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大脑对侧初级运动皮层以外的宏观脑动力学在运动预测中的作用。

Macroscopic brain dynamics beyond contralateral primary motor cortex for movement prediction.

机构信息

Dept. of Brain and Cognitive Sciences, Seoul National University, Seoul, Republic of Korea; Clinical Research Institute, Konkuk University Medical Center, Seoul, Republic of Korea.

Clinical Research Institute, Konkuk University Medical Center, Seoul, Republic of Korea; Research Institute of Biomedical Science and Technology, Konkuk University, Seoul, Republic of Korea.

出版信息

Neuroimage. 2024 Aug 15;297:120727. doi: 10.1016/j.neuroimage.2024.120727. Epub 2024 Jul 26.

Abstract

This study investigates the complex relationship between upper limb movement direction and macroscopic neural signals in the brain, which is critical for understanding brain-computer interfaces (BCI). Conventional BCI research has primarily focused on a local area, such as the contralateral primary motor cortex (M1), relying on the population-based decoding method with microelectrode arrays. In contrast, macroscopic approaches such as electroencephalography (EEG) and magnetoencephalography (MEG) utilize numerous electrodes to cover broader brain regions. This study probes the potential differences in the mechanisms of microscopic and macroscopic methods. It is important to determine which neural activities effectively predict movements. To investigate this, we analyzed MEG data from nine right-handed participants while performing arm-reaching tasks. We employed dynamic statistical parametric mapping (dSPM) to estimate source activity and built a decoding model composed of long short-term memory (LSTM) and a multilayer perceptron to predict movement trajectories. This model achieved a high correlation coefficient of 0.79 between actual and predicted trajectories. Subsequently, we identified brain regions sensitive to predicting movement direction using the integrated gradients (IG) method, which assesses the predictive contribution of each source activity. The resulting salience map demonstrated a distribution without significant differences across motor-related regions, including M1. Predictions based solely on M1 activity yielded a correlation coefficient of 0.42, nearly half as effective as predictions incorporating all source activities. This suggests that upper limb movements are influenced by various factors such as movement coordination, planning, body and target position recognition, and control, beyond simple muscle activity. All of the activities are needed in the decoding model using macroscopic signals. Our findings also revealed that contralateral and ipsilateral hemispheres contribute equally to movement prediction, implying that BCIs could potentially benefit patients with brain damage in the contralateral hemisphere by utilizing brain signals from the ipsilateral hemisphere. In conclusion, this study demonstrates that macroscopic activity from large brain regions significantly contributes to predicting upper limb movement. Non-invasive BCI systems would require a comprehensive collection of neural signals from multiple brain regions.

摘要

这项研究调查了上肢运动方向与大脑中宏观神经信号之间的复杂关系,这对于理解脑机接口(BCI)至关重要。传统的 BCI 研究主要集中在局部区域,如对侧初级运动皮层(M1),依赖于基于群体的微电极阵列解码方法。相比之下,脑电图(EEG)和脑磁图(MEG)等宏观方法利用大量电极覆盖更广泛的大脑区域。本研究探讨了微观和宏观方法的潜在机制差异。确定哪些神经活动可以有效地预测运动非常重要。为了研究这一点,我们分析了九名右利手参与者在执行手臂伸展任务时的 MEG 数据。我们采用动态统计参数映射(dSPM)来估计源活动,并构建了一个由长短期记忆(LSTM)和多层感知机组成的解码模型来预测运动轨迹。该模型实现了实际轨迹与预测轨迹之间的高相关系数 0.79。随后,我们使用集成梯度(IG)方法识别出对预测运动方向敏感的大脑区域,该方法评估了每个源活动的预测贡献。显著度图显示,运动相关区域(包括 M1)之间没有明显差异的分布。仅基于 M1 活动的预测得到的相关系数为 0.42,几乎是包含所有源活动的预测的一半。这表明上肢运动受到多种因素的影响,例如运动协调、计划、身体和目标位置识别以及控制,而不仅仅是肌肉活动。所有这些活动都需要在使用宏观信号的解码模型中。我们的研究结果还表明,对侧和同侧半球对等对运动预测有贡献,这意味着 BCI 可以通过利用对侧半球的大脑信号,为对侧半球受损的患者提供潜在益处。总之,这项研究表明,来自大脑大区域的宏观活动对预测上肢运动有显著贡献。非侵入性 BCI 系统需要从多个大脑区域全面收集神经信号。

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