Magic Monster - Quantitative data underlying the publication: Design and evaluation of a smart toy for home therapy for children with cerebral palsy
DOI:10.4121/640dfebb-d61a-4ae5-bb00-72cfc958bc2b.v1
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DOI: 10.4121/640dfebb-d61a-4ae5-bb00-72cfc958bc2b
DOI: 10.4121/640dfebb-d61a-4ae5-bb00-72cfc958bc2b
Datacite citation style
Pinos Cisneros, Tamara Veronica (2025): Magic Monster - Quantitative data underlying the publication: Design and evaluation of a smart toy for home therapy for children with cerebral palsy. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/640dfebb-d61a-4ae5-bb00-72cfc958bc2b.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
The reseach objective is to analyse the effects of self-adaptive play complexity on engagement, motivation, and adherence in hand therapy at
home in children with cerebral palsy. Data was collected from a randomized, non-blind, multiplebaseline single-case single case study, reported following the
SCRIBE standard. This dataset contains quantitative data on the frequency of use and time played by children.
History
- 2025-07-11 first online, published, posted
Publisher
4TU.ResearchDataFormat
PDFOrganizations
University of Twente, Faculty of Faculty of Engineering Technology (ET), Department of Design, Production and Management (DPM), Interaction DesignAmsterdam University of Applied Sciences, Digital Life Centre
Utrecht University, Information and Computing Sciences, Interaction, Social and Affective Computing
DATA
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- 4,761 bytesMD5:
2fb46aa366cc6275391caf7698fa79eb
README.txt - 573,711 bytesMD5:
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2023-11-22-ExPRT AB AnalysisDurationMINUTES.pdf - 628,908 bytesMD5:
cfb22d9c1f910e8ebb22fd61efe4de60
2023-11-22-ExPRT AB AnalysisFrequency.pdf - 856,405 bytesMD5:
5327a2d5c7c0cee9f141beb213c43f14
2024-02-16-Quantitative-data.pdf -
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