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AI-driven hybrid rehabilitation: synergizing robotics and electrical stimulation for upper-limb recovery after stroke

Ismail Ben Abdallah, Yassine Bouteraa, Ahmed Alotaibi

2025Frontiers in Bioengineering and Biotechnology10 citationsDOIOpen Access PDF

Abstract

This study presents an AI-enhanced hybrid rehabilitation system that integrates a dual-arm robotic platform with electromyography (EMG)-guided neuromuscular electrical stimulation (NMES) to support upper-limb motor recovery in stroke survivors. The system features a symmetrical robotic arm with real-time anatomical adaptation for bilateral therapy and incorporates a Support Vector Machine (SVM)-based model for continuous muscle fatigue detection using time-frequency features extracted from EMG signals. A ROS2-based architecture enables real-time signal processing, adaptive control, and remote supervision by clinicians. The system dynamically adjusts stimulation parameters based on fatigue classification results, allowing personalized and responsive therapy. Preliminary clinical validation with three post-stroke patients demonstrated a 44% increase in range of motion, 45% enhancement in active torque, and 36% reduction in passive torque. The SVM model achieved a 95% accuracy in fatigue detection, and initial patient results suggest the feasibility and potential benefits of this intelligent, closed-loop rehabilitation approach.

Topics & Concepts

Functional electrical stimulationElectromyographyRehabilitationRoboticsRehabilitation roboticsSupport vector machineComputer scienceStroke (engine)Physical medicine and rehabilitationTorqueArtificial intelligenceRobotStimulationMedicineEngineeringPhysical therapyPhysicsThermodynamicsMechanical engineeringInternal medicineStroke Rehabilitation and RecoveryMuscle activation and electromyography studiesEEG and Brain-Computer Interfaces
AI-driven hybrid rehabilitation: synergizing robotics and electrical stimulation for upper-limb recovery after stroke | Litcius