Department of Neurosurgery, Mental Health and Neuroscience Research Institute, Maastricht University, Maastricht, The Netherlands.
Academic Center of Epileptology Kempenhaeghe/Maastricht University Medical Center, Maastricht, The Netherlands.
J Neural Eng. 2024 Oct 21;21(5). doi: 10.1088/1741-2552/ad851c.
Motor-related neural activity is more widespread than previously thought, as pervasive brain-wide neural correlates of motor behavior have been reported in various animal species. Brain-wide movement-related neural activity have been observed in individual brain areas in humans as well, but it is unknown to what extent global patterns exist.Here, we use a decoding approach to capture and characterize brain-wide neural correlates of movement. We recorded invasive electrophysiological data from stereotactic electroencephalographic electrodes implanted in eight epilepsy patients who performed both an executed and imagined grasping task. Combined, these electrodes cover the whole brain, including deeper structures such as the hippocampus, insula and basal ganglia. We extract a low-dimensional representation and classify movement from rest trials using a Riemannian decoder.We reveal global neural dynamics that are predictive across tasks and participants. Using an ablation analysis, we demonstrate that these dynamics remain remarkably stable under loss of information. Similarly, the dynamics remain stable across participants, as we were able to predict movement across participants using transfer learning.Our results show that decodable global motor-related neural dynamics exist within a low-dimensional space. The dynamics are predictive of movement, nearly brain-wide and present in all our participants. The results broaden the scope to brain-wide investigations, and may allow combining datasets of multiple participants with varying electrode locations or calibrationless neural decoder.
运动相关的神经活动比以前想象的更为广泛,因为在各种动物物种中都报道了普遍存在的大脑范围内与运动行为相关的神经相关性。在人类的单个脑区中也观察到了与运动相关的大脑范围的神经活动,但尚不清楚全局模式存在的程度。在这里,我们使用解码方法来捕捉和描述运动的大脑范围的神经相关性。我们记录了八位接受立体定向脑电图电极植入的癫痫患者执行执行和想象抓握任务时的侵入性电生理数据。这些电极结合在一起覆盖了整个大脑,包括更深层的结构,如海马体、脑岛和基底神经节。我们使用黎曼解码器从静息试验中提取低维表示并对运动进行分类。我们揭示了具有跨任务和参与者可预测性的全局神经动力学。通过消融分析,我们证明在信息丢失的情况下,这些动力学仍然非常稳定。同样,这些动力学在参与者之间保持稳定,因为我们能够使用迁移学习来预测参与者之间的运动。我们的结果表明,在低维空间中存在可解码的全局运动相关神经动力学。这些动力学可预测运动,几乎是全脑范围的,并且存在于我们所有的参与者中。该结果拓宽了大脑范围的研究范围,并可能允许使用不同电极位置或无校准神经解码器的多个参与者数据集进行组合。