Division of Epidemiology & Biostatistics, School of Public Health and Family Medicine, University of Cape Town, Cape Town, South Africa.
BMJ Glob Health. 2020 Jan 7;5(1):e001800. doi: 10.1136/bmjgh-2019-001800. eCollection 2020.
HIV viral load (VL) is accepted as a key biomarker in HIV transmission and pathogenesis. This paper presents a review of the role of VL testing in mathematical models for HIV prevention and treatment.
A search for simulation models of HIV was conducted in PubMed, yielding a total of 1210 studies. Publications before the year 2000, studies involving animals and analyses that did not use mathematical simulations were excluded. The full text of eligible articles was sourced and information about the intervention and population being modelled, type of modelling approach and disease monitoring strategy was extracted.
A total of 279 studies related to HIV simulation models were included in the review, though only 17 (6%) included consideration of VL or VL testing and were evaluated in detail. Within the studies that included assessment of VL, routine monitoring was the focus, and usually in comparison to alternate monitoring strategies such as clinical or CD4 count-based monitoring. The majority of remaining models focus on the impact or delivery of antiretroviral therapy (n=68; 27%), pre-exposure prophylaxis (n=28; 11%) and/or HIV testing (n=24; 9%) on population estimates of HIV epidemiology and exclude consideration of VL. Few studies investigate or compare alternate VL monitoring frequencies, and only a small number of studies overall (3%) include consideration of vulnerable population groups such as pregnant women or infants.
There are very few simulations of HIV treatment or prevention that include VL measures, despite VL being recognised as the key determinant of both transmission and treatment outcomes. With growing emphasis on VL monitoring as key tool for population-level HIV control, there is a clear need for simulations of HIV epidemiology based on VL.
HIV 病毒载量(VL)被认为是 HIV 传播和发病机制的关键生物标志物。本文综述了 VL 检测在 HIV 预防和治疗数学模型中的作用。
在 PubMed 中搜索 HIV 模拟模型的研究,共得到 1210 项研究。排除了 2000 年以前发表的研究、涉及动物的研究以及未使用数学模拟进行的分析。获取合格文章的全文,并提取有关干预和建模人群、建模方法类型和疾病监测策略的信息。
本综述共纳入 279 项与 HIV 模拟模型相关的研究,但只有 17 项(6%)考虑了 VL 或 VL 检测,并进行了详细评估。在纳入 VL 评估的研究中,常规监测是重点,通常与替代监测策略(如临床或 CD4 计数监测)进行比较。大多数剩余的模型主要关注抗逆转录病毒治疗(n=68;27%)、暴露前预防(n=28;11%)和/或 HIV 检测(n=24;9%)对 HIV 流行病学人群估计的影响或实施,而不考虑 VL。很少有研究调查或比较替代 VL 监测频率,只有少数总体研究(3%)考虑了孕妇或婴儿等脆弱人群组。
尽管 VL 被认为是传播和治疗结果的关键决定因素,但很少有 HIV 治疗或预防模拟研究包括 VL 措施。随着 VL 监测作为人群 HIV 控制的关键工具的重要性日益增加,显然需要基于 VL 进行 HIV 流行病学模拟。