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Effect of climate on incidence of respiratory syncytial virus infections in a refugee camp in Kenya: A non-Gaussian time-series analysis

机译:气候对肯尼亚一个难民营中呼吸道合胞病毒感染发生率的影响:非高斯时间序列分析

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摘要

Respiratory syncytial virus (RSV) is one of the major causes of acute lower respiratory tract infections (ALRTI) in children. Children younger than 1 year are the most susceptible to RSV infection. RSV infections occur seasonally in temperate climate regions. Based on RSV surveillance and climatic data, we developed statistical models that were assessed and compared to predict the relationship between weather and RSV incidence among refugee children younger than 5 years in Dadaab refugee camp in Kenya. Most time-series analyses rely on the assumption of Gaussian-distributed data. However, surveillance data often do not have a Gaussian distribution. We used a generalized linear model (GLM) with a sinusoidal component over time to account for seasonal variation and extended it to a generalized additive model (GAM) with smoothing cubic splines. Climatic factors were included as covariates in the models before and after timescale decompositions, and the results were compared. Models with decomposed covariates fit RSV incidence data better than those without. The Poisson GAM with decomposed covariates of climatic factors fit the data well and had a higher explanatory and predictive power than GLM. The best model predicted the relationship between atmospheric conditions and RSV infection incidence among children younger than 5 years. This knowledge helps public health officials to prepare for, and respond more effectively to increasing RSV incidence in low-resource regions or communities.
机译:呼吸道合胞病毒(RSV)是儿童急性下呼吸道感染(ALRTI)的主要原因之一。 1岁以下的儿童最容易感染RSV。 RSV感染在温带气候地区季节性发生。基于RSV监视和气候数据,我们开发了统计模型,该模型进行了评估和比较,以预测肯尼亚Dadaab难民营中5岁以下难民儿童的天气与RSV发生率之间的关系。大多数时间序列分析都依赖于高斯分布数据的假设。但是,监视数据通常没有高斯分布。我们使用随时间变化的正弦分量的广义线性模型(GLM)来考虑季节变化,并将其扩展为具有平滑三次样条的广义加性模型(GAM)。在时间尺度分解前后,气候因素作为协变量包括在模型中,并对结果进行比较。具有分解的协变量的模型比没有模型的模型更适合RSV发病率数据。具有气候因子协变量分解的Poisson GAM与数据非常吻合,并且比GLM具有更高的解释力和预测力。最佳模型预测了5岁以下儿童的大气状况与RSV感染发生率之间的关系。这些知识可帮助公共卫生官员为资源匮乏地区或社区中日益严重的RSV发病率做好准备并做出更有效的反应。

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