2023
DOI: 10.1186/s12938-023-01175-y
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Evaluating the ability of a predictive vision-based machine learning model to measure changes in gait in response to medication and DBS within individuals with Parkinson’s disease

Andrea Sabo,
Andrea Iaboni,
Babak Taati
et al.

Abstract: Introduction Gait impairments in Parkinson’s disease (PD) are treated with dopaminergic medication or deep-brain stimulation (DBS), although the magnitude of the response is variable between individuals. Computer vision-based approaches have previously been evaluated for measuring the severity of parkinsonian gait in videos, but have not been evaluated for their ability to identify changes within individuals in response to treatment. This pilot study examines whether a vision-based model, train… Show more

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Cited by 2 publications
(2 citation statements)
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References 34 publications
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“…While covering diverse topics, articles in this collection are linked through multiple connecting themes, such as functional electrical stimulation [ 1 , 2 ] or the application of signal processing and artificial intelligence in solving aging and rehabilitation problems [ 2 8 ]. Specifically, a number of the papers in this collection [ 4 7 ] explore the application of computer vision techniques in various healthcare domains, particularly focusing on rehabilitation and mobility assistance. Lim et al [ 2 ], for instance, investigate the feasibility of using depth cameras and pressure mats in a balance training system for individuals with spinal cord injuries.…”
mentioning
confidence: 99%
See 1 more Smart Citation
“…While covering diverse topics, articles in this collection are linked through multiple connecting themes, such as functional electrical stimulation [ 1 , 2 ] or the application of signal processing and artificial intelligence in solving aging and rehabilitation problems [ 2 8 ]. Specifically, a number of the papers in this collection [ 4 7 ] explore the application of computer vision techniques in various healthcare domains, particularly focusing on rehabilitation and mobility assistance. Lim et al [ 2 ], for instance, investigate the feasibility of using depth cameras and pressure mats in a balance training system for individuals with spinal cord injuries.…”
mentioning
confidence: 99%
“…Lim et al [ 2 ] experimentally demonstrate that depth cameras and pressure mats can accurately track the body center of mass and center of pressure. As another example, Sabo et al [ 7 ] demonstrate the responsiveness of a previously developed predictive vision-based machine learning model [ 11 , 12 ] to measure changes in gait in response to medication and deep brain stimulation in individuals with Parkinson’s disease.…”
mentioning
confidence: 99%