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Neuro rehab technology

Robo glove designed to support stroke survivors

Prototype hand exoskeleton shows potential for playing music and completing daily tasks



A prototype hand exoskeleton has been developed to support stroke survivors to recover the ability to play music or complete daily tasks. 

The flexible ‘robo glove’ gives feedback to wearers who need to re-learn tasks that require manual dexterity or coordination. The initial study focused on playing the piano as a proof of principle. 

Stroke survivors are often left needing rehab to recover the ability to walk, talk or perform tasks, and research shows that in addition to physical and occupational therapy, music therapy can help stroke patients to recover language and motor function. 

However, for people who have previously enjoyed playing music, that may itself be a skill that needs to be relearned after stroke. 

Now, a new study has shown how novel soft robotics can help recovering patients to relearn playing music and other skills that require dexterity and coordination.

“Here we show that our smart exoskeleton glove, with its integrated tactile sensors, soft actuators, and artificial intelligence, can effectively aid in the relearning of manual tasks after neurotrauma,” said lead author Dr Maohua Lin, an adjunct professor at the Department of Ocean & Mechanical Engineering of Florida Atlantic University.

Dr Lin and the research team designed and tested a ‘smart hand exoskeleton’ in the shape of a multi-layered, flexible 3D-printed robo glove, which weighs only 191g. 

The entire palm and wrist area of the glove are designed to be soft and flexible, and the shape of the glove can be custom-made to fit each wearer’s anatomy.

Soft pneumatic actuators in its fingertips generate motion and exert force, thus mimicking natural, fine-tuned hand movements. Each fingertip also contains an array of 16 flexible sensors or ‘taxels’, which give tactile sensations to the wearer’s hand upon interaction with objects or surfaces. 

Production of the glove is straightforward, as all actuators and sensors are put in place through a single molding process.

“While wearing the glove, human users have control over the movement of each finger to a significant extent,” said senior author Dr Erik Engeberg, a professor at Florida Atlantic University.

“The glove is designed to assist and enhance their natural hand movements, allowing them to control the flexion and extension of their fingers. The glove supplies hand guidance, providing support and amplifying dexterity.”

The authors foresee that patients might ultimately wear a pair of these gloves, to help both hands independently to regain dexterity, motor skills, and a sense of coordination.

In the study, machine learning was used to successfully teach the glove to ‘feel’ the difference between playing a correct versus incorrect versions of a beginner’s song on the piano. 

Here, the glove operated autonomously without human input, with preprogrammed movements. The song was ‘Mary Had A Little Lamb’, which requires four fingers to play.

“We found that the glove can learn to distinguish between correct and incorrect piano play. This means it could be a valuable tool for personalised rehabilitation of people who wish to relearn to play music,” said Dr Engeberg.

Now that the proof of principle has been shown, the glove can be programmed to give feedback to the wearer about what went right or wrong in their play, either through haptic feedback, visual cues, or sound. These would enable her or him to understand their performance and make improvements.

Dr Lin added: “Adapting the present design to other rehabilitation tasks beyond playing music, for example object manipulation, would require customisation to individual needs. 

“This can be facilitated through 3D scanning technology or CT scans to ensure a personalised fit and functionality for each user.

“But several challenges in this field need to be overcome. These include improving the accuracy and reliability of tactile sensing, enhancing the adaptability and dexterity of the exoskeleton design, and refining the machine learning algorithms to better interpret and respond to user input.”