Motor Intention Decoding During Active and Robot-Assisted Reaching

Aldo Pastore, C. Pierella, F. Artoni, E. Pirondini, M. Coscia, M. Casadio, S. Micera
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引用次数: 2

Abstract

Robotics rehabilitation is a widely used approach for the treatment of patients with severe motor disabilities, such as stroke survivors. Robots can provide intense, controlled and repeatable rehabilitation and they can also provide different levels of assistance when patients are not able to initiate or complete a movement. Nevertheless, several studies proved that completely passive movements are not sufficient to stimulate neuro-motor recovery and patients' engagement is a key factor for an effective rehabilitation. For this reason it is important to combine techniques for detection of movement intention (MI) with rehabilitation robotics. In this study we developed an algorithm capable of detecting MI before the movement onset, in order to obtain a trigger signal for providing robotics assistance. The proposed algorithm automatically selects the channels used to extract MI based on the motor-information content of each channel. The developed algorithm was tested on data recorded on n = 8 healthy subjects performing 3D reaching movements with an exoskeleton in active and assisted conditions. MI was detected about 400 ms before the beginning of the movement and the performance of the proposed method were significantly higher than the one achieved when six preselected channels, located over motor areas, were used for MI decoding. MI was also detected during robot-assisted movements. Interestingly, in active movements the highest performance was achieved with electrodes over a well-localized cluster above the contralateral and central motor areas, while in passive executions, the areas with the best performances became more sparse.
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主动和机器人辅助伸手过程中的运动意图解码
机器人康复是一种广泛用于治疗严重运动障碍患者的方法,例如中风幸存者。机器人可以提供高强度、可控和可重复的康复,当患者无法开始或完成运动时,它们还可以提供不同程度的帮助。然而,一些研究证明,完全被动的运动不足以刺激神经运动恢复,患者的参与是有效康复的关键因素。因此,将运动意图检测技术与康复机器人技术相结合是非常重要的。在这项研究中,我们开发了一种能够在运动开始之前检测心肌梗死的算法,以获得触发信号,从而提供机器人辅助。该算法根据每个通道的运动信息内容自动选择用于提取MI的通道。开发的算法在n = 8健康受试者的数据记录上进行了测试,这些受试者在主动和辅助条件下使用外骨骼进行3D到达运动。在运动开始前约400 ms检测到MI,所提出的方法的性能明显高于使用位于运动区域上方的6个预选通道进行MI解码所获得的性能。在机器人辅助运动中也检测到心肌梗死。有趣的是,在主动运动中,电极在对侧和中央运动区域上方的一个定位良好的簇上取得了最高的表现,而在被动执行中,表现最好的区域变得更加稀疏。
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