Predictions by early indicators of the time and height of yearly influenza outbreaks in Sweden
Abstract
Aims: Methods for prediction of the peak of the influenza from early observations are
suggested. These predictions can be used for planning purposes. Methods: In this
study, new robust methods are described and applied on weekly Swedish data on
influenza-like illness (ILI) and weekly laboratory diagnoses of influenza (LDI). Both
simple and advanced rules for how to predict the time and height of the peak of LDI
are suggested. The predictions are made using covariates calculated from data in early
LDI reports. The simple rules are based on the observed LDI values while the
advanced ones are based on smoothing by unimodal regression. The suggested
predictors were evaluated by cross-validation and by application to the observed
seasons. Results: The relation between ILI and LDI was investigated and it was found
that the ILI variable is not a good proxy for the LDI variable. The advanced prediction
rule regarding the time of the peak of LDI had a median error of 0.9 weeks, and the
advanced prediction rule for the height of the peak had a median deviation of 28%.
Conclusions: The statistical methods for predictions have practical usefulness.
University
Göteborg University
Institution
Statistical Research Unit, Department of Economics
Collections
View/ Open
Date
2007-12-13Author
Andersson, Eva
Kühlmann-Berenzon, Sharon
Linde, Annika
Schiöler, Linus
Rubinova, Sandra
Frisén, Marianne
Keywords
Prediction
Influenza
Outbreak
Publication type
report
ISSN
0349-8034
Series/Report no.
Research Report
2007:7
Language
eng