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Evaluation of a Multivariate Syndromic Surveillance System for West Nile Virus

机译:西尼罗河病毒多症状监测系统的评估

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摘要

>Background: Various methods are currently used for the early detection of West Nile virus (WNV) but their outputs are not quantitative and/or do not take into account all available information. Our study aimed to test a multivariate syndromic surveillance system to evaluate if the sensitivity and the specificity of detection of WNV could be improved.>Methods: Weekly time series data on nervous syndromes in horses and mortality in both horses and wild birds were used. Baselines were fitted to the three time series and used to simulate 100 years of surveillance data. WNV outbreaks were simulated and inserted into the baselines based on historical data and expert opinion. Univariate and multivariate syndromic surveillance systems were tested to gauge how well they detected the outbreaks; detection was based on an empirical Bayesian approach. The systems' performances were compared using measures of sensitivity, specificity, and area under receiver operating characteristic curve (AUC).>Results: When data sources were considered separately (i.e., univariate systems), the best detection performance was obtained using the data set of nervous symptoms in horses compared to those of bird and horse mortality (AUCs equal to 0.80, 0.75, and 0.50, respectively). A multivariate outbreak detection system that used nervous symptoms in horses and bird mortality generated the best performance (AUC = 0.87).>Conclusions: The proposed approach is suitable for performing multivariate syndromic surveillance of WNV outbreaks. This is particularly relevant, given that a multivariate surveillance system performed better than a univariate approach. Such a surveillance system could be especially useful in serving as an alert for the possibility of human viral infections. This approach can be also used for other diseases for which multiple sources of evidence are available.
机译:>背景:目前,有多种方法可用于早期检测西尼罗河病毒(WNV),但其输出结果并不定量,并且/或者未考虑所有可用信息。我们的研究旨在测试多变量综合征监测系统,以评估是否可以提高WNV检测的敏感性和特异性。>方法:每周时间序列数据,涉及马的神经综合征以及马和马的死亡率使用野生鸟类。将基线拟合为这三个时间序列,并用于模拟100年的监视数据。模拟WNV爆发,并根据历史数据和专家意见将其插入基线。对单变量和多变量症状监测系统进行了测试,以评估它们检测疾病爆发的能力。检测基于经验贝叶斯方法。使用灵敏度,特异性和接收器工作特征曲线(AUC)下面积的度量比较系统的性能。>结果:当单独考虑数据源(即单变量系统)时,最佳检测性能使用与鸟类和马匹死亡率相比的马匹神经症状数据集(AUC分别等于0.80、0.75和0.50)获得了。利用马匹和鸟类死亡的神经症状的多变量爆发检测系统表现最佳(AUC = 0.87)。>结论:该方法适用于对WNV爆发进行多症状监测。鉴于多变量监视系统的性能优于单变量方法,因此这特别相关。这种监视系统在警告人类病毒感染的可能性方面可能特别有用。这种方法还可以用于其他有多种证据来源的疾病。

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