Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran

Background: The Malaria Early Warning System is defined as the use of prognostic variables for predicting the occurrence of malaria epidemics several months in advance. The principal objective of this study was to provide a malaria prediction model by using meteorological variables and historical m...

Full description

Bibliographic Details
Main Authors: Afshin Ostovar, Ali Akbar Haghdoost, Abbas Rahimiforoushani, Ahmad Raeisi, Reza Majdzadeh
Format: Article
Language:English
Published: Tehran University of Medical Sciences 2016-05-01
Series:Journal of Arthropod-Borne Diseases
Subjects:
Online Access:https://jad.tums.ac.ir/index.php/jad/article/view/153
id doaj-6b6d93d193a84655ad2583becb428ab5
record_format Article
spelling doaj-6b6d93d193a84655ad2583becb428ab52020-11-25T03:24:00ZengTehran University of Medical SciencesJournal of Arthropod-Borne Diseases 1735-71792322-22712016-05-01102139Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern IranAfshin Ostovar0Ali Akbar Haghdoost1Abbas Rahimiforoushani2Ahmad Raeisi3Reza Majdzadeh4Epidemiology and Biostatistics Department, School of Public Health, Tehran University of Medical Sciences, Tehran, IranResearch Center for Modeling in Health, Institute for Future Studies in Health, Kerman University of Medical Sciences, Kerman, IranEpidemiology and Biostatistics Department, School of Public Health, Tehran University of Medical Sciences, Tehran, IranMalaria Control Office of MOH and ME, Tehran University of Medical Sciences, Tehran, IranKnowledge Utilization Research Center, Tehran University of Medical Sciences, Tehran, Iran Background: The Malaria Early Warning System is defined as the use of prognostic variables for predicting the occurrence of malaria epidemics several months in advance. The principal objective of this study was to provide a malaria prediction model by using meteorological variables and historical malaria morbidity data for malaria-en­demic areas in south eastern Iran. Methods: A total of 2002 locally transmitted microscopically confirmed malaria cases, which occurred in the Minab district of Hormozgan Province in Iran over a period of 6 years from March 2003 to March 2009, were analysed. Meteorological variables (the rainfall, temperature, and relative humidity in this district) were also assessed. Monthly and weekly autocorrelation functions, partial autocorrelation functions, and cross-correlation graphs were examined to explore the relationship between the historical morbidity data and meteorological variables and the number of cases of malaria. Having used univariate auto-regressive integrated moving average or transfer function models, significant predictors among the meteorological variables were selected to predict the number of monthly and weekly malaria cases. Ljung-Box statistics and stationary R-squared were used for model diagnosis and model fit, respec­tively. Results: The weekly model had a better fit (R2= 0.863) than the monthly model (R2= 0.424). However, the Ljung-Box statistic was significant for the weekly model. In addition to autocorrelations, meteorological variables were not significant, except for different orders of maximum and minimum temperatures in the monthly model. Conclusions: Time-series models can be used to predict malaria incidence with acceptable accuracy in a malaria early-warning system. The applicability of using routine meteorological data in statistical models is seriously limited. https://jad.tums.ac.ir/index.php/jad/article/view/153MalariaModelsStatisticalTime-SeriesIran
collection DOAJ
language English
format Article
sources DOAJ
author Afshin Ostovar
Ali Akbar Haghdoost
Abbas Rahimiforoushani
Ahmad Raeisi
Reza Majdzadeh
spellingShingle Afshin Ostovar
Ali Akbar Haghdoost
Abbas Rahimiforoushani
Ahmad Raeisi
Reza Majdzadeh
Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
Journal of Arthropod-Borne Diseases
Malaria
Models
Statistical
Time-Series
Iran
author_facet Afshin Ostovar
Ali Akbar Haghdoost
Abbas Rahimiforoushani
Ahmad Raeisi
Reza Majdzadeh
author_sort Afshin Ostovar
title Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
title_short Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
title_full Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
title_fullStr Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
title_full_unstemmed Time Series Analysis of Meteorological Factors Influencing Malaria in South Eastern Iran
title_sort time series analysis of meteorological factors influencing malaria in south eastern iran
publisher Tehran University of Medical Sciences
series Journal of Arthropod-Borne Diseases
issn 1735-7179
2322-2271
publishDate 2016-05-01
description Background: The Malaria Early Warning System is defined as the use of prognostic variables for predicting the occurrence of malaria epidemics several months in advance. The principal objective of this study was to provide a malaria prediction model by using meteorological variables and historical malaria morbidity data for malaria-en­demic areas in south eastern Iran. Methods: A total of 2002 locally transmitted microscopically confirmed malaria cases, which occurred in the Minab district of Hormozgan Province in Iran over a period of 6 years from March 2003 to March 2009, were analysed. Meteorological variables (the rainfall, temperature, and relative humidity in this district) were also assessed. Monthly and weekly autocorrelation functions, partial autocorrelation functions, and cross-correlation graphs were examined to explore the relationship between the historical morbidity data and meteorological variables and the number of cases of malaria. Having used univariate auto-regressive integrated moving average or transfer function models, significant predictors among the meteorological variables were selected to predict the number of monthly and weekly malaria cases. Ljung-Box statistics and stationary R-squared were used for model diagnosis and model fit, respec­tively. Results: The weekly model had a better fit (R2= 0.863) than the monthly model (R2= 0.424). However, the Ljung-Box statistic was significant for the weekly model. In addition to autocorrelations, meteorological variables were not significant, except for different orders of maximum and minimum temperatures in the monthly model. Conclusions: Time-series models can be used to predict malaria incidence with acceptable accuracy in a malaria early-warning system. The applicability of using routine meteorological data in statistical models is seriously limited.
topic Malaria
Models
Statistical
Time-Series
Iran
url https://jad.tums.ac.ir/index.php/jad/article/view/153
work_keys_str_mv AT afshinostovar timeseriesanalysisofmeteorologicalfactorsinfluencingmalariainsoutheasterniran
AT aliakbarhaghdoost timeseriesanalysisofmeteorologicalfactorsinfluencingmalariainsoutheasterniran
AT abbasrahimiforoushani timeseriesanalysisofmeteorologicalfactorsinfluencingmalariainsoutheasterniran
AT ahmadraeisi timeseriesanalysisofmeteorologicalfactorsinfluencingmalariainsoutheasterniran
AT rezamajdzadeh timeseriesanalysisofmeteorologicalfactorsinfluencingmalariainsoutheasterniran
_version_ 1724604078775861248