Co-Designing a Medication Notification Application with Multi-Channel Reminders
October 01, 2023 Β· Declared Dead Β· π ACIS
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Authors
Nawal Chanane, Farhaan Mirza, M. Asif Naeem
arXiv ID
2310.13703
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
ACIS
Last Checked
4 months ago
Abstract
Evidence suggests that medication adherence applications (apps) are one of the most effective methods to remind patients to take medication on time. Reminders via apps are overwhelming today, consumers discard using them after a brief period of initial usage, eventually becoming unfavourable towards them and not using them at all. This study aims to qualitatively determine the key features and design of medication reminder apps that facilitate or disrupt usage from the users perceptive. Three focus groups were conducted with participants aged between 15 and 65+ (N= 12). The participants evaluated a smart medication reminder prototype, then sketched and discussed their thoughts and perceptions within the group. Participants identified, 1) Multi-channel reminders, 2) Medication intake acknowledgement for reporting and 3) Seamless addition of medications and associated reminders as important elements. Understanding consumers needs and concerns will inform the future development of medication reminder apps that are acceptable and valuable to consumers.
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