Adaptive user interfaces in systems targeting chronic disease: a systematic literature review

November 17, 2022 Β· Declared Dead Β· πŸ› User modeling and user-adapted interaction

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Authors Wei Wang, Hourieh Khalajzadeh, Anuradha Madugalla, Jennifer Mcintosh, Humphrey Obie arXiv ID 2211.09340 Category cs.HC: Human-Computer Interaction Citations 14 Venue User modeling and user-adapted interaction Last Checked 4 months ago
Abstract
eHealth technologies have been increasingly used to foster proactive self-management skills for patients with chronic diseases. However, it is challenging to provide each user with their desired support due to the dynamic and diverse nature of the chronic disease and its impact on users. Many such eHealth applications support aspects of `adaptive user interfaces' -- interfaces that change or can be changed to accommodate the user and usage context differences. To identify the state-of-art in adaptive user interfaces in the field of chronic diseases, we systematically located and analysed 48 key studies in the literature with the aim of categorising the key approaches used to date and identifying limitations, gaps and trends in research. Our data synthesis is based on the data sources used for interface adaptation, the data collection techniques used to extract the data, the adaptive mechanisms used to process the data and the adaptive elements generated at the interface. The findings of this review will aid researchers and developers in understanding where adaptive user interface approaches can be applied and necessary considerations for employing adaptive user interfaces to different chronic disease-related eHealth applications.
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