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首页> 外文期刊>Epidemics. >A new approach to characterising infectious disease transmission dynamics from sentinel surveillance: Application to the Italian 2009-2010 A/H1N1 influenza pandemic
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A new approach to characterising infectious disease transmission dynamics from sentinel surveillance: Application to the Italian 2009-2010 A/H1N1 influenza pandemic

机译:通过前哨监测来表征传染病传播动态的新方法:在意大利2009-2010年A / H1N1流感大流行中的应用

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Syndromic and virological data are routinely collected by many countries and are often the only information available in real time. The analysis of surveillance data poses many statistical challenges that have not yet been addressed. For instance, the fraction of cases that seek healthcare and are thus detected is often unknown. Here, we propose a general statistical framework that explicitly takes into account the way the surveillance data are generated. Our approach couples a deterministic mathematical model with a statistical description of the reporting process and is applied to surveillance data collected in Italy during the 2009-2010 A/H1N1 influenza pandemic. We estimate that the reproduction number R was initially into the range 1.2-1.4 and that case detection in children was significantly higher than in adults. According to the best fit models, we estimate that school-age children experienced the highest infection rate overall. In terms of both estimated peak-incidence and overall attack rate, according to the Susceptibility and Immunity models the 5-14 years age-class was about 5 times more infected than the 65+ years old age-group and about twice more than the 15-64 years age-class. The multiplying factors are doubled using the Baseline model. Overall, the estimated attack rate was about 16% according to the Baseline model and 30% according to the Susceptibility and Immunity models.
机译:症状和病毒学数据通常由许多国家/地区收集,通常是实时可用的唯一信息。监视数据的分析提出了许多尚未解决的统计挑战。例如,寻求医疗保健并因此被发现的病例比例通常是未知的。在这里,我们提出了一个通用的统计框架,该框架明确考虑了监视数据的生成方式。我们的方法将确定性数学模型与报告过程的统计描述相结合,并应用于在2009-2010年A / H1N1流感大流行期间在意大利收集的监视数据。我们估计生殖数R最初在1.2-1.4范围内,儿童的病例检出率明显高于成人。根据最佳拟合模型,我们估计学龄儿童的总体感染率最高。在估计的高峰发病率和总体发作率方面,根据易感性和免疫模型,5-14岁年龄段的感染率是65岁以上年龄段的5倍,是15岁以上年龄段的两倍。 -64岁年龄段。使用“基线”模型,乘数倍增。总体而言,根据“基线”模型,估计的攻击率约为16%,根据“易感性和免疫”模型,估计的攻击率为30%。

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