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Accepted for/Published in: JMIR mHealth and uHealth

Date Submitted: May 27, 2020
Date Accepted: Aug 11, 2020
Date Submitted to PubMed: Aug 15, 2020

The final, peer-reviewed published version of this preprint can be found here:

COVID-19 Contact Tracing Apps: Predicted Uptake in the Netherlands Based on a Discrete Choice Experiment

Jonker M, De Bekker-Grob E, Veldwijk J, Goossens L, Bour S, Rutten-Van Mölken M

COVID-19 Contact Tracing Apps: Predicted Uptake in the Netherlands Based on a Discrete Choice Experiment

JMIR Mhealth Uhealth 2020;8(10):e20741

DOI: 10.2196/20741

PMID: 32795998

PMCID: 7584977

COVID-19 contact-tracing apps: predicted uptake in the Netherlands based on a discrete choice experiment

  • Marcel Jonker; 
  • Esther De Bekker-Grob; 
  • Jorien Veldwijk; 
  • Lucas Goossens; 
  • Sterre Bour; 
  • Maureen Rutten-Van Mölken

ABSTRACT

Background:

Smartphone-based contact-tracing apps can contribute to significantly reducing COVID-19 transmission rates and thereby support countries emerging from lockdowns as restrictions are gradually eased.

Objective:

The primary objective of our study was to determine the potential uptake of a contact-tracing app in the Dutch population, depending on the characteristics of the app.

Methods:

A discrete choice experiment (DCE) was conducted in a nationally representative sample of 900 Dutch respondents. Simulated maximum likelihood methods were used to estimate population average and individual-level preferences using a mixed logit (MIXL) model specification. Individual-level uptake probabilities were calculated based on the individual-level preference estimates and subsequently aggregated into sample as well as subgroup-specific contact-tracing app adoption rates.

Results:

The predicted app adoption rates ranged from 59.3% to 65.7% for the worst and best possible tracing app, respectively. The most realistic contact-tracing app had a predicted adoption of 64.1%. The predicted adoption rates strongly varied by age group. For example, the adoption rates of the most realistic app ranged from 45.6% to 79.4% for people in the oldest and youngest age groups (i.e. 75+ vs. 15-34 years old), respectively. Educational attainment, the presence of serious underlying health conditions, and the respondents’ stance on COVID-19 infection risks were also correlated with the predicted adoption rates, but to a lesser extent.

Conclusions:

A secure and privacy-respecting contact-tracing app with the most realistic characteristics can obtain an adoption rate as high as 64% in the Netherlands. This exceeds the target uptake of 60% that has been formulated by the Dutch government. The main challenge will be to increase the uptake among the elderly, who are least inclined to install and use a COVID-19 contact-tracing app.


 Citation

Please cite as:

Jonker M, De Bekker-Grob E, Veldwijk J, Goossens L, Bour S, Rutten-Van Mölken M

COVID-19 Contact Tracing Apps: Predicted Uptake in the Netherlands Based on a Discrete Choice Experiment

JMIR Mhealth Uhealth 2020;8(10):e20741

DOI: 10.2196/20741

PMID: 32795998

PMCID: 7584977

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