4.6 Article

FluHMM: A simple and flexible Bayesian algorithm for sentinel influenza surveillance and outbreak detection

Journal

STATISTICAL METHODS IN MEDICAL RESEARCH
Volume 28, Issue 6, Pages 1826-1840

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/0962280218776685

Keywords

Influenza; seasonal influenza; disease surveillance; hidden Markov model; epidemics; outbreak detection; Bayesian statistics

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Timely detection of the seasonal influenza epidemic is important for public health action. We introduce FluHMM, a simple but flexible Bayesian algorithm to detect and monitor the seasonal epidemic on sentinel surveillance data. No comparable historical data are required for its use. FluHMM segments a typical influenza surveillance season into five distinct phases with clear interpretation (pre-epidemic, epidemic growth, epidemic plateau, epidemic decline and post-epidemic) and provides the posterior probability of being at each phase for every week in the period under surveillance, given the available data. An alert can be raised when the probability that the epidemic has started exceeds a given threshold. An accompanying R package facilitates the application of this method in public health practice. We apply FluHMM on 12 seasons of sentinel surveillance data from Greece, and show that it achieves very good sensitivity, timeliness and perfect specificity, thereby demonstrating its usefulness. We further discuss advantages and limitations of the method, providing suggestions on how to apply it and highlighting potential future extensions such as with integrating multiple surveillance data streams.

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