Clapham Hannah E, Cummings Derek A T, Johansson Michael A
Department of Epidemiology, School of Public Health, Johns Hopkins University, Baltimore, MD, United States of America.
Dengue Branch, Division of Vector-Borne Diseases, Centers for Disease Control and Prevention, San Juan, PR.
PLoS Negl Trop Dis. 2017 Sep 27;11(9):e0005926. doi: 10.1371/journal.pntd.0005926. eCollection 2017 Sep.
Dengue is an important vector-borne pathogen found across much of the world. Many factors complicate our understanding of the relationship between infection with one of the four dengue virus serotypes, and the observed incidence of disease. One of the factors is a large proportion of infections appear to result in no or few symptoms, while others result in severe infections. Estimates of the proportion of infections that result in no symptoms (inapparent) vary widely from 8% to 100%, depending on study and setting. To investigate the sources of variation of these estimates, we used a flexible framework to combine data from multiple cohort studies and cluster studies (follow-up around index cases). Building on previous observations that the immune status of individuals affects their probability of apparent disease, we estimated the probability of apparent disease among individuals with different exposure histories. In cohort studies mostly assessing infection in children, we estimated the proportion of infections that are apparent as 0.18 (95% Credible Interval, CI: 0.16, 0.20) for primary infections, 0.13 (95% CI: 0.05, 0.17) for individuals infected in the year following a first infection (cross-immune period), and 0.41 (95% CI: 0.36, 0.45) for those experiencing secondary infections after this first year. Estimates of the proportion of infections that are apparent from cluster studies were slightly higher than those from cohort studies for both primary and secondary infections, 0.22 (95% CI: 0.15, 0.29) and 0.57 (95% CI: 0.49, 0.68) respectively. We attempted to estimate the apparent proportion by serotype, but current published data were too limited to distinguish the presence or absence of serotype-specific differences. These estimates are critical for understanding dengue epidemiology. Most dengue data come from passive surveillance systems which not only miss most infections because they are asymptomatic and often underreported, but will also vary in sensitivity over time due to the interaction between previous incidence and the symptomatic proportion, as shown here. Nonetheless the underlying incidence of infection is critical to understanding susceptibility of the population and estimating the true burden of disease, key factors for effectively targeting interventions. The estimates shown here help clarify the link between past infection, observed disease, and current transmission intensity.
登革热是一种在世界许多地区都存在的重要媒介传播病原体。许多因素使得我们难以理解感染四种登革热病毒血清型之一与所观察到的疾病发病率之间的关系。其中一个因素是,很大一部分感染似乎不会导致症状或只会引起轻微症状,而其他感染则会导致严重感染。根据研究和环境的不同,无症状(隐性)感染比例的估计值差异很大,从8%到100%不等。为了探究这些估计值差异的来源,我们使用了一个灵活的框架来整合来自多个队列研究和聚类研究(围绕索引病例进行随访)的数据。基于之前的观察结果,即个体的免疫状态会影响其出现显性疾病的概率,我们估计了具有不同暴露史的个体出现显性疾病的概率。在主要评估儿童感染情况的队列研究中,我们估计初次感染时显性感染的比例为0.18(95%可信区间,CI:0.16,0.20),首次感染后一年(交叉免疫期)内感染的个体为0.13(95%CI:0.05,0.17),首次感染一年后经历二次感染的个体为0.41(95%CI:0.36,0.45)。聚类研究中显性感染比例的估计值对于初次和二次感染均略高于队列研究,分别为0.22(95%CI:0.15,0.29)和0.57(95%CI:0.49,0.68)。我们试图按血清型估计显性比例,但目前已发表的数据过于有限,无法区分血清型特异性差异的存在与否。这些估计值对于理解登革热流行病学至关重要。大多数登革热数据来自被动监测系统,该系统不仅会遗漏大多数感染情况,因为这些感染无症状且往往报告不足,而且由于既往发病率与症状比例之间的相互作用,其敏感性还会随时间变化,如此处所示。尽管如此,潜在的感染发病率对于理解人群易感性和估计疾病的真实负担至关重要,而这是有效制定干预措施的关键因素。此处所示的估计值有助于阐明既往感染、观察到的疾病与当前传播强度之间的联系。