Publication | Closed Access
Concurrent Adaptation of Human and Machine Improves Simultaneous and Proportional Myoelectric Control
103
Citations
32
References
2015
Year
Motor LearningConcurrent AdaptationMultiple DofsMotor ControlMovement AnalysisRehabilitation RoboticsStimulation DeviceKinesiologyMachine Improves SimultaneousRobot LearningKinematicsRehabilitation EngineeringProsthesisCongenital DeficienciesHealth SciencesSensorimotor ControlProportional Myoelectric ControlAssistive TechnologyMedicineMechatronicsMyoelectric ControlRehabilitationPhysical TherapyPhysiologyMotor SystemElectromyographyElectrophysiologyHuman MovementFine Motor Control
Myoelectric control of a prosthetic hand with more than one degree of freedom (DoF) is challenging, and clinically available techniques require a sequential actuation of the DoFs. Simultaneous and proportional control of multiple DoFs is possible with regression-based approaches allowing for fluent and natural movements. Conventionally, the regressor is calibrated in an open-loop with training based on recorded data and the performance is evaluated subsequently. For individuals with amputation or congenital limb-deficiency who need to (re)learn how to generate suitable muscle contractions, this open-loop process may not be effective. We present a closed-loop real-time learning scheme in which both the user and the machine learn simultaneously to follow a common target. Experiments with ten able-bodied individuals show that this co-adaptive closed-loop learning strategy leads to significant performance improvements compared to a conventional open-loop training paradigm. Importantly, co-adaptive learning allowed two individuals with congenital deficiencies to perform simultaneous 2-D proportional control at levels comparable to the able-bodied individuals, despite having to a learn completely new and unfamiliar mapping from muscle activity to movement trajectories. To our knowledge, this is the first study which investigates man-machine co-adaptation for regression-based myoelectric control. The proposed training strategy has the potential to improve myographic prosthetic control in clinically relevant settings.
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