Your browser doesn't support javascript.
loading
Forecasting influenza hospital admissions within English sub-regions using hierarchical generalised additive models.
Mellor, Jonathon; Christie, Rachel; Overton, Christopher E; Paton, Robert S; Leslie, Rhianna; Tang, Maria; Deeny, Sarah; Ward, Thomas.
Afiliação
  • Mellor J; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom. Jonathon.Mellor@UKHSA.gov.uk.
  • Christie R; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
  • Overton CE; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
  • Paton RS; University of Liverpool, Department of Mathematical Sciences, Liverpool, United Kingdom.
  • Leslie R; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
  • Tang M; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
  • Deeny S; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
  • Ward T; UK Health Security Agency, Data Analytics and Surveillance, 10 South Colonnade, London, United Kingdom.
Commun Med (Lond) ; 3(1): 190, 2023 Dec 20.
Article em En | MEDLINE | ID: mdl-38123630
ABSTRACT

BACKGROUND:

Seasonal influenza places a substantial burden annually on healthcare services. Policies during the COVID-19 pandemic limited the transmission of seasonal influenza, making the timing and magnitude of a potential resurgence difficult to ascertain and its impact important to forecast.

METHODS:

We have 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 cycles in admissions, and spatial correlation. Using multiple performance metrics including interval score, coverage, bias, and median absolute error, the predictive performance is evaluated for the 2022-2023 seasonal wave. Performance is measured against autoregressive integrated moving average (ARIMA) and Prophet time series models.

RESULTS:

Across the epidemic phases the hierarchical GAM shows improved performance, at all geographic scales relative to the ARIMA and Prophet models. Temporally, the hierarchical GAM has overall an improved performance at 7 and 14 day time horizons. The performance of the GAM is most sensitive to the flexibility of the smoothing function that measures the national epidemic trend.

CONCLUSIONS:

This study introduces an approach to short-term forecasting of hospital admissions for the influenza virus using hierarchical, spatial, and temporal components. The methodology was designed for the real time forecasting of epidemics. This modelling framework was used across the 2022-2023 winter for healthcare operational planning by the UK Health Security Agency and the National Health Service in England.
Seasonal influenza causes a burden for hospitals and therefore it is useful to be able to accurately predict how many patients might be admitted with the disease. We attempted to predict influenza admissions up to 14 days in the future by creating a computational model that incorporates how the disease is reported and how it spreads. We evaluated our optimised model on data acquired during the winter of 2022-2023 data in England and compared it with previously developed models. Our model was better at modelling how influenza spreads and predicting future hospital admissions than the models we compared it to. Improving how influenza admissions are forecast can enable hospitals to prepare better for increased admissions, enabling improved treatment and reduced death for all patients in hospital over winter.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article