuracy: (1) based on delta band time-domain features, (2) when downsampling data, (3) of different frequency band features. In each experiment, eight different decoder algorithms were compared including the current state-of-the-art. Different tap sizes (sample window sizes) were also evaluated for a real-time applicability assessment. A feature of importance analysis was conducted to ascertain which features were most relevant for decoding; moreover, the stability to perturbations was assessed to quantify the robustness of the methods. Results indicated that generally the Gated Recurrent Unit (GRU) and Quasi Recurrent Neural Network (QRNN) outperformed other methods in terms of decoding accuracy and stability. Previous state-of-the-art Unscented Kalman Filter (UKF) still outperformed other decoders when using smaller tap sizes, with fast convergence in performance, but occurred at a cost to noise vulnerability. Downsampling and the inclusion of other frequency band features yielded overall improvement in performance. The results suggest that neural network-based decoders with downsampling or a wide range of frequency band features could not only improve decoder performance but also robustness with applications for stable use of BCIs.

摘要

先前基于头皮脑电图 (EEG) 的脑机接口 (BCI) 研究已经证明了在行走时解码下肢运动运动学的可行性。在这项计算研究中,我们研究了不同模型和条件下的离线解码分析,以评估它们如何影响解码器的性能和稳定性。具体来说,我们进行了三个计算解码实验来研究解码准确性:(1)基于 delta 频带时域特征,(2)数据下采样时,(3)不同频带特征。在每个实验中,比较了八种不同的解码器算法,包括当前最先进的算法。还评估了不同的 tap 大小(样本窗口大小),以进行实时适用性评估。进行了特征重要性分析,以确定哪些特征对解码最相关;此外,还评估了对干扰的稳定性,以量化方法的稳健性。结果表明,通常门控循环单元 (GRU) 和准循环神经网络 (QRNN) 在解码准确性和稳定性方面优于其他方法。以前的最先进的无迹卡尔曼滤波器 (UKF) 在使用较小的 tap 大小时仍然优于其他解码器,具有快速的性能收敛,但以对噪声的脆弱性为代价。下采样和包含其他频带特征总体上提高了性能。结果表明,具有下采样或宽频带特征的基于神经网络的解码器不仅可以提高解码器的性能,还可以提高鲁棒性,适用于 BCI 的稳定使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a53/7062700/9c26ccafaeaf/41598_2020_60932_Fig1_HTML.jpg

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