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A comparative analysis of three vector-borne diseases across Australia using seasonal and meteorological models

机译:使用季节和气象模型对澳大利亚三种媒介传播疾病进行比较分析

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摘要

Ross River virus (RRV), Barmah Forest virus (BFV), and dengue are three common mosquito-borne diseases in Australia that display notable seasonal patterns. Although all three diseases have been modeled on localized scales, no previous study has used harmonic models to compare seasonality of mosquito-borne diseases on a continent-wide scale. We fit Poisson harmonic regression models to surveillance data on RRV, BFV, and dengue (from 1993, 1995 and 1991, respectively, through 2015) incorporating seasonal, trend, and climate (temperature and rainfall) parameters. The models captured an average of 50–65% variability of the data. Disease incidence for all three diseases generally peaked in January or February, but peak timing was most variable for dengue. The most significant predictor parameters were trend and inter-annual periodicity for BFV, intra-annual periodicity for RRV, and trend for dengue. We found that a Temperature Suitability Index (TSI), designed to reclassify climate data relative to optimal conditions for vector establishment, could be applied to this context. Finally, we extrapolated our models to estimate the impact of a false-positive BFV epidemic in 2013. Creating these models and comparing variations in periodicities may provide insight into historical outbreaks as well as future patterns of mosquito-borne diseases.
机译:罗斯河病毒(RRV),巴马森林病毒(BFV)和登革热是澳大利亚三种常见的蚊媒疾病,表现出明显的季节性特征。尽管所有这三种疾病均已在局部范围内建模,但先前的研究均未使用谐波模型在整个大陆范围内比较蚊媒疾病的季节性。我们将Poisson谐波回归模型拟合到RRV,BFV和登革热的监测数据(分别从1993年,1995年和1991年到2015年),其中包括季节,趋势和气候(温度和降雨)参数。这些模型平均捕获了数据的50–65%的变异性。这三种疾病的发病率通常在1月或2月达到高峰,但登革热的高峰时间变化最大。最重要的预测参数是BFV的趋势和年际周期性,RRV的年内周期性和登革热趋势。我们发现,旨在将气候数据相对于载体建立的最佳条件进行重新分类的温度适应性指数(TSI)可以应用于此背景。最后,我们外推模型以估计2013年BFV假阳性流行的影响。创建这些模型并比较周期性变化可提供对历史暴发以及蚊子传播疾病未来模式的了解。

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