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The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis

BACKGROUND: During the COVID-19 pandemic, there was limited adoption of contact-tracing apps (CTAs). Adoption was particularly low among vulnerable people (eg, people with a low socioeconomic position or of older age), while this part of the population tends to have lesser access to information and...

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Autores principales: Hengst, Tessi M, Lechner, Lilian, van der Laan, Laura Nynke, Hommersom, Arjen, Dohmen, Daan, Hooft, Lotty, Metting, Esther, Ebbers, Wolfgang, Bolman, Catherine A W
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10284059/
https://www.ncbi.nlm.nih.gov/pubmed/37338969
http://dx.doi.org/10.2196/41479
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author Hengst, Tessi M
Lechner, Lilian
van der Laan, Laura Nynke
Hommersom, Arjen
Dohmen, Daan
Hooft, Lotty
Metting, Esther
Ebbers, Wolfgang
Bolman, Catherine A W
author_facet Hengst, Tessi M
Lechner, Lilian
van der Laan, Laura Nynke
Hommersom, Arjen
Dohmen, Daan
Hooft, Lotty
Metting, Esther
Ebbers, Wolfgang
Bolman, Catherine A W
author_sort Hengst, Tessi M
collection PubMed
description BACKGROUND: During the COVID-19 pandemic, there was limited adoption of contact-tracing apps (CTAs). Adoption was particularly low among vulnerable people (eg, people with a low socioeconomic position or of older age), while this part of the population tends to have lesser access to information and communication technology and is more vulnerable to the COVID-19 virus. OBJECTIVE: This study aims to understand the cause of this lagged adoption of CTAs in order to facilitate adoption and find indications to make public health apps more accessible and reduce health disparities. METHODS: Because several psychosocial variables were found to be predictive of CTA adoption, data from the Dutch CTA CoronaMelder (CM) were analyzed using cluster analysis. We examined whether subgroups could be formed based on 6 psychosocial perceptions (ie, trust in the government, beliefs about personal data, social norms, perceived personal and societal benefits, risk perceptions, and self-efficacy) of (non)users concerning CM in order to examine how these clusters differ from each other and what factors are predictive of the intention to use a CTA and the adoption of a CTA. The intention to use and the adoption of CM were examined based on longitudinal data consisting of 2 time frames in October/November 2020 (N=1900) and December 2020 (N=1594). The clusters were described by demographics, intention, and adoption accordingly. Moreover, we examined whether the clusters and the variables that were found to influence the adoption of CTAs, such as health literacy, were predictive of the intention to use and the adoption of the CM app. RESULTS: The final 5-cluster solution based on the data of wave 1 contained significantly different clusters. In wave 1, respondents in the clusters with positive perceptions (ie, beneficial psychosocial variables for adoption of a CTA) about the CM app were older (P<.001), had a higher education level (P<.001), and had higher intention (P<.001) and adoption (P<.001) rates than those in the clusters with negative perceptions. In wave 2, the intention to use and adoption were predicted by the clusters. The intention to use CM in wave 2 was also predicted using the adoption measured in wave 1 (P<.001, β=–2.904). Adoption in wave 2 was predicted by age (P=.022, exp(B)=1.171), the intention to use in wave 1 (P<.001, exp(B)=1.770), and adoption in wave 1 (P<.001, exp(B)=0.043). CONCLUSIONS: The 5 clusters, as well as age and previous behavior, were predictive of the intention to use and the adoption of the CM app. Through the distinguishable clusters, insight was gained into the profiles of CM (non)intenders and (non)adopters. TRIAL REGISTRATION: OSF Registries osf.io/cq742; https://osf.io/cq742
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spelling pubmed-102840592023-06-22 The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis Hengst, Tessi M Lechner, Lilian van der Laan, Laura Nynke Hommersom, Arjen Dohmen, Daan Hooft, Lotty Metting, Esther Ebbers, Wolfgang Bolman, Catherine A W JMIR Form Res Original Paper BACKGROUND: During the COVID-19 pandemic, there was limited adoption of contact-tracing apps (CTAs). Adoption was particularly low among vulnerable people (eg, people with a low socioeconomic position or of older age), while this part of the population tends to have lesser access to information and communication technology and is more vulnerable to the COVID-19 virus. OBJECTIVE: This study aims to understand the cause of this lagged adoption of CTAs in order to facilitate adoption and find indications to make public health apps more accessible and reduce health disparities. METHODS: Because several psychosocial variables were found to be predictive of CTA adoption, data from the Dutch CTA CoronaMelder (CM) were analyzed using cluster analysis. We examined whether subgroups could be formed based on 6 psychosocial perceptions (ie, trust in the government, beliefs about personal data, social norms, perceived personal and societal benefits, risk perceptions, and self-efficacy) of (non)users concerning CM in order to examine how these clusters differ from each other and what factors are predictive of the intention to use a CTA and the adoption of a CTA. The intention to use and the adoption of CM were examined based on longitudinal data consisting of 2 time frames in October/November 2020 (N=1900) and December 2020 (N=1594). The clusters were described by demographics, intention, and adoption accordingly. Moreover, we examined whether the clusters and the variables that were found to influence the adoption of CTAs, such as health literacy, were predictive of the intention to use and the adoption of the CM app. RESULTS: The final 5-cluster solution based on the data of wave 1 contained significantly different clusters. In wave 1, respondents in the clusters with positive perceptions (ie, beneficial psychosocial variables for adoption of a CTA) about the CM app were older (P<.001), had a higher education level (P<.001), and had higher intention (P<.001) and adoption (P<.001) rates than those in the clusters with negative perceptions. In wave 2, the intention to use and adoption were predicted by the clusters. The intention to use CM in wave 2 was also predicted using the adoption measured in wave 1 (P<.001, β=–2.904). Adoption in wave 2 was predicted by age (P=.022, exp(B)=1.171), the intention to use in wave 1 (P<.001, exp(B)=1.770), and adoption in wave 1 (P<.001, exp(B)=0.043). CONCLUSIONS: The 5 clusters, as well as age and previous behavior, were predictive of the intention to use and the adoption of the CM app. Through the distinguishable clusters, insight was gained into the profiles of CM (non)intenders and (non)adopters. TRIAL REGISTRATION: OSF Registries osf.io/cq742; https://osf.io/cq742 JMIR Publications 2023-06-20 /pmc/articles/PMC10284059/ /pubmed/37338969 http://dx.doi.org/10.2196/41479 Text en ©Tessi M Hengst, Lilian Lechner, Laura Nynke van der Laan, Arjen Hommersom, Daan Dohmen, Lotty Hooft, Esther Metting, Wolfgang Ebbers, Catherine A W Bolman. Originally published in JMIR Formative Research (https://formative.jmir.org), 20.06.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Formative Research, is properly cited. The complete bibliographic information, a link to the original publication on https://formative.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Hengst, Tessi M
Lechner, Lilian
van der Laan, Laura Nynke
Hommersom, Arjen
Dohmen, Daan
Hooft, Lotty
Metting, Esther
Ebbers, Wolfgang
Bolman, Catherine A W
The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title_full The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title_fullStr The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title_full_unstemmed The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title_short The Adoption of a COVID-19 Contact-Tracing App: Cluster Analysis
title_sort adoption of a covid-19 contact-tracing app: cluster analysis
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10284059/
https://www.ncbi.nlm.nih.gov/pubmed/37338969
http://dx.doi.org/10.2196/41479
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