JMIR Aging (Oct 2024)

Decoding the Influence of eHealth on Autonomy, Competence, and Relatedness in Older Adults: Qualitative Analysis of Self-Determination Through the Motivational Technology Model

  • Lynne M Cotter,
  • Dhavan Shah,
  • Kaitlyn Brown,
  • Marie-Louise Mares,
  • Gina Landucci,
  • Sydney Saunders,
  • Darcie C Johnston,
  • Klaren Pe-Romashko,
  • David Gustafson,
  • Adam Maus,
  • Kasey Thompson,
  • David H Gustafson

DOI
https://doi.org/10.2196/56923
Journal volume & issue
Vol. 7
p. e56923

Abstract

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BackgroundOlder adults adopt and use eHealth systems to build autonomy, competence, and relatedness and engage in healthy behaviors. The motivational technology model posits that technology features, such as those on websites, smart displays, and mobile phones, must allow for navigability, interactivity, and customizability, which spur feelings of self-determination and intrinsic motivation. We studied ElderTree, an online system for older adults that provides on-demand videos of healthy living content, self-monitoring, and weekly researcher-hosted video meetings. ObjectiveWe aimed to understand the theoretical crossover between the motivational technology model and self-determination theory using features of ElderTree to understand the usability of the technology and how it may support older adults’ autonomy, competence, and relatedness. MethodsDrawing participants from a randomized controlled trial of a mobile health app for older adults with multiple chronic conditions, we conducted qualitative interviews with 22 older adults about their use of the app; the interviews were coded using qualitative thematic analysis. ResultsOlder adults did find that features within ElderTree such as content available on demand, good navigation, and weekly researcher-led video calls supported feelings of autonomy, competence, and relatedness, respectively. Individual differences such as a background using computers also influenced participants’ experiences with the smart displays. ConclusionsParticipants confirmed the features that increased internal motivation, such as interactivity correlating with feelings of relatedness, but they also found other ways to support autonomous health behavior change beyond narrow views of navigability, interactivity, and customization.