对新南威尔士州流感造成的超额死亡率的前瞻性监测:可行性和统计方法。

David J Muscatello, Patricia M Morton, Ingrid Evans, Robin Gilmour
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引用次数: 0

摘要

流感是一种严重的疾病,季节性地引起不同但相当大的发病率和死亡率。因此,强大、快速的流感监测系统是一个优先事项。对流感人口死亡率负担的监测是困难的,因为很少有死亡病例经实验室确认感染。Serfling开发了一个统计时间序列模型来估计流感造成的额外死亡。基于这种方法,我们试验了每周监测流感死亡率过高的情况。每周,经认证的死亡信息被载入一个数据库并汇总,以提供在死亡证明上提到肺炎或流感的所有死亡所占比例的时间序列。将一个稳健的回归模型拟合到前一个日历年年底的时间序列,并用于预测当年的死亡率。真报警率和假报警率用于评估表明超额死亡率的备选阈值的敏感性和特异性。2002年1月1日至2007年11月9日期间,新南威尔士州登记的死亡人数为279,968人,其中77%是65岁或65岁以上的人。在此期间,有33,213例(12%)死亡被归类为肺炎和流感。1.2个标准偏差的阈值突出了流感流行时的超额死亡率,而在一年中的其他时间提供了可接受的误报率。在澳大利亚对流感造成的超额死亡率进行前瞻性和合理的快速监测是可行的。建模方法使卫生部门能够对季节性流感的严重程度和缓解战略的有效性作出更客观的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prospective surveillance of excess mortality due to influenza in New South Wales: feasibility and statistical approach.

Influenza is a serious disease that seasonally causes varying but substantial morbidity and mortality. Therefore, strong, rapid influenza surveillance systems are a priority. Surveillance of the population mortality burden of influenza is difficult because few deaths have laboratory confirmation of infection. Serfling developed a statistical time series model to estimate excess deaths due to influenza. Based on this approach we trialled weekly monitoring of excess influenza mortality. Weekly, certified death information was loaded into a database and aggregated to provide a time series of the proportion of all deaths that mention pneumonia or influenza on the death certificate. A robust regression model was fitted to the time series up to the end of the previous calendar year and used to forecast the current year's mortality. True and false alarm rates were used to assess the sensitivity and specificity of alternative thresholds signifying excess mortality. Between 1 January 2002 and 9 November 2007, there were 279,968 deaths registered in New South Wales, of which 77% were among people aged 65 years or more. Over this period 33,213 (12%) deaths were classified as pneumonia and influenza. A threshold of 1.2 standard deviations highlighted excess mortality when influenza was circulating while providing an acceptable false alarm rate at other times of the year. Prospective and reasonably rapid monitoring of excess mortality due to influenza in an Australian setting is feasible. The modelling approach allows health departments to make a more objective assessment of the severity of seasonal influenza and the effectiveness of mitigation strategies.

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