Predicting epidemics using search engine data: a comparative study on measles in the largest countries of Europe

Author:

Samaras LoukasORCID,Sicilia Miguel-Angel,García-Barriocanal Elena

Abstract

Abstract Background In recent years new forms of syndromic surveillance that use data from the Internet have been proposed. These have been developed to assist the early prediction of epidemics in various cases and diseases. It has been found that these systems are accurate in monitoring and predicting outbreaks before these are observed in population and, therefore, they can be used as a complement to other methods. In this research, our aim is to examine a highly infectious disease, measles, as there is no extensive literature on forecasting measles using Internet data, Methods This research has been conducted with official data on measles for 5 years (2013–2018) from the competent authority of the European Union (European Center of Disease and Prevention - ECDC) and data obtained from Google Trends by using scripts coded in Python. We compared regression models forecasting the development of measles in the five countries. Results Results show that measles can be estimated and predicted through Google Trends in terms of time, volume and the overall spread. The combined results reveal a strong relationship of measles cases with the predicted cases (correlation coefficient R= 0.779 in two-tailed significance p< 0.01). The mean standard error was relatively low 45.2 (12.19%) for the combined results. However, major differences and deviations were observed for countries with a relatively low impact of measles, such as the United Kingdom and Spain. For these countries, alternative models were tested in an attempt to improve the results. Conclusions The estimation of measles cases from Google Trends produces acceptable results and can help predict outbreaks in a robust and sound manner, at least 2 months in advance. Python scripts can be used individually or within the framework of an integrated Internet surveillance system for tracking epidemics as the one addressed here.

Publisher

Springer Science and Business Media LLC

Subject

Public Health, Environmental and Occupational Health

Reference32 articles.

1. Johnson HA, Wagner MM, Hogan WR, Chapman W, Olszewski RT, Dowling J, Barnas G. Analysis of web access logs for surveillance of influenza. Medinfo. 2004;11(Pt 2):1202–26.

2. Rees EE, Ng V, Gachon P, Mawudeku D, McKenney D, Pedlar J, Yemshanov D, Parmely J, Knox J. Early detection and prediction of infectious disease outbreaks. CCDR. 2019;45:5 ISSN: 1481-8531.

3. Christaki E. New technologies in predicting, preventing and controlling emerging infectious diseases. Virulence. 2015;6:558–65. https://doi.org/10.1080/21505594.2015.1040975.

4. Google. Google Trends. 2018. https://trends.google.com/trend (Accessed 11 Nov 2018).

5. Google. Google Flu Trends. 2019. https://www.google.org/flutrends/about/ (Accessed 04 May 2019).

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