Centre for Sexual Health and HIV/AIDS Research, Harare, Zimbabwe.
Department of Global Health and Development, London School of Hygiene and Tropical Medicine, London, United Kingdom.
JMIR Public Health Surveill. 2020 Jun 15;6(2):e15044. doi: 10.2196/15044.
Population size estimates (PSEs) for hidden populations at increased risk of HIV, including female sex workers (FSWs), are important to inform public health policy and resource allocation. The service multiplier method (SMM) is commonly used to estimate the sizes of hidden populations. We used this method to obtain PSEs for FSWs at 9 sites in Zimbabwe and explored methods for assessing potential biases that could arise in using this approach.
This study aimed to guide the assessment of biases that arise when estimating the population sizes of hidden populations using the SMM combined with respondent-driven sampling (RDS) surveys.
We conducted RDS surveys at 9 sites in late 2013, where the Sisters with a Voice program (the program), which collects program visit data of FSWs, was also present. Using the SMM, we obtained PSEs for FSWs at each site by dividing the number of FSWs who attended the program, based on program records, by the RDS-II weighted proportion of FSWs who reported attending this program in the previous 6 months in the RDS surveys. Both the RDS weighting and SMM make a number of assumptions, potentially leading to biases if the assumptions are not met. To test these assumptions, we used convergence and bottleneck plots to assess seed dependence of RDS-II proportion estimates, chi-square tests to assess if there was an association between the characteristics of FSWs and their knowledge of program existence, and logistic regression to compare the characteristics of FSWs attending the program with those recruited to RDS surveys.
The PSEs ranged from 194 (95% CI 62-325) to 805 (95% CI 456-1142) across 9 sites from May to November 2013. The 95% CIs for the majority of sites were wide. In some sites, the RDS-II proportion of women who reported program use in the RDS surveys may have been influenced by the characteristics of selected seeds, and we also observed bottlenecks in some sites. There was no evidence of association between characteristics of FSWs and knowledge of program existence, and in the majority of sites, there was no evidence that the characteristics of the populations differed between RDS and program data.
We used a series of rigorous methods to explore potential biases in our PSEs. We were able to identify the biases and their potential direction, but we could not determine the ultimate direction of these biases in our PSEs. We have evidence that the PSEs in most sites may be biased and a suggestion that the bias is toward underestimation, and this should be considered if the PSEs are to be used. These tests for bias should be included when undertaking population size estimation using the SMM combined with RDS surveys.
包括性工作者(FSWs)在内的艾滋病毒高危人群的人口规模估计(PSE)对于公共卫生政策和资源分配至关重要。服务乘数法(SMM)常用于估计隐藏人群的规模。我们使用该方法对津巴布韦 9 个地点的性工作者进行了 FSW 人口 PSE 估计,并探讨了评估使用该方法可能出现的潜在偏差的方法。
本研究旨在指导使用 SMM 与响应驱动抽样(RDS)调查相结合来估计隐藏人群的人口规模时出现的偏差评估。
我们于 2013 年末在 9 个地点进行了 RDS 调查,同时该地点还开展了 Sisters with a Voice 项目(该项目收集性工作者的项目访问数据)。我们根据项目记录,将参加该项目的性工作者人数除以 RDS 调查中过去 6 个月报告参加该项目的性工作者的 RDS-II 加权比例,从而利用 SMM 获得每个地点的 FSW 人口 PSE。RDS 加权和 SMM 都有一些假设,如果假设不成立,可能会导致偏差。为了检验这些假设,我们使用收敛和瓶颈图来评估 RDS-II 比例估计的种子依赖性,使用卡方检验来评估性工作者的特征与其对项目存在的认知之间是否存在关联,使用逻辑回归来比较参加项目的性工作者与参加 RDS 调查的性工作者的特征。
2013 年 5 月至 11 月,9 个地点的 PSE 范围从 194(95%CI 62-325)到 805(95%CI 456-1142)。大多数地点的 95%CI 范围较宽。在一些地点,RDS 调查中报告使用该项目的女性的 RDS-II 比例可能受到所选种子特征的影响,我们还在一些地点观察到了瓶颈现象。性工作者的特征与对项目存在的认知之间没有关联的证据,而且在大多数地点,RDS 和项目数据之间的人群特征没有证据表明存在差异。
我们使用了一系列严格的方法来探讨我们的 PSE 中潜在的偏差。我们能够识别出偏差及其潜在方向,但无法确定我们的 PSE 中这些偏差的最终方向。我们有证据表明,大多数地点的 PSE 可能存在偏差,并暗示偏差是低估,因此如果要使用 PSE,则应考虑到这一点。在使用 SMM 与 RDS 调查相结合进行人口规模估计时,应包括这些偏差检验。