Forecasting malaria cases using climatic factors in delhi, India: a time series analysis.

Q2 Medicine
Malaria Research and Treatment Pub Date : 2014-01-01 Epub Date: 2014-07-23 DOI:10.1155/2014/482851
Varun Kumar, Abha Mangal, Sanjeet Panesar, Geeta Yadav, Richa Talwar, Deepak Raut, Saudan Singh
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引用次数: 60

Abstract

Background. Malaria still remains a public health problem in developing countries and changing environmental and climatic factors pose the biggest challenge in fighting against the scourge of malaria. Therefore, the study was designed to forecast malaria cases using climatic factors as predictors in Delhi, India. Methods. The total number of monthly cases of malaria slide positives occurring from January 2006 to December 2013 was taken from the register maintained at the malaria clinic at Rural Health Training Centre (RHTC), Najafgarh, Delhi. Climatic data of monthly mean rainfall, relative humidity, and mean maximum temperature were taken from Regional Meteorological Centre, Delhi. Expert modeler of SPSS ver. 21 was used for analyzing the time series data. Results. Autoregressive integrated moving average, ARIMA (0,1,1) (0,1,0)(12), was the best fit model and it could explain 72.5% variability in the time series data. Rainfall (P value = 0.004) and relative humidity (P value = 0.001) were found to be significant predictors for malaria transmission in the study area. Seasonal adjusted factor (SAF) for malaria cases shows peak during the months of August and September. Conclusion. ARIMA models of time series analysis is a simple and reliable tool for producing reliable forecasts for malaria in Delhi, India.

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利用印度德里气候因素预测疟疾病例:时间序列分析。
背景。疟疾仍然是发展中国家的一个公共卫生问题,不断变化的环境和气候因素是防治疟疾祸害的最大挑战。因此,该研究的目的是利用气候因素作为预测因素来预测印度德里的疟疾病例。方法。2006年1月至2013年12月发生的每月疟疾载玻片阳性病例总数取自德里纳贾夫加尔农村卫生培训中心疟疾诊所的登记册。月平均降雨量、相对湿度和平均最高温度的气候资料取自德里地区气象中心。SPSS ver的专家建模器。21用于分析时间序列数据。结果。自回归综合移动平均ARIMA(0,1,1)(0,1,0)(12)是最佳拟合模型,可以解释时间序列数据中72.5%的变异性。降雨(P值= 0.004)和相对湿度(P值= 0.001)是研究区疟疾传播的显著预测因子。疟疾病例的季节性调整因子(SAF)在8月和9月达到高峰。结论。ARIMA时间序列分析模型是一种简单而可靠的工具,用于对印度德里的疟疾进行可靠的预测。
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来源期刊
Malaria Research and Treatment
Malaria Research and Treatment Medicine-Infectious Diseases
CiteScore
5.20
自引率
0.00%
发文量
0
期刊介绍: Malaria Research and Treatment is a peer-reviewed, Open Access journal that publishes original research articles, review articles, and clinical studies related to all aspects of malaria.
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