Lameck Ondieki Agasa, Faith Thuita, Thomas Achia, Antony Karanja
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The model addresses over-dispersion and excess zeros in the data, providing a more accurate depiction of DF dynamics.</p><p><strong>Results: </strong>The ZIP model revealed significant associations between climatic variables and DF incidence. Humidity (β = 0.0578, standard error [s.e.] = 0.0024, <i>z</i> = 24.157, <i>p</i> < 2e-16) and temperature (β = 0.0558, s.e. = 0.0053, <i>z</i> = 10.497, <i>p</i> < 0.01) showed a positive relationship with dengue cases, while rainfall (β = -0.0045, s.e. = 0.0003, <i>z</i> = -16.523, <i>p</i> < 0.01) had a significant negative effect. The over-dispersion test confirmed excess variability in the data (O statistic = 456.3, <i>p</i> = 0.004), and the Vuong test supported the use of the ZIP model over a standard Poisson model. Model comparison indicated superior fit for the ZIP model (akaike information criterion [AIC] = 5230.959 vs. 27061.367 for Poisson), effectively accounting for zero-inflation.</p><p><strong>Conclusion: </strong>The results suggest that higher humidity and temperature favor dengue transmission, while heavy rainfall may disrupt mosquito breeding, reducing cases. These findings provide a basis for targeted public health interventions.</p><p><strong>Contribution: </strong>This study enhances understanding of DF-climate interactions in Kenya, supporting the application of ZIP modelling for improved disease surveillance and control strategies.</p>","PeriodicalId":44723,"journal":{"name":"Journal of Public Health in Africa","volume":"16 1","pages":"781"},"PeriodicalIF":0.6000,"publicationDate":"2025-02-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11905199/pdf/","citationCount":"0","resultStr":"{\"title\":\"Analysing dengue fever spread in Kenya using the Zero-Inflated Poisson model.\",\"authors\":\"Lameck Ondieki Agasa, Faith Thuita, Thomas Achia, Antony Karanja\",\"doi\":\"10.4102/jphia.v16i1.781\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Dengue fever (DF), transmitted by <i>Aedes</i> mosquitoes, remains a major public health concern in tropical and subtropical regions. Understanding the influence of climatic variables on DF incidence is essential for improving outbreak prediction and control measures.</p><p><strong>Aim: </strong>This study analysed the impact of climatic factors on DF incidence in Kenya using a Zero-Inflated Poisson (ZIP) model.</p><p><strong>Setting: </strong>The study focused on DF cases in Kenya from 2019 to 2021.</p><p><strong>Methods: </strong>A ZIP model was applied to monthly dengue case data and associated climatic variables, such as temperature, rainfall, and humidity. The model addresses over-dispersion and excess zeros in the data, providing a more accurate depiction of DF dynamics.</p><p><strong>Results: </strong>The ZIP model revealed significant associations between climatic variables and DF incidence. Humidity (β = 0.0578, standard error [s.e.] = 0.0024, <i>z</i> = 24.157, <i>p</i> < 2e-16) and temperature (β = 0.0558, s.e. = 0.0053, <i>z</i> = 10.497, <i>p</i> < 0.01) showed a positive relationship with dengue cases, while rainfall (β = -0.0045, s.e. = 0.0003, <i>z</i> = -16.523, <i>p</i> < 0.01) had a significant negative effect. The over-dispersion test confirmed excess variability in the data (O statistic = 456.3, <i>p</i> = 0.004), and the Vuong test supported the use of the ZIP model over a standard Poisson model. Model comparison indicated superior fit for the ZIP model (akaike information criterion [AIC] = 5230.959 vs. 27061.367 for Poisson), effectively accounting for zero-inflation.</p><p><strong>Conclusion: </strong>The results suggest that higher humidity and temperature favor dengue transmission, while heavy rainfall may disrupt mosquito breeding, reducing cases. 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引用次数: 0
摘要
背景:由伊蚊传播的登革热(DF)仍然是热带和亚热带地区的一个主要公共卫生问题。了解气候变量对登革热发病率的影响对改进疫情预测和控制措施至关重要。目的:本研究使用零膨胀泊松(ZIP)模型分析了气候因素对肯尼亚DF发病率的影响。背景:该研究的重点是2019年至2021年在肯尼亚发生的登革热病例。方法:采用ZIP模型对登革热月病例数据和相关气候变量(如温度、降雨和湿度)进行分析。该模型解决了数据中的过分散和多余的零,提供了更准确的DF动力学描述。结果:ZIP模型揭示了气候变量与DF发病率之间的显著相关性。湿度(β = 0.0578,标准误差[s.e。] = 0.0024, z = 24.157, p < 2e-16)和气温(β = 0.0558, s.e = 0.0053, z = 10.497, p < 0.01)与登革热病例呈正相关,而降雨量(β = -0.0045, s.e = 0.0003, z = -16.523, p < 0.01)呈显著负相关。过度分散检验证实了数据的过度变异性(O统计量= 456.3,p = 0.004), Vuong检验支持使用ZIP模型而不是标准泊松模型。模型比较表明,ZIP模型的拟合度更高(akaike信息准则[AIC] = 5230.959 vs.泊松的27061.367),有效地解释了零通货膨胀。结论:较高的湿度和温度有利于登革热的传播,而强降雨可能会破坏蚊子的繁殖,减少病例。这些发现为有针对性的公共卫生干预提供了基础。贡献:本研究增强了对肯尼亚df -气候相互作用的理解,支持应用ZIP模型改进疾病监测和控制战略。
Analysing dengue fever spread in Kenya using the Zero-Inflated Poisson model.
Background: Dengue fever (DF), transmitted by Aedes mosquitoes, remains a major public health concern in tropical and subtropical regions. Understanding the influence of climatic variables on DF incidence is essential for improving outbreak prediction and control measures.
Aim: This study analysed the impact of climatic factors on DF incidence in Kenya using a Zero-Inflated Poisson (ZIP) model.
Setting: The study focused on DF cases in Kenya from 2019 to 2021.
Methods: A ZIP model was applied to monthly dengue case data and associated climatic variables, such as temperature, rainfall, and humidity. The model addresses over-dispersion and excess zeros in the data, providing a more accurate depiction of DF dynamics.
Results: The ZIP model revealed significant associations between climatic variables and DF incidence. Humidity (β = 0.0578, standard error [s.e.] = 0.0024, z = 24.157, p < 2e-16) and temperature (β = 0.0558, s.e. = 0.0053, z = 10.497, p < 0.01) showed a positive relationship with dengue cases, while rainfall (β = -0.0045, s.e. = 0.0003, z = -16.523, p < 0.01) had a significant negative effect. The over-dispersion test confirmed excess variability in the data (O statistic = 456.3, p = 0.004), and the Vuong test supported the use of the ZIP model over a standard Poisson model. Model comparison indicated superior fit for the ZIP model (akaike information criterion [AIC] = 5230.959 vs. 27061.367 for Poisson), effectively accounting for zero-inflation.
Conclusion: The results suggest that higher humidity and temperature favor dengue transmission, while heavy rainfall may disrupt mosquito breeding, reducing cases. These findings provide a basis for targeted public health interventions.
Contribution: This study enhances understanding of DF-climate interactions in Kenya, supporting the application of ZIP modelling for improved disease surveillance and control strategies.
期刊介绍:
The Journal of Public Health in Africa (JPHiA) is a peer-reviewed, academic journal that focuses on health issues in the African continent. The journal editors seek high quality original articles on public health related issues, reviews, comments and more. The aim of the journal is to move public health discourse from the background to the forefront. The success of Africa’s struggle against disease depends on public health approaches.