Upper limb intelligent feedback robot training significantly activates the cerebral cortex and promotes the functional connectivity of the cerebral cortex in patients with stroke: A functional near-infrared spectroscopy study
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Huan Guo | Kaifeng Guo | Zhen Huang | Hao Li | Xuefeng Fu | Lijun Lu | Wen Yang
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