Zheng Wei, Aitken Robert, Muscatello David J, Churches Tim
Centre for Epidemiology and Research, New South Wales Department of Health, Sydney, Australia.
BMC Public Health. 2007 Sep 19;7:250. doi: 10.1186/1471-2458-7-250.
Although syndromic surveillance systems are gaining acceptance as useful tools in public health, doubts remain about whether the anticipated early warning benefits exist. Many assessments of this question do not adequately account for the confounding effects of autocorrelation and trend when comparing surveillance time series and few compare the syndromic data stream against a continuous laboratory-based standard. We used time series methods to assess whether monitoring of daily counts of Emergency Department (ED) visits assigned a clinical diagnosis of influenza could offer earlier warning of increased incidence of viral influenza in the population compared with surveillance of daily counts of positive influenza test results from laboratories.
For the five-year period 2001 to 2005, time series were assembled of ED visits assigned a provisional ED diagnosis of influenza and of laboratory-confirmed influenza cases in New South Wales (NSW), Australia. Poisson regression models were fitted to both time series to minimise the confounding effects of trend and autocorrelation and to control for other calendar influences. To assess the relative timeliness of the two series, cross-correlation analysis was performed on the model residuals. Modelling and cross-correlation analysis were repeated for each individual year.
Using the full five-year time series, short-term changes in the ED time series were estimated to precede changes in the laboratory series by three days. For individual years, the estimate was between three and 18 days. The time advantage estimated for the individual years 2003-2005 was consistently between three and four days.
Monitoring time series of ED visits clinically diagnosed with influenza could potentially provide three days early warning compared with surveillance of laboratory-confirmed influenza. When current laboratory processing and reporting delays are taken into account this time advantage is even greater.
尽管症状监测系统作为公共卫生领域的有用工具正逐渐得到认可,但对于其是否能带来预期的早期预警效益仍存在疑虑。许多针对这个问题的评估在比较监测时间序列时,没有充分考虑自相关和趋势的混杂效应,而且很少将症状数据与基于实验室的连续标准进行比较。我们使用时间序列方法来评估,与监测实验室每日流感检测阳性结果计数相比,对急诊科(ED)就诊时被临床诊断为流感的每日就诊计数进行监测,是否能为人群中病毒性流感发病率增加提供更早的预警。
在2001年至2005年的五年期间,收集了澳大利亚新南威尔士州(NSW)急诊科就诊时被临时诊断为流感的就诊次数以及实验室确诊流感病例的时间序列。对这两个时间序列都拟合了泊松回归模型,以尽量减少趋势和自相关的混杂效应,并控制其他日历因素的影响。为了评估这两个序列的相对及时性,对模型残差进行了互相关分析。对每一年都重复进行建模和互相关分析。
使用完整的五年时间序列,估计急诊科时间序列的短期变化比实验室序列的变化提前三天。对于个别年份,估计提前时间在三天到18天之间。2003 - 2005年个别年份估计的时间优势始终在三天到四天之间。
与监测实验室确诊的流感相比,对临床诊断为流感的急诊科就诊时间序列进行监测可能会提前三天发出预警。考虑到当前实验室检测和报告的延迟,这种时间优势会更大。