Wu Joseph T, Leung Kathy, Perera Ranawaka A P M, Chu Daniel K W, Lee Cheuk Kwong, Hung Ivan F N, Lin Che Kit, Lo Su-Vui, Lau Yu-Lung, Leung Gabriel M, Cowling Benjamin J, Peiris J S Malik
Department of Community Medicine and School of Public Health, Li Ka Shing Faculty of Medicine, The University of Hong Kong, Hong Kong Special Administrative Region, People's Republic of China.
Centre of Influenza Research and School of Public Health, Li Ka Shing Faculty of Medicine, The University of Hong Kong, Hong Kong Special Administrative Region, People's Republic of China.
PLoS Pathog. 2014 Apr 3;10(4):e1004054. doi: 10.1371/journal.ppat.1004054. eCollection 2014 Apr.
Seroprevalence survey is the most practical method for accurately estimating infection attack rate (IAR) in an epidemic such as influenza. These studies typically entail selecting an arbitrary titer threshold for seropositivity (e.g. microneutralization [MN] 1∶40) and assuming the probability of seropositivity given infection (infection-seropositivity probability, ISP) is 100% or similar to that among clinical cases. We hypothesize that such conventions are not necessarily robust because different thresholds may result in different IAR estimates and serologic responses of clinical cases may not be representative. To illustrate our hypothesis, we used an age-structured transmission model to fully characterize the transmission dynamics and seroprevalence rises of 2009 influenza pandemic A/H1N1 (pdmH1N1) during its first wave in Hong Kong. We estimated that while 99% of pdmH1N1 infections became MN1∶20 seropositive, only 72%, 62%, 58% and 34% of infections among age 3-12, 13-19, 20-29, 30-59 became MN1∶40 seropositive, which was much lower than the 90%-100% observed among clinical cases. The fitted model was consistent with prevailing consensus on pdmH1N1 transmission characteristics (e.g. initial reproductive number of 1.28 and mean generation time of 2.4 days which were within the consensus range), hence our ISP estimates were consistent with the transmission dynamics and temporal buildup of population-level immunity. IAR estimates in influenza seroprevalence studies are sensitive to seropositivity thresholds and ISP adjustments which in current practice are mostly chosen based on conventions instead of systematic criteria. Our results thus highlighted the need for reexamining conventional practice to develop standards for analyzing influenza serologic data (e.g. real-time assessment of bias in ISP adjustments by evaluating the consistency of IAR across multiple thresholds and with mixture models), especially in the context of pandemics when robustness and comparability of IAR estimates are most needed for informing situational awareness and risk assessment. The same principles are broadly applicable for seroprevalence studies of other infectious disease outbreaks.
血清阳性率调查是准确估算流感等流行病感染攻击率(IAR)的最实用方法。这些研究通常需要为血清阳性选择一个任意滴度阈值(例如微量中和试验[MN] 1∶40),并假设感染后血清阳性的概率(感染 - 血清阳性概率,ISP)为100%或与临床病例中的概率相似。我们假设这些惯例不一定可靠,因为不同的阈值可能导致不同的IAR估计值,并且临床病例的血清学反应可能不具有代表性。为了说明我们的假设,我们使用了一个年龄结构的传播模型来全面描述2009年甲型H1N1流感大流行(pdmH1N1)在香港第一波疫情期间的传播动态和血清阳性率上升情况。我们估计,虽然99%的pdmH1N1感染会使MN1∶20血清呈阳性,但在3 - 12岁、13 - 19岁、20 - 29岁、30 - 59岁年龄组中,只有72%、62%、58%和34%的感染会使MN1∶40血清呈阳性,这远低于临床病例中观察到的90% - 100%。拟合模型与关于pdmH1N1传播特征的普遍共识一致(例如初始繁殖数为1.28,平均世代时间为2.4天,均在共识范围内),因此我们的ISP估计值与传播动态和人群水平免疫力的时间积累一致。流感血清阳性率研究中的IAR估计值对血清阳性阈值和ISP调整很敏感,而在当前实践中,这些大多是基于惯例而非系统标准选择的。因此,我们的结果凸显了重新审视传统做法以制定分析流感血清学数据标准的必要性(例如通过评估多个阈值下IAR的一致性以及与混合模型的一致性来实时评估ISP调整中的偏差),特别是在大流行背景下,此时最需要IAR估计值的稳健性和可比性来为态势感知和风险评估提供依据。相同的原则广泛适用于其他传染病暴发的血清阳性率研究。