From Searches to Sneezes: Evaluating Digital Indicators for Allergic Rhinitis Surveillance in the United Kingdom
Abstract: Background: Allergic rhinitis (AR) affects millions globally. Traditional surveillance methods often lag behind real-time disease activity, hindering timely interventions. Digital epidemiology offers potential for more responsive AR monitoring. Objective: To assess the potential of various digital indicators for AR surveillance in the United Kingdom. Methods: We analyzed weekly data from January 2016 to January 2024, including Google Trends (GT) data, Twitter Frequency (TF), self-reported medication use from the MASK-Air app, and clinical AR incidence data. We employed Spearman correlations, Granger causality tests, SARIMAX, linear regression, and Random Forest regression. Results: Google Trends data showed the strongest correlation with AR incidence (Spearman correlation: 0.73) and the highest Granger causality score (10.33). Regression models using GT data alone performed almost as well as combined models. Twitter data provided slight improvements in test set performance. Self-reported medication use data showed weak correlations with AR incidence and did not significantly improve predictive models. Conclusions: Our findings demonstrate the strong potential of Google Trends data for AR surveillance in the UK. While other digital indicators showed limited predictive power at the national level, social media data may offer value in addressing geographical specificity. Integrating digital surveillance methods, particularly GT data, into public health strategies could enhance AR management and improve outcomes for affected individuals.
External IDs:dblp:conf/bigdataconf/ManoharaJBCRBS24
Loading