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Taking a machine learning approach to optimize prediction of vaccine hesitancy in high income countries

Taking a machine learning approach to optimize prediction of vaccine hesitancy in high income countries
Taking a machine learning approach to optimize prediction of vaccine hesitancy in high income countries
Understanding factors driving vaccine hesitancy is crucial to vaccination success. We surveyed adults (N = 2510) from February to March 2021 across five sites (Australia = 502, Germany = 516, Hong Kong = 445, UK = 512, USA = 535) using a cross-sectional design and stratified quota sampling for age, sex, and education. We assessed willingness to take a vaccine and a comprehensive set of putative predictors. Predictive power was analysed with a machine learning algorithm. Only 57.4% of the participants indicated that they would definitely or probably get vaccinated. A parsimonious machine learning model could identify vaccine hesitancy with high accuracy (i.e. 82% sensitivity and 79–82% specificity) using 12 variables only. The most relevant predictors were vaccination conspiracy beliefs, various paranoid concerns related to the pandemic, a general conspiracy mentality, COVID anxiety, high perceived risk of infection, low perceived social rank, lower age, lower income, and higher population density. Campaigns seeking to increase vaccine uptake need to take mistrust as the main driver of vaccine hesitancy into account.
2045-2322
Lincoln, Tania
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Schlier, Bjorn
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Strakeljahn, Felix
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Gaudiano, Brandon
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So, Suzanne
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Kingston, Jessica
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Morris, Eric
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Ellett, Lyn
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Lincoln, Tania
0f7f63fe-32de-4de0-a78e-8fa3267028bd
Schlier, Bjorn
78c20abe-f8d3-45b3-8403-ac9edc1b44e5
Strakeljahn, Felix
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Gaudiano, Brandon
483c4c03-efa4-44b7-a3e9-078137e2610a
So, Suzanne
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Kingston, Jessica
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Morris, Eric
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Ellett, Lyn
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Lincoln, Tania, Schlier, Bjorn, Strakeljahn, Felix, Gaudiano, Brandon, So, Suzanne, Kingston, Jessica, Morris, Eric and Ellett, Lyn (2022) Taking a machine learning approach to optimize prediction of vaccine hesitancy in high income countries. Scientific Reports, 12 (1), [2055]. (doi:10.1038/s41598-022-05915-3).

Record type: Article

Abstract

Understanding factors driving vaccine hesitancy is crucial to vaccination success. We surveyed adults (N = 2510) from February to March 2021 across five sites (Australia = 502, Germany = 516, Hong Kong = 445, UK = 512, USA = 535) using a cross-sectional design and stratified quota sampling for age, sex, and education. We assessed willingness to take a vaccine and a comprehensive set of putative predictors. Predictive power was analysed with a machine learning algorithm. Only 57.4% of the participants indicated that they would definitely or probably get vaccinated. A parsimonious machine learning model could identify vaccine hesitancy with high accuracy (i.e. 82% sensitivity and 79–82% specificity) using 12 variables only. The most relevant predictors were vaccination conspiracy beliefs, various paranoid concerns related to the pandemic, a general conspiracy mentality, COVID anxiety, high perceived risk of infection, low perceived social rank, lower age, lower income, and higher population density. Campaigns seeking to increase vaccine uptake need to take mistrust as the main driver of vaccine hesitancy into account.

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s41598-022-05915-3 - Version of Record
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Accepted/In Press date: 19 January 2022
e-pub ahead of print date: 8 February 2022
Published date: 8 February 2022
Additional Information: © 2022. The Author(s).

Identifiers

Local EPrints ID: 454732
URI: http://eprints.soton.ac.uk/id/eprint/454732
ISSN: 2045-2322
PURE UUID: a8bf1344-dc3e-4461-80a5-fd97e627776f
ORCID for Lyn Ellett: ORCID iD orcid.org/0000-0002-6051-3604

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Date deposited: 22 Feb 2022 17:36
Last modified: 17 Mar 2024 04:10

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Contributors

Author: Tania Lincoln
Author: Bjorn Schlier
Author: Felix Strakeljahn
Author: Brandon Gaudiano
Author: Suzanne So
Author: Jessica Kingston
Author: Eric Morris
Author: Lyn Ellett ORCID iD

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