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Epidemic features affecting the performance of outbreak detection algorithms

机译:流行特征影响爆发检测算法的性能

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Background Outbreak detection algorithms play an important role in effective automated surveillance. Although many algorithms have been designed to improve the performance of outbreak detection, few published studies have examined how epidemic features of infectious disease impact on the detection performance of algorithms. This study compared the performance of three outbreak detection algorithms stratified by epidemic features of infectious disease and examined the relationship between epidemic features and performance of outbreak detection algorithms. Methods Exponentially weighted moving average (EWMA), cumulative sum (CUSUM) and moving percentile method (MPM) algorithms were applied. We inserted simulated outbreaks into notifiable infectious disease data in China Infectious Disease Automated-alert and Response System (CIDARS), and compared the performance of the three algorithms with optimized parameters at a fixed false alarm rate of 5% classified by epidemic features of infectious disease. Multiple linear regression was adopted to analyse the relationship of the algorithms’ sensitivity and timeliness with the epidemic features of infectious diseases. Results The MPM had better detection performance than EWMA and CUSUM through all simulated outbreaks, with or without stratification by epidemic features (incubation period, baseline counts and outbreak magnitude). The epidemic features were associated with both sensitivity and timeliness. Compared with long incubation, short incubation had lower probability (β*?=??0.13, P? Conclusions The results of this study suggest that the MPM is a prior algorithm for outbreak detection and differences of epidemic features in detection performance should be considered in automatic surveillance practice.
机译:背景爆发检测算法在有效的自动化监视中起着重要作用。尽管已经设计了许多算法来提高爆发检测的性能,但是很少有已发表的研究检查传染病的流行特征如何影响算法的检测性能。本研究比较了三种按传染病流行特征分层的爆发检测算法的性能,并研究了流行特征与爆发检测算法性能之间的关系。方法采用指数加权移动平均(EWMA),累积和(CUSUM)和移动百分比法(MPM)算法。我们在中国传染病自动预警和响应系统(CIDARS)的可报告传染病数据中插入了模拟暴发,并根据传染病流行特征将固定优化误报率为5%的三种算法与优化参数进行了比较。采用多元线性回归分析算法的敏感性和及时性与传染病流行特征的关系。结果在所有模拟暴发中,无论是否具有流行特征(潜伏期,基线计数和暴发程度)分层,MPM的检测性能均优于EWMA和CUSUM。流行特征与敏感性和及时性有关。与长期潜伏期相比,短期潜伏期的可能性较低(β*?=?0.13,P?)结论本研究结果表明,MPM是暴发检测的先验算法,应考虑流行特征在检测性能上的差异。自动监视实践。

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