Forecasting influenza hospital admissions within English sub-regions using hierarchical generalised additive models
Jonathon Mellor, Rachel Christie, Christopher E Overton, Robert S, Paton, Rhianna Leslie, Maria Tang, Sarah Deeny, Thomas Ward

TL;DR
This paper presents a hierarchical GAM approach for short-term regional influenza hospital admission forecasting in England, outperforming traditional ARIMA models and aiding healthcare planning during flu seasons.
Contribution
Introduces a novel hierarchical GAM model incorporating spatio-temporal data for accurate short-term influenza hospital admission forecasts.
Findings
GAM outperforms ARIMA in predictive accuracy across regions and epidemic phases.
14-day forecasts with GAM are comparable to 7-day ARIMA predictions.
Model sensitivity is highest to the epidemic trend smoothing function.
Abstract
Background: Seasonal influenza causes a substantial burden on healthcare services over the winter period when these systems are already under pressure. Policies during the COVID-19 pandemic supressed the transmission of season influenza, making the timing and magnitude of a potential resurgence difficult to predict. Methods: We developed a hierarchical generalised additive model (GAM) for the short-term forecasting of hospital admissions with a positive test for the influenza virus sub-regionally across England. The model incorporates a multi-level structure of spatio-temporal splines, weekly seasonality, and spatial correlation. Using multiple performance metrics including interval score, coverage, bias, and median absolute error, the predictive performance is evaluated for the 2022/23 seasonal wave. Performance is measured against an autoregressive integrated moving average (ARIMA)…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Influenza Virus Research Studies · Global Health Care Issues
