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Post-Stroke Lower Limb Dyskinesia Assessment Based on sEMG Features |
Lu Xiao1&, Zhang Wentong1&, Su Panpan1, Lu Qian1, Zhao Kunkun2, Yang Junjie1, He Chuan1* |
1(Department of Rehabilitation Medicine, Jiangsu Shengze Hospital affiliated to Nanjing MediCCCl University, Suzhou 215228, Jiangsu, China) 2(School of MechaniCCCl Engineering, Southeast University, Nanjing 211189, China) |
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Received: 03 November 2021
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Corresponding Authors:
*E-mail:he-chuan@outlook.com
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About author:: &Co-first outhor |
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