Department of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai, China.
Department of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai, China; State Key Laboratory of Mechanical System and Vibration, Shanghai Jiao Tong University, Shanghai, China.
J Neurosci Methods. 2024 Jan 1;401:109982. doi: 10.1016/j.jneumeth.2023.109982. Epub 2023 Oct 13.
An erroneous motion would elicit the error-related potential (ErrP) when humans monitor the behavior of the external devices. This EEG modality has been largely applied to brain-computer interface in an active or passive manner with discrete visual feedback. However, the effect of variable motion state on ErrP morphology and classification performance raises concerns when the interaction is conducted with continuous visual feedback.
In the present study, we designed a cursor control experiment. Participants monitored a continuously moving cursor to reach the target on one side of the screen. Motion state varied multiple times with two factors: (1) motion direction and (2) motion speed. The effects of these two factors on the morphological characteristics and classification performance of ErrP were analyzed. Furthermore, an offline simulation was performed to evaluate the effectiveness of the proposed extended ErrP-decoder in resolving the interference by motion direction changes.
The statistical analyses revealed that motion direction and motion speed significantly influenced the amplitude of feedback-ERN and frontal-Pe components, while only motion direction significantly affected the classification performance.
Significant deviation was found in ErrP detection utilizing classical correct-versus-erroneous event training. However, this bias can be alleviated by 16% by the extended ErrP-decoder.
The morphology and classification performance of ErrP signal can be affected by motion state variability during continuous feedback paradigms. The results enhance the comprehension of ErrP morphological components and shed light on the detection of BCI's error behavior in practical continuous control.
当人类监控外部设备的行为时,错误相关电位(ErrP)会产生错误运动。这种 EEG 模式已经在主动或被动的方式下,通过离散的视觉反馈,广泛应用于脑机接口。然而,当交互是通过连续的视觉反馈进行时,运动状态的变化对 ErrP 形态和分类性能的影响引起了关注。
在本研究中,我们设计了一个光标控制实验。参与者监控一个连续移动的光标,以到达屏幕一侧的目标。运动状态通过两个因素多次变化:(1)运动方向和(2)运动速度。分析了这两个因素对 ErrP 形态特征和分类性能的影响。此外,还进行了离线模拟,以评估所提出的扩展 ErrP 解码器在解决运动方向变化干扰方面的有效性。
统计分析表明,运动方向和运动速度显著影响反馈 ERN 和额前 Pe 成分的振幅,而只有运动方向显著影响分类性能。
在利用经典的正确与错误事件训练进行 ErrP 检测时,发现了显著的偏差。然而,通过扩展的 ErrP 解码器,可以缓解 16%的偏差。
在连续反馈范式中,运动状态的可变性会影响 ErrP 信号的形态和分类性能。研究结果增强了对 ErrP 形态成分的理解,并为实际连续控制中脑机接口错误行为的检测提供了启示。