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首页> 外文期刊>Canadian journal of public health: Revue canadienne de sante publique >'Google flu trends' and emergency department triage data predicted the 2009 pandemic H1N1 waves in Manitoba.
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'Google flu trends' and emergency department triage data predicted the 2009 pandemic H1N1 waves in Manitoba.

机译:“ Google流感趋势”和急诊部门的分类数据预测了曼尼托巴省2009年的H1N1流感大流行。

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OBJECTIVES: We assessed the performance of syndromic indicators based on Google Flu Trends (GFT) and emergency department (ED) data for the early detection and monitoring of the 2009 H1N1 pandemic waves in Manitoba. METHODS: Time-series curves for the weekly counts of laboratory-confirmed H1N1 cases in Manitoba during the 2009 pandemic were plotted against the three syndromic indicators: 1) GFT data, based on flu-related Internet search queries, 2) weekly count of all ED visits triaged as influenza-like illness (ED ILI volume), and 3) percentage of all ED visits that were triaged as an ILI (ED ILI percent). A linear regression model was fitted separately for each indicator and correlations with weekly virologic data were calculated for different lag periods for each pandemic wave. RESULTS: All three indicators peaked 1-2 weeks earlier than the epidemic curve of laboratory-confirmed cases. For GFT data, the best-fitting model had about a 2-week lag period in relation to the epidemic curve. Similarly, the best-fitting models for both ED indicators were observed for a time lag of 1-2 weeks. All three indicators performed better as predictors of the virologic time trends during the second wave as compared to the first. There was strong congruence between the time series of the GFT and both the ED ILI volume and the ED ILI percent indicators. CONCLUSION: During an influenza season characterized by high levels of disease activity, GFT and ED indicators provided a good indication of weekly counts of laboratory-confirmed influenza cases in Manitoba 1-2 weeks in advance.
机译:目的:我们根据Google流感趋势(GFT)和急诊室(ED)数据评估了综合症指标的性能,以便对曼尼托巴省的2009年H1N1大流行波进行早期检测和监测。方法:针对三个综合症指标,绘制了2009年大流行期间曼尼托巴省实验室确诊的H1N1病例每周计数的时间序列曲线与以下三个综合指标:1)GFT数据,基于流感相关的互联网搜索查询,2)所有数据的每周计数急诊就诊分类为流感样疾病(ED ILI量),3)在所有急诊就诊分类为ILI的百分比(ED ILI百分比)。为每个指标分别拟合线性回归模型,并针对每个大流行病波的不同滞后时间计算与每周病毒学数据的相关性。结果:所有三个指标均比实验室确诊病例的流行曲线早1-2周达到峰值。对于GFT数据,最适合的模型相对于流行曲线具有约2周的滞后期。同样,两个ED指标的最佳拟合模型被观察了1-2周。与第一波相比,这三个指标在第二波期间作为病毒学时间趋势的预测指标均表现更好。 GFT的时间序列与ED ILI量和ED ILI百分比指标之间有很强的一致性。结论:在特征为高水平疾病活动的流感季节期间,GFT和ED指标可以提前1-2周对曼尼托巴省实验室确诊的流感病例进行每周计数。

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