Abstract
Abstract
Background
“Chickenpox” is a highly infectious disease caused by the varicella-zoster virus, influenced by seasonal and spatial factors. Dealing with varicella-zoster epidemics can be a substantial drain on health-authority resources. Methods that improve the ability to locally predict case numbers from time-series data sets every week are therefore worth developing.
Methods
Simple-to-extract trend attributes from published univariate weekly case-number univariate data sets were used to generate multivariate data for Hungary covering 10 years. That attribute-enhanced data set was assessed by machine learning (ML) and deep learning (DL) models to generate weekly case forecasts from next week (t0) to 12 weeks forward (t+12). The ML and DL predictions were compared with those generated by multilinear regression and univariate prediction methods.
Results
Support vector regression generates the best predictions for weeks t0 and t+1, whereas extreme gradient boosting generates the best predictions for weeks t+3 to t+12. Long-short-term memory only provides comparable prediction accuracy to the ML models for week t+12. Multi–K-fold cross validation reveals that overall the lowest prediction uncertainty is associated with the tree-ensemble ML models.
Conclusion
The novel trend-attribute method offers the potential to reduce prediction errors and improve transparency for chickenpox time series.
Publisher
Ovid Technologies (Wolters Kluwer Health)
Subject
Virology,Infectious Diseases,Public Health, Environmental and Occupational Health,Immunology,Immunology and Allergy,Parasitology,Epidemiology