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A Predictive Model of the Start of Annual Influenza Epidemics.

Elisabet Castro-BlancoMaria Rosa Dalmau LlorcaCarina Aguilar MartínNoèlia Carrasco-QuerolAlessandra Queiroga GonçalvesZojaina Hernández RojasErmengol ComaJosé Fernández-Saez
Published in: Microorganisms (2024)
Influenza is a respiratory disease that causes annual epidemics during cold seasons. These epidemics increase pressure on healthcare systems, sometimes provoking their collapse. For this reason, a tool is needed to predict when an influenza epidemic will occur so that the healthcare system has time to prepare for it. This study therefore aims to develop a statistical model capable of predicting the onset of influenza epidemics in Catalonia, Spain. Influenza seasons from 2011 to 2017 were used for model training, and those from 2017 to 2018 were used for validation. Logistic regression, Support Vector Machine, and Random Forest models were used to predict the onset of the influenza epidemic. The logistic regression model was able to predict the start of influenza epidemics at least one week in advance, based on clinical diagnosis rates of various respiratory diseases and meteorological variables. This model achieved the best punctual estimates for two of three performance metrics. The most important variables in the model were the principal components of bronchiolitis rates and mean temperature. The onset of influenza epidemics can be predicted from clinical diagnosis rates of various respiratory diseases and meteorological variables. Future research should determine whether predictive models play a key role in preventing influenza.
Keyphrases
  • healthcare
  • randomized controlled trial
  • air pollution
  • climate change
  • infectious diseases
  • clinical trial
  • machine learning