Sorbonne Université, Institut du Cerveau-Paris Brain Institute-ICM, CNRS, Inria, Inserm, AP-HP, Hôpital de la Pitié Salpêtrière, F-75013 Paris, France.
Sorbonne Université, Institut des Systèmes Intelligents et de Robotiques ISIR, F-75005 Paris, France.
J Neural Eng. 2024 Jul 25;21(4). doi: 10.1088/1741-2552/ad628c.
. Noninvasive brain-computer interfaces (BCIs) allow to interact with the external environment by naturally bypassing the musculoskeletal system. Making BCIs efficient and accurate is paramount to improve the reliability of real-life and clinical applications, from open-loop device control to closed-loop neurorehabilitation.. By promoting sense of agency and embodiment, realistic setups including multimodal channels of communication, such as eye-gaze, and robotic prostheses aim to improve BCI performance. However, how the mental imagery command should be integrated in those hybrid systems so as to ensure the best interaction is still poorly understood. To address this question, we performed a hybrid EEG-based BCI training involving healthy volunteers enrolled in a reach-and-grasp action operated by a robotic arm.. Showed that the hand grasping motor imagery timing significantly affects the BCI accuracy evolution as well as the spatiotemporal brain dynamics. Larger accuracy improvement was obtained when motor imagery is performed just after the robot reaching, as compared to before or during the movement. The proximity with the subsequent robot grasping favored intentional binding, led to stronger motor-related brain activity, and primed the ability of sensorimotor areas to integrate information from regions implicated in higher-order cognitive functions.. Taken together, these findings provided fresh evidence about the effects of intentional binding on human behavior and cortical network dynamics that can be exploited to design a new generation of efficient brain-machine interfaces.
. 非侵入式脑机接口 (BCI) 通过自然绕过肌肉骨骼系统,允许与外部环境进行交互。为了提高真实环境和临床应用中从开环设备控制到闭环神经康复等各种应用的可靠性,使 BCI 变得高效和准确至关重要。. 通过促进主体意识和体现感,包括眼动和机器人假肢等多模态通信通道的现实设置,旨在提高 BCI 的性能。然而,如何将心理意象命令整合到这些混合系统中,以确保最佳交互,仍然知之甚少。为了解决这个问题,我们进行了一项基于脑电图的混合 BCI 训练,其中包括参加由机器人手臂操作的伸手抓握动作的健康志愿者。. 结果表明,手部抓握运动想象的时间对 BCI 准确性的演变以及时空大脑动力学有显著影响。与在运动之前或期间进行运动想象相比,当运动想象在机器人到达之后进行时,准确性提高更大。与随后的机器人抓握的接近度有利于意向绑定,导致更强的与运动相关的大脑活动,并为感觉运动区域整合涉及更高阶认知功能的区域信息的能力提供了条件。. 综上所述,这些发现为意向绑定对人类行为和皮质网络动力学的影响提供了新的证据,这些证据可以被利用来设计新一代高效的脑机接口。