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首页> 外文期刊>Proceedings of the Royal Society. Biological sciences >Modelling seasonal variations in the age and incidence of Kawasaki disease to explore possible infectious aetiologies
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Modelling seasonal variations in the age and incidence of Kawasaki disease to explore possible infectious aetiologies

机译:对川崎病年龄和发病率的季节性变化进行建模,以探索可能的传染病病因

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The average age of infection is expected to vary during seasonal epidemics in a way that is predictable from the epidemiological features, such as the duration of infectiousness and the nature of population mixing. However, it is not known whether such changes can be detected and verified using routinely collected data. We examined the correlation between the weekly number and average age of cases using data on pre-vaccination measles and rotavirus. We show that age-incidence patterns can be observed and predicted for these childhood infections. Incorporating additional information about important features of the transmission dynamics improves the correspondence between model predictions and empirical data. We then explored whether knowledge of the age-incidence pattern can shed light on the epidemiological features of diseases of unknown aetiology, such as Kawasaki disease (KD). Our results indicate KD is unlikely to be triggered by a single acute immunizing infection, but is consistent with an infection of longer duration, a non-immunizing infection or co-infection with an acute agent and one with longer duration. Age-incidence patterns can lend insight into important epidemiological features of infections, providing information on transmission-relevant population mixing for known infections and clues about the aetiology of complex paediatric diseases.
机译:在季节性流行期间,预计平均感染年龄会有所变化,这可以从流行病学特征(如传染性持续时间和人口混合的性质)中预测出来。但是,尚不清楚是否可以使用常规收集的数据检测和验证此类更改。我们使用疫苗接种前的麻疹和轮状病毒数据检查了每周病例数与平均年龄之间的相关性。我们显示,可以观察到并预测这些儿童期感染的年龄发病模式。结合有关传输动力学重要特征的附加信息可改善模型预测与经验数据之间的对应关系。然后,我们探讨了关于年龄发病模式的知识是否可以阐明病因不明的疾病(例如川崎病(KD))的流行病学特征。我们的结果表明,KD不太可能由单一的急性免疫感染引发,但与持续时间较长的感染,非免疫感染或与急性病原体的共同感染以及持续时间较长的感染相一致。年龄发生模式可以深入了解感染的重要流行病学特征,提供有关已知感染的传播相关人群混合的信息,以及有关复杂儿科疾病的病因的线索。

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