Publication: Modeling seasonal leptospirosis transmission and its association with rainfall and temperature in Thailand using time-series and ARIMAX analyses
Issued Date
2012-07-01
Resource Type
ISSN
19957645
Other identifier(s)
2-s2.0-84861487756
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Mahidol University
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SCOPUS
Bibliographic Citation
Asian Pacific Journal of Tropical Medicine. Vol.5, No.7 (2012), 539-546
Suggested Citation
Sudarat Chadsuthi, Charin Modchang, Yongwimon Lenbury, Sopon Iamsirithaworn, Wannapong Triampo Modeling seasonal leptospirosis transmission and its association with rainfall and temperature in Thailand using time-series and ARIMAX analyses. Asian Pacific Journal of Tropical Medicine. Vol.5, No.7 (2012), 539-546. doi:10.1016/S1995-7645(12)60095-9 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/14748
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Title
Modeling seasonal leptospirosis transmission and its association with rainfall and temperature in Thailand using time-series and ARIMAX analyses
Abstract
Objective: To study the number of leptospirosis cases in relations to the seasonal pattern, and its association with climate factors. Methods: Time series analysis was used to study the time variations in the number of leptospirosis cases. The Autoregressive Integrated Moving Average (ARIMA) model was used in data curve fitting and predicting the next leptospirosis cases. Results: We found that the amount of rainfall was correlated to leptospirosis cases in both regions of interest, namely the northern and northeastern region of Thailand, while the temperature played a role in the northeastern region only. The use of multivariate ARIMA (ARIMAX) model showed that factoring in rainfall (with an 8 months lag) yields the best model for the northern region while the model, which factors in rainfall (with a 10 months lag) and temperature (with an 8 months lag) was the best for the no rtheastern region. Conclusion: The models are able to show the trend in leptospirosis cases and closely fit the recorded data in both regions. The models can also be used to predict the next seasonal peak quite accurately. © 2012 Hainan Medical College.