Xiecheng Shao, Ryan S Chung, Jonathon M Cavaleri, Roberto Martin Del Campo-Vera, Miguel Parra, Shivani Sundaram, Selena Zhang, Ashwitha Surabhi, Ryan J McGinn, Charles Y Liu, Spencer S Kellis, Brian Lee
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Temporal decomposition through dPCA demonstrated distinct spatiotemporal patterns of high-gamma activity across movement conditions. Subsequently, LSTM networks successfully decoded these condition-specific neural signatures, achieving a classification accuracy of 72.6% ± 13.0% (mean ± SD), which significantly exceeded chance-level performance of 33.3% (p < 0.0001, n = 16 sessions). Furthermore, we identified a strong negative correlation between temporal distance of training-testing sessions and decoding performance (r = -0.868, p < 0.0001), indicating temporal difference of the neural representations. Our study highlights the potential role of deep brain structures, such as the insula, in conditional movement discrimination. We demonstrate that LSTM networks and high-gamma band analysis can advance the understanding of neural mechanisms underlying movement. 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引用次数: 0
摘要
在人工智能(AI)和机器学习的帮助下,运动脑机接口在解码神经信号以恢复运动功能方面显示出了希望。运动皮层以外的结构为运动信号提供了额外的来源。新的证据指出脑岛在运动控制中的作用,特别是手部的定向运动。在这项研究中,我们应用人工智能和机器学习技术来解码岛叶皮层高伽马波段(70-200 Hz)活动的手部定向运动。7名患有药物抵抗性癫痫的参与者接受了立体脑电图(SEEG)植入深度电极来监测脑岛的癫痫发作。SEEG数据在一个包含三种条件的提示运动任务中进行采样:左手运动、右手运动或不运动。神经信号处理集中于高伽马波段活动。采用Demixed Principal Component Analysis (dPCA)进行降维(d = 10)和时频分析特征提取。对于运动分类,我们实现了一种单层的双向长短期记忆(LSTM)架构,利用向前和向后处理时间序列的能力来优化运动方向的解码。我们的研究结果显示,在运动执行过程中,岛叶皮层存在强大的定向高伽马调制。通过dPCA进行的时间分解显示了不同运动条件下高伽马活动的不同时空模式。随后,LSTM网络成功地解码了这些条件特异性神经特征,实现了72.6%±13.0% (mean±SD)的分类准确率,显著超过了机会水平的33.3% (p
Directional hand movement can be classified from insular cortex SEEG signals using recurrent neural networks and high-gamma band features.
Motor BCIs, with the help of Artificial Intelligence (AI) and machine learning, have shown promise in decoding neural signals for restoring motor function. Structures beyond motor cortex have provided additional sources for movement signals. New evidence points to the role of the insula in motor control, specifically directional hand-movements. In this study, we applied AI and machine learning techniques to decode directional hand-movements from high-gamma band (70-200 Hz) activity in the insular cortex. Seven participants with medication-resistant epilepsy underwent stereo electroencephalographic (SEEG) implantation of depth electrodes for seizure monitoring in the insula. SEEG data were sampled throughout a cued motor task involving three conditions: left-hand movement, right-hand movement, or no movement. Neural signal processing focused on high-gamma band activity. Demixed Principal Component Analysis (dPCA) was used for dimension reduction (d = 10) and feature extraction from the time-frequency analysis. For movement classification, we implemented a bidirectional Long Short-Term Memory (LSTM) architecture with a single layer, utilizing the capacity to process temporal sequences in forward and back directions for optimal decoding of movement direction. Our findings revealed robust directional-specific high-gamma modulation within the insular cortex during motor execution. Temporal decomposition through dPCA demonstrated distinct spatiotemporal patterns of high-gamma activity across movement conditions. Subsequently, LSTM networks successfully decoded these condition-specific neural signatures, achieving a classification accuracy of 72.6% ± 13.0% (mean ± SD), which significantly exceeded chance-level performance of 33.3% (p < 0.0001, n = 16 sessions). Furthermore, we identified a strong negative correlation between temporal distance of training-testing sessions and decoding performance (r = -0.868, p < 0.0001), indicating temporal difference of the neural representations. Our study highlights the potential role of deep brain structures, such as the insula, in conditional movement discrimination. We demonstrate that LSTM networks and high-gamma band analysis can advance the understanding of neural mechanisms underlying movement. These insights may pave the way for improvements in SEEG-based BCI.
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