Modelling Trends of Climatic Variability and Malaria in Ghana Using Vector Autoregression.

Q2 Medicine Malaria Research and Treatment Pub Date : 2018-05-29 eCollection Date: 2018-01-01 DOI:10.1155/2018/6124321
Sylvia Ankamah, Kaku S Nokoe, Wahab A Iddrisu
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引用次数: 10

Abstract

Malaria is considered endemic in over hundred countries across the globe. Many cases of malaria and deaths due to malaria occur in Sub-Saharan Africa. The disease is of great public health concern since it affects people of all age groups more especially pregnant women and children because of their vulnerability. This study sought to use vector autoregression (VAR) models to model the impact of climatic variability on malaria. Monthly climatic data (rainfall, maximum temperature, and relative humidity) from 2010 to 2015 were obtained from the Ghana Meteorological Agency while data on malaria for the same period were obtained from the Ghana Health Service. Results of the Granger and instantaneous causality tests led to a conclusion that malaria is influenced by all three climatic variables. The impulse response analyses indicated that the highest positive effect of maximum temperature, relative humidity, and rainfall on malaria is observed in the months of September, March, and October, respectively. The decomposition of forecast variance indicates varying degree of malaria dependence on the climatic variables, with as high as 12.65% of the variability in the trend of malaria which has been explained by past innovations in maximum temperature alone. This is quite significant and therefore, policy-makers should not ignore temperature when formulating policies to address malaria.

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用向量自回归模拟加纳气候变率和疟疾趋势。
疟疾被认为是全球100多个国家的地方病。许多疟疾病例和疟疾造成的死亡发生在撒哈拉以南非洲。这种疾病引起了重大的公共卫生关注,因为它影响到所有年龄组的人,尤其是孕妇和儿童,因为他们易受伤害。本研究试图使用向量自回归(VAR)模型来模拟气候变异对疟疾的影响。2010年至2015年的月度气候数据(降雨量、最高温度和相对湿度)来自加纳气象局,同期的疟疾数据来自加纳卫生局。格兰杰和瞬时因果检验的结果得出结论,疟疾受到所有三个气候变量的影响。脉冲响应分析表明,最高温度、相对湿度和降雨量分别在9月、3月和10月对疟疾的正向影响最大。预测方差的分解表明疟疾对气候变量的依赖程度不同,疟疾趋势的变异高达12.65%,仅用过去最高温度的创新就可以解释。这是非常重要的,因此,决策者在制定应对疟疾的政策时不应该忽视温度。
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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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