Comparing early outbreak detection algorithms based on their optimized parameter values.

基于优化参数值对早期疫情检测算法进行比较

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作者:Wang Xiaoli, Zeng Daniel, Seale Holly, Li Su, Cheng He, Luan Rongsheng, He Xiong, Pang Xinghuo, Dou Xiangfeng, Wang Quanyi
BACKGROUND: Many researchers have evaluated the performance of outbreak detection algorithms with recommended parameter values. However, the influence of parameter values on algorithm performance is often ignored. METHODS: Based on reported case counts of bacillary dysentery from 2005 to 2007 in Beijing, semi-synthetic datasets containing outbreak signals were simulated to evaluate the performance of five outbreak detection algorithms. Parameters' values were optimized prior to the evaluation. RESULTS: Differences in performances were observed as parameter values changed. Of the five algorithms, space-time permutation scan statistics had a specificity of 99.9% and a detection time of less than half a day. The exponential weighted moving average exhibited the shortest detection time of 0.1 day, while the modified C1, C2 and C3 exhibited a detection time of close to one day. CONCLUSION: The performance of these algorithms has a correlation to their parameter values, which may affect the performance evaluation.

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