Implementation of Power Law Network Models of Epidemic Surveillance Data for Better Evaluation of Outbreak Detection Alarms

R. Romanescu, R. Deardon
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引用次数: 1

Abstract

Abstract Properties of statistical alarms have been well studied for simple disease surveillance models, such as normally distributed incidence rates with a sudden or gradual shift in mean at the start of an outbreak. It is known, however, that outbreak dynamics in human populations depend significantly on the heterogeneity of the underlying contact network. The rate of change in incidence for a disease such as influenza peaks early on during the outbreak, when the most highly connected individuals get infected, and declines as the average number of connections in the remaining susceptible population drops. Alarm systems currently in use for detecting the start of influenza seasons generally ignore this mechanism of disease spread, and, as a result, will miss out on some early warning signals. We investigate the performance of various alarms on epidemics simulated from an undirected network model with a power law degree distribution for a pathogen with a relatively short infectious period. We propose simple custom alarms for the disease system considered, and show that they can detect a change in the process sooner than some traditional alarms. Finally, we test our methods on observed rates of influenza-like illness from two sentinel providers (one French, one Spanish) to illustrate their use in the early detection of the flu season.
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实现流行病监测数据的幂律网络模型以更好地评估爆发检测警报
摘要对于简单的疾病监测模型,统计警报的性质已经得到了很好的研究,例如在疫情开始时具有突然或逐渐变化的正态分布的发病率。然而,众所周知,人群中的疫情动态在很大程度上取决于潜在接触网络的异质性。流感等疾病的发病率变化率在疫情爆发初期达到峰值,此时联系最密切的个体受到感染,并随着剩余易感人群中联系人数的平均下降而下降。目前用于检测流感季节开始的警报系统通常忽略了这种疾病传播机制,因此将错过一些早期预警信号。我们研究了用幂律度分布的无向网络模型模拟具有相对较短感染期的病原体的各种流行病警报的性能。我们为所考虑的疾病系统提出了简单的自定义警报,并表明它们可以比一些传统警报更快地检测到过程中的变化。最后,我们对两个哨点提供者(一个法国人,一个西班牙人)观察到的流感样疾病发生率进行了测试,以说明它们在流感季节早期检测中的应用。
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