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Real-Time Control of a Neuroprosthetic Hand by Magnetoencephalographic Signals from Paralysed Patients

机译:瘫痪病人的磁脑电图信号实时控制神经修复手

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Neuroprosthetic arms might potentially restore motor functions for severely paralysed patients. Invasive measurements of cortical currents using electrocorticography have been widely used for neuroprosthetic control. Moreover, magnetoencephalography (MEG) exhibits characteristic brain signals similar to those of invasively measured signals. However, it remains unclear whether non-invasively measured signals convey enough motor information to control a neuroprosthetic hand, especially for severely paralysed patients whose sensorimotor cortex might be reorganized. We tested an MEG-based neuroprosthetic system to evaluate the accuracy of using cortical currents in the sensorimotor cortex of severely paralysed patients to control a prosthetic hand. The patients attempted to grasp with or open their paralysed hand while the slow components of MEG signals (slow movement fields; SMFs) were recorded. Even without actual movements, the SMFs of all patients indicated characteristic spatiotemporal patterns similar to actual movements, and the SMFs were successfully used to control a neuroprosthetic hand in a closed-loop condition. These results demonstrate that the slow components of MEG signals carry sufficient information to classify movement types. Successful control by paralysed patients suggests the feasibility of using an MEG-based neuroprosthetic hand to predict a patient's ability to control an invasive neuroprosthesis via the same signal sources as the non-invasive method.
机译:神经修复臂可能会严重瘫痪的患者恢复运动功能。使用皮质脑电图对皮质电流的有创测量已广泛用于神经修复控制。此外,脑磁图(MEG)表现出与侵入性测量信号相似的特征性大脑信号。但是,尚不清楚非侵入性测量的信号是否能传递足够的运动信息来控制人工神经手,尤其是对于严重瘫痪的患者,其感觉运动皮层可能会重新组织。我们测试了基于MEG的神经假体系统,以评估在严重瘫痪患者的感觉运动皮层中使用皮层电流控制假手的准确性。在记录MEG信号的缓慢成分(缓慢运动场; SMF)的同时,患者试图抓住或张开瘫痪的手。即使没有实际运动,所有患者的SMF仍显示出与实际运动相似的特征性时空模式,并且SMF成功地用于控制闭环状态下的人工神经手。这些结果表明,MEG信号的慢速分量携带足够的信息来对运动类型进行分类。瘫痪患者的成功控制表明,使用基于MEG的神经假肢手来预测患者通过与非侵入性方法相同的信号源来控制侵入性神经假体的能力是可行的。

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