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Willingness to Use and Pay for Digital Health Care Services According to 4 Scenarios: Results from a National Survey

Authors
 Lee, Junbok  ;  Oh, Yumi  ;  Kim, Meelim  ;  Cho, Belong  ;  Shin, Jaeyong 
Citation
 JMIR MHEALTH AND UHEALTH, Vol.11(1), 2023-03 
Article Number
 e40834 
Journal Title
JMIR MHEALTH AND UHEALTH
ISSN
 2291-5222 
Issue Date
2023-03
Keywords
digital health intervention ; service experience ; willingness to pay ; willingness to use ; digital health ; health technology
Abstract
Background: Smartphones and their associated technology have evolved to an extent where these devices can be used to provide digital health interventions. However, few studies have been conducted on the willingness to use (WTU) and willingness to pay (WTP) for digital health interventions. Objective: The purpose of this study was to investigate how previous service experience, the content of the services, and individuals' health status affect WTU and WTP. Methods: We conducted a nationwide web-based survey in 3 groups: nonusers (n=506), public service users (n=368), and private service users (n=266). Participants read scenarios about an imagined health status (such as having a chronic illness) and the use of digital health intervention models (self-management, expert management, and medical management). They were then asked to respond to questions on WTU and WTP. Results: Public service users had a greater intention to use digital health intervention services than nonusers and private service users: scenario A (health-risk situation and self-management), nonusers=odd ratio [OR] .239 (SE .076; P<.001) and private service users=OR .138 (SE .044; P<.001); scenario B (health-risk situation and expert management), nonusers=OR .175 (SE .040; P<.001) and private service users=OR .219 (SE .053; P<.001); scenario C (chronic disease situation and expert management), nonusers=OR .413 (SE .094; P<.001) and private service users=OR .401 (SE .098; P<.001); and scenario D (chronic disease situation and medical management), nonusers=OR .480 (SE .120; P=.003) and private service users=OR .345 (SE .089; P<.001). In terms of WTP, in scenarios A and B, those who used the public and private services had a higher WTP than those who did not (scenario A: beta=-.397, SE .091; P<.001; scenario B: beta=-.486, SE .098; P<.001). In scenario C, private service users had greater WTP than public service users (beta=.264, SE .114; P=.02), whereas public service users had greater WTP than nonusers (beta=-.336, SE .096; P<.001). In scenario D, private service users were more WTP for the service than nonusers (beta=-.286, SE .092; P=.002). Conclusions: We confirmed that the WTU and WTP for digital health interventions differed based on individuals' prior experience with health care services, health status, and demographics. Recently, many discussions have been made to expand digital health care beyond the early adapters and fully into people's daily lives. Thus, more understanding of people's awareness and acceptance of digital health care is needed.
DOI
10.2196/40834
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Preventive Medicine (예방의학교실) > 1. Journal Papers
Yonsei Authors
Shin, Jae Yong(신재용) ORCID logo https://orcid.org/0000-0002-2955-6382
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/198004
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