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Accepted for/Published in: JMIRx Med

Date Submitted: Dec 1, 2021
Date Accepted: Mar 6, 2022
Date Submitted to PubMed: Aug 4, 2023

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

Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: Retrospective Infodemiological Analysis

Rovetta A

Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: Retrospective Infodemiological Analysis

JMIRx Med 2022;3(2):e35356

DOI: 10.2196/35356

PMID: 35481982

PMCID: 9031689

Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: A Retrospective Infodemiological Analysis.

  • Alessandro Rovetta

ABSTRACT

Background:

Google Trends is an infoveillance tool widely used by the scientific community to investigate different user behaviors related to COVID-19. However, several limitations regarding its adoption are reported in the literature.

Objective:

This brief paper aims to provide an effective and efficient approach to investigating vaccine adherence against COVID-19 via Google Trends.

Methods:

Through the cross-correlational analysis of well-targeted hypotheses, we investigate the predictive capacity of web searches related to COVID-19 towards vaccinations in Italy from November 2020 to November 2021. The keyword "vaccine reservation" (VRQ) was chosen as it reflects a real intention of being vaccinated (V). Furthermore, the impact of the second most read Italian newspaper on vaccines-related web searches was investigated to evaluate the role of the mass media as a confounding factor.

Results:

Simple and generic keywords are more likely to identify the actual web interest in COVID-19 vaccines than specific and elaborated keywords. Cross-correlations between VRQ and V were very strong and significant (min r² = .460, P<.001, lag = 0 weeks; max r² = .903, P < .001, lag = 6 weeks). Cross-correlations between VRQ and news about COVID-19 vaccines have been markedly lower and characterized by greater lags (min r² = .190, P=.001, lag = 0 weeks; max r² = .493, P < .001, lag = -10 weeks). No correlation between news and vaccinations was sought since the lag would have been too high.

Conclusions:

This research provides strong evidence in favor of using Google Trends as a surveillance and prediction tool for vaccine adherence against COVID-19 in Italy. These findings prove that the search for suitable keywords is a fundamental step to reduce confounding factors. Additionally, targeting hypotheses helps diminish the likelihood of spurious correlations. It is recommended that Google Trends be leveraged as a complementary infoveillance tool by government agencies to monitor and predict vaccine adherence in this and future crises by following the methods proposed in this manuscript.


 Citation

Please cite as:

Rovetta A

Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: Retrospective Infodemiological Analysis

JMIRx Med 2022;3(2):e35356

DOI: 10.2196/35356

PMID: 35481982

PMCID: 9031689

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