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首页> 外文期刊>BMC Medical Informatics and Decision Making >Syndromic surveillance: STL for modeling, visualizing, and monitoring disease counts
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Syndromic surveillance: STL for modeling, visualizing, and monitoring disease counts

机译:症状监测:用于建模,可视化和监测疾病计数的STL

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Background Public health surveillance is the monitoring of data to detect and quantify unusual health events. Monitoring pre-diagnostic data, such as emergency department (ED) patient chief complaints, enables rapid detection of disease outbreaks. There are many sources of variation in such data; statistical methods need to accurately model them as a basis for timely and accurate disease outbreak methods. Methods Our new methods for modeling daily chief complaint counts are based on a seasonal-trend decomposition procedure based on loess (STL) and were developed using data from the 76 EDs of the Indiana surveillance program from 2004 to 2008. Square root counts are decomposed into inter-annual, yearly-seasonal, day-of-the-week, and random-error components. Using this decomposition method, we develop a new synoptic-scale (days to weeks) outbreak detection method and carry out a simulation study to compare detection performance to four well-known methods for nine outbreak scenarios. Result The components of the STL decomposition reveal insights into the variability of the Indiana ED data. Day-of-the-week components tend to peak Sunday or Monday, fall steadily to a minimum Thursday or Friday, and then rise to the peak. Yearly-seasonal components show seasonal influenza, some with bimodal peaks. Some inter-annual components increase slightly due to increasing patient populations. A new outbreak detection method based on the decomposition modeling performs well with 90 days or more of data. Control limits were set empirically so that all methods had a specificity of 97%. STL had the largest sensitivity in all nine outbreak scenarios. The STL method also exhibited a well-behaved false positive rate when run on the data with no outbreaks injected. Conclusion The STL decomposition method for chief complaint counts leads to a rapid and accurate detection method for disease outbreaks, and requires only 90 days of historical data to be put into operation. The visualization tools that accompany the decomposition and outbreak methods provide much insight into patterns in the data, which is useful for surveillance operations.
机译:背景技术公共卫生监视是监视数据以检测和量化异常健康事件。监视预诊数据,例如急诊科(ED)患者的主要投诉,可以快速检测疾病暴发。这些数据有很多变化的来源。统计方法需要准确地对其建模,以作为及时而准确的疾病暴发方法的基础。方法我们基于黄土(STL)的季节性趋势分解程序建立新的日常主要投诉计数模型,并使用了2004年至2008年印第安纳州监视计划的76个ED数据进行了开发。平方根计数被分解为年度,季节,星期几和随机误差部分。使用这种分解方法,我们开发了一种新的天气尺度(几天到几周)爆发检测方法,并进行了模拟研究,以比较检测性能与四种知名方法在九种爆发情况下的性能。结果STL分解的组成部分揭示了印第安纳州ED数据的可变性。星期几成分通常在周日或星期一达到峰值,然后稳定地下降到周四或星期五的最低值,然后上升到峰值。年度季节成分显示季节性流感,有些具有双峰峰值。由于患者人数的增加,一些年际组成部分略有增加。一种新的基于分解建模的爆发检测方法可以很好地处理90天或更长时间的数据。凭经验设定控制限,以使所有方法的特异性为97%。在所有九种爆发情况下,STL的敏感性最高。当对数据进行分析且未注入爆发时,STL方法还表现出良好的假阳性率。结论用于主要投诉计数的STL分解方法可快速,准确地检测疾病暴发,并且仅需要90天的历史数据即可投入运行。分解和爆发方法附带的可视化工具可深入了解数据模式,这对于监视操作很有用。

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