Using discrete-choice experiments to elicit preferences for digital wearable health technology for self-management of chronic kidney disease

Vijay Gc, Iglesias Cynthia, Seda Erdam, Lamiece Hassan, Niels Peek, A Manca

Research output: Contribution to journalArticlepeer-review

Abstract

Objectives

Wearable digital health technologies (DHTs) have the potential to improve chronic kidney disease (CKD) management through patient engagement. This study aimed to investigate and elicit preferences of individuals with CKD toward wearable DHTs designed to support self-management of their condition.
Methods

Using the results of our review of the published literature and after conducting qualitative patient interviews, five-choice attributes were identified and included in a discrete-choice experiment. The design consisted of 10-choice tasks, each comprising two hypothetical technologies and one opt-out scenario. We collected data from 113 adult patients with CKD stages 3–5 not on dialysis and analyzed their responses via a latent class model to explore preference heterogeneity.
Results

Two patient segments were identified. In all preference segments, the most important attributes were the device appearance, format, and type of information provided. Patients within the largest preference class (70 percent) favored information provided in any format except the audio, while individuals in the other class preferred information in text format. In terms of the style of engagement with the device, both classes wanted a device that provides options rather than telling them what to do.
Conclusions

Our analysis indicates that user preferences differ between patient subgroups, supporting the case for offering a different design of the device for different patients’ strata, thus moving away from a one-size-fits-all service provision. Furthermore, we showed how to leverage the information from user preferences early in the R&D process to inform and support the provision of nuanced person-centered wearable DHTs.
Original languageEnglish
Article numbere77
JournalInternational Journal of Technology Assessment in Health Care
Volume38
Issue number1
DOIs
Publication statusPublished - 26 Oct 2022

Keywords

  • chronic kidney disease
  • conjoint analysis
  • discrete-choice experiment
  • mixed methods
  • patient preferences
  • wearable devices

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