Ayoub Houssein H, Awad Susanne F, Abu-Raddad Laith J
Department of Mathematics, Statistics, and Physics, Qatar University, Doha, Qatar.
Infectious Disease Epidemiology Group, Weill Cornell Medicine-Qatar, Cornell University, Qatar Foundation - Education City, Doha, Qatar.
Infect Dis Model. 2018 Nov 6;3:373-384. doi: 10.1016/j.idm.2018.10.001. eCollection 2018.
HIV epidemics in hard-to-reach high-risk subpopulations are often discovered years after epidemic emergence in settings with poor surveillance infrastructure. Using hypothesis-generation modeling, we aimed to investigate and demonstrate the concept of using routine HIV testing data to identify and characterize hidden epidemics in high-risk subpopulations. We also compared this approach to surveillance based on AIDS case notifications.
A deterministic mathematical model was developed to simulate an emerging HIV epidemic in a high-risk subpopulation. A stochastic Monte Carlo simulation was implemented on the total population to simulate the sampling process of generating routine HIV testing data. Epidemiological measures were estimated on the simulated epidemic and on the generated testing sample. Sensitivity analyses were conducted on the results.
In the simulated epidemic, HIV prevalence saturated at 32% in the high-risk subpopulation and at 0.33% in the total population. The epidemic started its emerging-epidemic phase 28 years after infection introduction, and saturated 67 years after infection introduction. In the simulated HIV testing sample, a significant time trend in prevalence was identified, and the generated metrics of epidemic emergence and saturation were similar to those of the simulated epidemic. The epidemic was identified 4.0 (95% CI 3.4-4.6) years after epidemic emergence using routine HIV testing, but 29.7 (95% CI 15.8-52.1) years after emergence using AIDS case notifications. In the sensitivity analyses, none of the sampling biases affected the conclusion of an emerging epidemic, but some affected the estimated epidemic growth rate.
Routine HIV testing data provides a tool to identify and characterize hidden and emerging epidemics in high-risk subpopulations. This approach can be specially useful in resource-limited settings, and can be applied alone, or along with other complementary data, to provide a meaningful characterization of emerging but hidden epidemics.
在监测基础设施薄弱的地区,难以接触到的高危亚人群中的艾滋病毒疫情往往在疫情出现数年之后才被发现。我们旨在通过假设生成模型,研究并论证利用常规艾滋病毒检测数据来识别和描述高危亚人群中隐匿疫情的概念。我们还将这种方法与基于艾滋病病例报告的监测方法进行了比较。
开发了一个确定性数学模型,以模拟高危亚人群中新兴的艾滋病毒疫情。对总人口进行了随机蒙特卡洛模拟,以模拟生成常规艾滋病毒检测数据的抽样过程。对模拟疫情和生成的检测样本估计了流行病学指标。对结果进行了敏感性分析。
在模拟疫情中,高危亚人群中的艾滋病毒流行率达到饱和时为32%,总人口中为0.33%。疫情在引入感染后28年开始进入新兴疫情阶段,并在引入感染后67年达到饱和。在模拟的艾滋病毒检测样本中,发现流行率存在显著的时间趋势,生成的疫情出现和饱和指标与模拟疫情相似。使用常规艾滋病毒检测在疫情出现后4.0(95%CI 3.4 - 4.6)年发现了疫情,但使用艾滋病病例报告则在出现后29.7(95%CI 15.8 - 52.1)年才发现。在敏感性分析中,没有一种抽样偏差影响新兴疫情的结论,但有些偏差影响了估计的疫情增长率。
常规艾滋病毒检测数据为识别和描述高危亚人群中隐匿和新兴的疫情提供了一种工具。这种方法在资源有限的环境中可能特别有用,并且可以单独应用,或与其他补充数据一起应用,以对新兴但隐匿的疫情进行有意义的描述。