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传染病爆发的监测:使用似然比估计的自适应抽样。

Surveillance for endemic infectious disease outbreaks: Adaptive sampling using profile likelihood estimation.

机构信息

Department of Management Science and Engineering, Stanford University, Stanford, California, USA.

Public Health Modeling Unit, Department of Epidemiology of Microbial Diseases, Yale School of Public Health, New Haven, Connecticut, USA.

出版信息

Stat Med. 2022 Jul 30;41(17):3336-3348. doi: 10.1002/sim.9420. Epub 2022 May 8.

Abstract

Outbreaks of an endemic infectious disease can occur when the disease is introduced into a highly susceptible subpopulation or when the disease enters a network of connected individuals. For example, significant HIV outbreaks among people who inject drugs have occurred in at least half a dozen US states in recent years. This motivates the current study: how can limited testing resources be allocated across geographic regions to rapidly detect outbreaks of an endemic infectious disease? We develop an adaptive sampling algorithm that uses profile likelihood to estimate the distribution of the number of positive tests that would occur for each location in a future time period if that location were sampled. Sampling is performed in the location with the highest estimated probability of triggering an outbreak alarm in the next time period. The alarm function is determined by a semiparametric likelihood ratio test. We compare the profile likelihood sampling (PLS) method numerically to uniform random sampling (URS) and Thompson sampling (TS). TS was worse than URS when the outbreak occurred in a location with lower initial prevalence than other locations. PLS had lower time to outbreak detection than TS in some but not all scenarios, but was always better than URS even when the outbreak occurred in a location with a lower initial prevalence than other locations. PLS provides an effective and reliable method for rapidly detecting endemic disease outbreaks that is robust to this uncertainty.

摘要

当疾病传入高度易感亚群或疾病进入相互关联的个体网络时,地方性传染病可能会爆发。例如,近年来,至少有六个美国州发生了大量注射毒品者中的 HIV 爆发。这激发了当前的研究:如何在地理区域之间分配有限的检测资源,以快速发现地方性传染病的爆发?我们开发了一种自适应抽样算法,该算法使用似然比来估计在未来时间段内对每个位置进行采样时会发生的阳性测试数量的分布。在下一个时间段,在预计最有可能触发爆发警报的位置进行采样。警报功能由半参数似然比检验确定。我们通过数值比较来评估轮廓似然抽样(PLS)方法与均匀随机抽样(URS)和汤普森抽样(TS)。当爆发发生在初始流行率低于其他地区的地区时,TS 比 URS 差。在某些情况下,PLS 的爆发检测时间比 TS 短,但在所有情况下都优于 URS,即使爆发发生在初始流行率低于其他地区的地区。PLS 为快速检测地方性疾病爆发提供了一种有效且可靠的方法,该方法对这种不确定性具有鲁棒性。

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