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Designing efficacious mobile technologies for anxiety self-regulation
conference contribution
posted on 2019-05-01, 00:00 authored by H Senaratne, K Ellis, S Oviatt, Glenn MelvinGlenn MelvinThis paper presents a step-by-step process that was developed primarily to extract design pre-requisites for personalized mobile technologies assisting anxiety self-regulation. This process, which is recognized as a preliminary framework, was developed, refined, and tested based on a multidisciplinary literature review and an exploratory study conducted with mental health professionals who treat anxiety disorders. The step-by-step nature of this framework draws from multiple disciplinary and stakeholder perspectives, integrates knowledge about efficacious psychological interventions, considers individual differences and specific challenges faced by patients, and realizes contextual needs. It also includes incremental and iterative refinements based on multidisciplinary sources to foster more evidence-based interface designs. Once reached its maturity, this framework can potentially be applied for designing efficacious technologies for a range of mental health conditions. The expected future contributions and limitations of the framework are also discussed.
History
Event
ACM Special Interest Group on Computer-Human Interaction. Conference (2019 : Glasgow Scotland)Series
ACM Special Interest Group on Computer-Human Interaction ConferencePagination
1 - 6Publisher
Association for Computing MachineryLocation
Glasgow ScotlandPlace of publication
New York, N.Y.Publisher DOI
Start date
2019-05-04End date
2019-05-09ISBN-13
9781450359719Language
engPublication classification
E1 Full written paper - refereedEditor/Contributor(s)
S Brewster, G Fitzpatrick, A Cox, V KostakosTitle of proceedings
CHI 2019 : Weaving the threads of CHI : Proceedings of the CHI Conference on Human Factors in Computing SystemsUsage metrics
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