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  4. Real Time Forecasting of Measles Using Generation-dependent Mathematical Model in Japan, 2018.
 
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Real Time Forecasting of Measles Using Generation-dependent Mathematical Model in Japan, 2018.

Journal
PLoS currents
Journal Volume
10
ISSN
2157-3999
Date Issued
2018-10-15
Author(s)
Andrey Akhmetzhanov  
Lee, Hyojung
Jung, Sung-Mok
Kinoshita, Ryo
Shimizu, Kazuki
Yoshii, Keita
Nishiura, Hiroshi
DOI
10.1371/currents.outbreaks.3cc277d133e2d6078912800748dbb492
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/721588
Abstract
Background: Japan experienced a multi-generation outbreak of measles from March to May, 2018. The present study aimed to capture the transmission dynamics of measles by employing a simple mathematical model, and also forecast the future incidence of cases. Methods: Epidemiological data that consist of the date of illness onset and the date of laboratory confirmation were analysed. A functional model that captures the generation-dependent growth patterns of cases was employed, while accounting for the time delay from illness onset to diagnosis. Results: As long as the number of generations is correctly captured, the model yielded a valid forecast of measles cases, explicitly addressing the reporting delay. Except for the first generation, the effective reproduction number was estimated by generation, assisting evaluation of public health control programs. Conclusions: The variance of the generation time is relatively limited compared with the mean for measles, and thus, the proposed model was able to identify the generation-dependent dynamics accurately during the early phase of the epidemic. Model comparison indicated the most likely number of generations, allowing us to assess how effective public health interventions would successfully prevent the secondary transmission.
Subjects
Forecasting
Measles
Type
journal article

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