| Literature DB >> 31094338 |
Roni Barak Ventura1, Shinnosuke Nakayama1, Preeti Raghavan2, Oded Nov3, Maurizio Porfiri1,4.
Abstract
BACKGROUND: Robot-mediated telerehabilitation has the potential to provide patient-tailored cost-effective rehabilitation. However, compliance with therapy can be a problem that undermines the prospective advantages of telerehabilitation technologies. Lack of motivation has been identified as a major factor that hampers compliance. Exploring various motivational interventions, the integration of citizen science activities in robotics-based rehabilitation has been shown to increase patients' motivation to engage in otherwise tedious exercises by tapping into a vast array of intrinsic motivational drivers. Patient engagement can be further enhanced by the incorporation of social interactions.Entities:
Keywords: citizen science; physical therapy; social interactions; telerehabilitation
Mesh:
Year: 2019 PMID: 31094338 PMCID: PMC6540723 DOI: 10.2196/12708
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1The Novint Falcon with the designated axes of motion.
Figure 2A screenshot of the user interface. On the left of the screenshot is a 360° image of the Gowanus canal. The user’s cursor is placing the label “Crane” onto the image, while a tag containing the word “Buoy” has already been placed. A reproduction of the Novint Falcon controller with a description of the function of each button is located on the upper right corner of the image. In the green panel, a counter of the number of labels that are yet to be assigned to the current image is displayed at the top. Below the counter, there is a list of 10 labels. The label “Crane” is highlighted in red as it is currently selected by the user. Below the list of labels is a visual feedback that represents deviation from the z-axis. A Quit button is situated at the bottom of the green panel. In the yellow panel, there is a garbage bin for eliminating labels that do not describe objects in the current image. The labels below it, “Robot” and “Person”, have been eliminated by the user.
Figure 3Schematic of two cooperating users classifying images remotely from two different computers in separate rooms.
A summary of the experimental conditions tested.
| Condition and task assignment | Cooperation | Number of volunteers | |
| Tagging and trashing | Absent | 22 | |
| Tagging | Present | 25 | |
| Trashing | Present | 25 | |
| Tagging | Present | 24 | |
| Trashing | Present | 24 | |
Figure 4Engagement of users in the activity. A) number of labels processed by participants in each condition. B) rate of enjoyment for each condition. The vertical lines represent standard errors. *: statistically different means among conditions. $: statistically different means among tasks.
Figure 5Motor metrics. A) mean speed in each condition, B) peak speed for each condition, C) path length traversed by the controller in each conditions. The vertical lines represent standard errors. * represents statistically different means among conditions. $ represents statistically different means among tasks.
Figure 6Differences in mean and peak speeds of the more persistent users in condition IT, before and after their peer has withdrawn. The vertical lines represent standard errors. * represents statistically different means among conditions.