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Multivariate outbreak detection

机译:多变量爆发检测

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Online monitoring is needed to detect outbreaks of diseases such as influenza. Surveillance is also needed for other kinds of outbreaks, in the sense of an increasing expected value after a constant period. Information on spatial location or other variables might be available and may be utilized. We adapted a robust method for outbreak detection to a multivariate case. The relation between the times of the onsets of the outbreaks at different locations (or some other variable) was used to determine the sufficient statistic for surveillance. The derived maximum-likelihood estimator of the outbreak regression was semi-parametric in the sense that the baseline and the slope were non-parametric while the distribution belonged to the one-parameter exponential family. The estimator was used in a generalized-likelihood ratio surveillance method. The method was evaluated with respect to robustness and efficiency in a simulation study and applied to spatial data for detection of influenza outbreaks in Sweden.
机译:需要在线监控以检测诸如流感等疾病的暴发。从固定时间段后的期望值不断提高的意义上来说,对于其他类型的暴发也需要进行监视。有关空间位置或其他变量的信息可能可用并且可以被利用。我们针对多变量案例采用了一种健壮的爆发检测方法。在不同地点(或某些其他变量)的爆发时间之间的关系被用来确定监测的足够统计量。从基线和斜率是非参数的而分布属于一参数指数族的意义上来说,爆发回归的最大似然估计值是半参数的。该估计器用于广义似然比监视方法。在模拟研究中评估了该方法的鲁棒性和效率,并将其应用于空间数据以检测瑞典的流感爆发。

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