» Articles » PMID: 38003796

Challenges and Opportunities in One Health: Google Trends Search Data

Overview
Journal Pathogens
Date 2023 Nov 25
PMID 38003796
Authors
Affiliations
Soon will be listed here.
Abstract

Google Trends data can be informative for zoonotic disease incidences, including Lyme disease. However, the use of Google Trends for predictive purposes is underutilized. In this study, we demonstrate the potential to use Google Trends for zoonotic disease prediction by predicting monthly state-level Lyme disease case counts in the United States. We requested Lyme disease data for the years 2010-2021. We downloaded Google Trends search data on terms for Lyme disease, symptoms of Lyme disease, and diseases with similar symptoms to Lyme disease. For each search term, we built an expanding window negative binomial model that adjusted for seasonal differences using a lag term. Performance was measured by Root Mean Squared Errors (RMSEs) and the visual associations between observed and predicted case counts. The highest performing model had excellent predictive ability in some states, but performance varied across states. The highest performing models were for Lyme disease search terms, which indicates the high specificity of search terms. We outline challenges of using Google Trends data, including data availability and a mismatch between geographic units. We discuss opportunities for Google Trends data for One Health research, including prediction of additional zoonotic diseases and incorporating environmental and companion animal data. Lastly, we recommend that Google Trends be explored as an option for predicting other zoonotic diseases and incorporate other data streams that may improve predictive performance.

Citing Articles

Infodemiology of Influenza-like Illness: Utilizing Google Trends' Big Data for Epidemic Surveillance.

Shih D, Wu Y, Wu T, Chang S, Shih M J Clin Med. 2024; 13(7).

PMID: 38610711 PMC: 11012909. DOI: 10.3390/jcm13071946.

References
1.
Carneiro H, Mylonakis E . Google trends: a web-based tool for real-time surveillance of disease outbreaks. Clin Infect Dis. 2009; 49(10):1557-64. DOI: 10.1086/630200. View

2.
Wang M, Tang N . The correlation between Google trends and salmonellosis. BMC Public Health. 2021; 21(1):1575. PMC: 8379030. DOI: 10.1186/s12889-021-11615-w. View

3.
Morsy S, Dang T, Kamel M, Zayan A, Makram O, Elhady M . Prediction of Zika-confirmed cases in Brazil and Colombia using Google Trends. Epidemiol Infect. 2018; 146(13):1625-1627. PMC: 9507957. DOI: 10.1017/S0950268818002078. View

4.
Coburn J, Garcia B, Hu L, Jewett M, Kraiczy P, Norris S . Lyme Disease Pathogenesis. Curr Issues Mol Biol. 2020; 42:473-518. PMC: 8046170. DOI: 10.21775/cimb.042.473. View

5.
Kim D, Maxwell S, Le Q . Spatial and Temporal Comparison of Perceived Risks and Confirmed Cases of Lyme Disease: An Exploratory Study of Google Trends. Front Public Health. 2020; 8:395. PMC: 7456861. DOI: 10.3389/fpubh.2020.00395. View