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离线评估至关重要:基于肌电图的神经机器接口离线性能对实时操作影响的研究

Offline Evaluation Matters: Investigation of the Influence of Offline Performance on Real-Time Operation of Electromyography-Based Neural-Machine Interfaces.

作者信息

Hinson Robert M, Berman Joseph, Filer William, Kamper Derek, Hu Xiaogang, Huang He

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2023;31:680-689. doi: 10.1109/TNSRE.2022.3226229. Epub 2023 Feb 2.

DOI:10.1109/TNSRE.2022.3226229
PMID:37015358
Abstract

There has been a debate on the most appropriate way to evaluate electromyography (EMG)-based neural-machine interfaces (NMIs). Accordingly, this study examined whether a relationship between offline kinematic predictive accuracy (R2) and user real-time task performance while using the interface could be identified. A virtual posture-matching task was developed to evaluate motion capture-based control and myoelectric control with artificial neural networks (ANNs) trained to low (R2 ≈ 0.4), moderate (R2 ≈ 0.6), and high ( $\text {R}^{\vphantom {\text {D}^{\text {a}}}{2}} \approx 0.8$ ) offline performance levels. Twelve non-disabled subjects trained with each offline performance level decoder before evaluating final real-time posture matching performance. Moderate to strong relationships were detected between offline performance and all real-time task performance metrics: task completion percentage (r = 0.66, p < 0.001), normalized task completion time (r = -0.51, p = 0.001), path efficiency (r = 0.74, p < 0.001), and target overshoots (r = -0.79, p < 0.001). Significant improvements in each real-time task evaluation metric were also observed between the different offline performance levels. Additionally, subjects rated myoelectric controllers with higher offline performance more favorably. The results of this study support the use and validity of offline analyses for optimization of NMIs in myoelectric control research and development.

摘要

关于评估基于肌电图(EMG)的神经机器接口(NMI)的最合适方法一直存在争论。因此,本研究考察了是否能够确定离线运动学预测准确性(R2)与使用该接口时用户实时任务表现之间的关系。开发了一项虚拟姿势匹配任务,以评估基于运动捕捉的控制以及使用训练至低(R2≈0.4)、中(R2≈0.6)和高(R2≈0.8)离线性能水平的人工神经网络(ANN)进行的肌电控制。12名非残疾受试者在评估最终实时姿势匹配性能之前,分别使用每个离线性能水平的解码器进行训练。离线性能与所有实时任务性能指标之间均检测到中度至强相关性:任务完成百分比(r = 0.66,p < 0.001)、标准化任务完成时间(r = -0.51,p = 0.001)、路径效率(r = 0.74,p < 0.001)和目标超调(r = -0.79,p < 0.001)。在不同的离线性能水平之间,每个实时任务评估指标也都有显著改善。此外,受试者对离线性能较高的肌电控制器评价更高。本研究结果支持在肌电控制研发中使用离线分析来优化NMI及其有效性。

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