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Rotavirus Seasonality: An Application of Singular Spectrum Analysis and Polyharmonic Modeling

机译:轮状病毒的季节性:奇异频谱分析和多谐波建模的应用

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摘要

The dynamics of many viral infections, including rotaviral infections (RIs), are known to have a complex non-linear, non-stationary structure with strong seasonality indicative of virus and host sensitivity to environmental conditions. However, analytical tools suitable for the identification of seasonal peaks are limited. We introduced a two-step procedure to determine seasonal patterns in RI and examined the relationship between daily rates of rotaviral infection and ambient temperature in cold climates in three Russian cities: Chelyabinsk, Yekaterinburg, and Barnaul from 2005 to 2011. We described the structure of temporal variations using a new class of singular spectral analysis (SSA) models based on the “Caterpillar” algorithm. We then fitted Poisson polyharmonic regression (PPHR) models and examined the relationship between daily RI rates and ambient temperature. In SSA models, RI rates reached their seasonal peaks around 24 February, 5 March, and 12 March (i.e., the 55.17 ± 3.21, 64.17 ± 5.12, and 71.11 ± 7.48 day of the year) in Chelyabinsk, Yekaterinburg, and Barnaul, respectively. Yet, in all three cities, the minimum temperature was observed, on average, to be on 15 January, which translates to a lag between the peak in disease incidence and time of temperature minimum of 38–40 days for Chelyabinsk, 45–49 days in Yekaterinburg, and 56–59 days in Barnaul. The proposed approach takes advantage of an accurate description of the time series data offered by the SSA-model coupled with a straightforward interpretation of the PPHR model. By better tailoring analytical methodology to estimate seasonal features and understand the relationships between infection and environmental conditions, regional and global disease forecasting can be further improved.
机译:已知许多病毒感染(包括轮状病毒感染(RI))的动力学具有复杂的非线性,非平稳结构,具有强烈的季节性,表明病毒和宿主对环境条件敏感。但是,适用于识别季节性高峰的分析工具有限。我们引入了两步程序来确定RI的季节性模式,并研究了俄罗斯三个城市(车里雅宾斯克,叶卡捷琳堡和巴尔瑙尔)在2005年至2011年期间轮状病毒感染的日发病率与周围温度之间的关系。使用基于“ Caterpillar”算法的新型奇异频谱分析(SSA)模型进行时间变化。然后,我们拟合了泊松(Poisson)多谐回归(PPHR)模型,并检查了每日RI率与环境温度之间的关系。在SSA模型中,分别在车里雅宾斯克,叶卡捷琳堡和Barnaul的RI率分别在2月24日,3月5日和3月12日(即一年中的55.17±3.21、64.17±5.12和71.11±7.48日)达到季节高峰。 。然而,在所有三个城市中,平均最低温度均在1月15日观测到,这意味着疾病发生的高峰与车里雅宾斯克45-49天的最低温度时间38-40天之间存在时滞。在叶卡捷琳堡,在Barnaul停留56-59天。所提出的方法利用了SSA模型提供的时间序列数据的准确描述以及PPHR模型的直接解释。通过更好地定制分析方法以估计季节性特征并了解感染与环境状况之间的关系,可以进一步改善区域和全球疾病的预测。

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