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Accurate influenza forecasts using type-specific incidence data for small geographic units

机译:使用小型地理单位的特定类型的发病率数据进行准确的流感预测

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Influenza incidence forecasting is used to facilitate better health system planning and could potentially be used to allow at-risk individuals to modify their behavior during a severe seasonal influenza epidemic or a novel respiratory pandemic. For example, the US Centers for Disease Control and Prevention (CDC) runs an annual competition to forecast influenza-like illness (ILI) at the regional and national levels in the US, based on a standard discretized incidence scale. Here, we use a suite of forecasting models to analyze type-specific incidence at the smaller spatial scale of clusters of nearby counties. We used data from point-of-care (POC) diagnostic machines over three seasons, in 10 clusters, capturing: 57 counties; 1,061,891 total specimens; and 173,909 specimens positive for Influenza A. Total specimens were closely correlated with comparable CDC ILI data. Mechanistic models were substantially more accurate when forecasting influenza A positive POC data than total specimen POC data, especially at longer lead times. Also, models that fit subpopulations of the cluster (individual counties) separately were better able to forecast clusters than were models that directly fit to aggregated cluster data. Public health authorities may wish to consider developing forecasting pipelines for type-specific POC data in addition to ILI data. Simple mechanistic models will likely improve forecast accuracy when applied at small spatial scales to pathogen-specific data before being scaled to larger geographical units and broader syndromic data. Highly local forecasts may enable new public health messaging to encourage at-risk individuals to temporarily reduce their social mixing during seasonal peaks and guide public health intervention policy during potentially severe novel influenza pandemics.
机译:流感的发病率预测用于促进更好的健康系统规划,并且可能用于允许风险的个体在严重的季节性流感流行病或新型呼吸大流行期间修改其行为。例如,美国疾病控制和预防中心(CDC)根据标准离散意义规模,在美国区域和国家层面预测甲型疾病(ILI)的年度竞争。在这里,我们使用一套预测模型来分析附近县群集群的较小空间等级的类型特异性发病率。我们在三个季节中使用了3个季节的护理点(POC)诊断机的数据,捕捉:57个县; 1,061,891总标本;对于流感A阳性的173,909个标本阳性。总标本与可比的CDC ILI数据密切相关。当预测流感的阳性POC数据时,机械模型比全标本数据总数据相比,尤其是在更长的交货时间。此外,群体(个体县)的亚群分别适应群集的模型比直接适合聚合群集数据的模型更好地预测群集。除ILI数据外,公共卫生当局可能希望考虑为特定于特定的POC数据进行预测管道。在将小空间尺度上施加到较大的地理单位和更广泛的综合征数据之前,简单的机械模型可能会改善预测准确性。高度本地预测可能使新的公共卫生消息传递能够鼓励风险的个人在季节性峰值期间暂时减少社交混合,并在潜在的严重新的流感流行病中指导公共卫生干预政策。

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