Abstract Background A prevailing paradigm of physical rehabilitation following neurologic injury is to "assist-as-needed" in completing desired movements. Several research groups are attempting to automate this principle with robotic movement training devices and patient cooperative algorithms that encourage voluntary participation. These attempts are currently not based on computational models of motor learning. Methods Here we assume that motor recovery from a neurologic injury can be modelled as a process of learning a novel sensory motor transformation, which allows us to study a simplified experimental protocol amenable to mathematical description. Specifically, we use a robotic force field paradigm to impose a virtual impairment on th...
Background. Robot-aided neurorehabilitation can provide intensive, repetitious training to improve u...
Robot-assisted movement training improves arm movement ability following acute and chronic stroke. S...
Robotic algorithms that augment movement errors have been proposed as promising training strategies ...
Background A prevailing paradigm of physical rehabilitation following neurologic injury is to "assis...
Neurologically impaired patients can regain motor function by engaging in rehabilita- tion. Currentl...
Robot-aided gait therapy offers a promising approach towards improving gait function in individuals ...
Many exercise protocols for robot therapy are designed to adjust their degree of difficulty in order...
This chapter focuses on robotic gait training. As a basis, it summarizes the neurophysio-logical rat...
This paper describes the development of a novel control system for a robotic arm orthosis for assist...
Robot-aided gait training has been presented as a promising technique to improve rehabilitation in p...
Conventional neurorehabilitation appears to have little impact on impairment over and above that of ...
The recovery of functional movements following injury to the central nervous system (CNS) is multifa...
Robots for neurorehabilitation have been designed principally to automate repetitive labor-intensive...
Robot-assisted gait training (RAGT) is a promising tool to improve walking function after stroke and...
Robotic devices have emerged as promising solutions to support motor training in physical rehabilita...
Background. Robot-aided neurorehabilitation can provide intensive, repetitious training to improve u...
Robot-assisted movement training improves arm movement ability following acute and chronic stroke. S...
Robotic algorithms that augment movement errors have been proposed as promising training strategies ...
Background A prevailing paradigm of physical rehabilitation following neurologic injury is to "assis...
Neurologically impaired patients can regain motor function by engaging in rehabilita- tion. Currentl...
Robot-aided gait therapy offers a promising approach towards improving gait function in individuals ...
Many exercise protocols for robot therapy are designed to adjust their degree of difficulty in order...
This chapter focuses on robotic gait training. As a basis, it summarizes the neurophysio-logical rat...
This paper describes the development of a novel control system for a robotic arm orthosis for assist...
Robot-aided gait training has been presented as a promising technique to improve rehabilitation in p...
Conventional neurorehabilitation appears to have little impact on impairment over and above that of ...
The recovery of functional movements following injury to the central nervous system (CNS) is multifa...
Robots for neurorehabilitation have been designed principally to automate repetitive labor-intensive...
Robot-assisted gait training (RAGT) is a promising tool to improve walking function after stroke and...
Robotic devices have emerged as promising solutions to support motor training in physical rehabilita...
Background. Robot-aided neurorehabilitation can provide intensive, repetitious training to improve u...
Robot-assisted movement training improves arm movement ability following acute and chronic stroke. S...
Robotic algorithms that augment movement errors have been proposed as promising training strategies ...