MEM spectral analysis for predicting influenza epidemics in Japan

MEM spectral analysis for predicting influenza epidemics in Japan

  • نوع فایل : کتاب
  • زبان : انگلیسی
  • مؤلف : Ayako Sumi Ken-ichi Kamo
  • چاپ و سال / کشور: 2011

Description

Objectives The prediction of influenza epidemics has long been the focus of attention in epidemiology and mathematical biology. In this study, we tested whether time series analysis was useful for predicting the incidence of influenza in Japan. Methods The method of time series analysis we used consists of spectral analysis based on the maximum entropy method (MEM) in the frequency domain and the nonlinear least squares method in the time domain. Using this time series analysis, we analyzed the incidence data of influenza in Japan from January 1948 to December 1998; these data are unique in that they covered the periods of pandemics in Japan in 1957, 1968, and 1977. Results On the basis of the MEM spectral analysis, we identified the periodic modes explaining the underlying variations of the incidence data. The optimum least squares fitting (LSF) curve calculated with the periodic modes reproduced the underlying variation of the incidence data. An extension of the LSF curve could be used to predict the incidence of influenza quantitatively. Conclusions Our study suggested that MEM spectral analysis would allow us to model temporal variations of influenza epidemics with multiple periodic modes much more effectively than by using the method of conventional time series analysis, which has been used previously to investigate the behavior of temporal variations in influenza data.
Environ Health Prev Med DOI 10.1007/s12199-011-0223-0 Received: 30 September 2010 / Accepted: 15 May 2011
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