首页> 外文期刊>Medicine. >HIV, HCV, HBV, and syphilis among transgender women from Brazil: Assessing different methods to adjust infection rates of a hard-to-reach, sparse population
【24h】

HIV, HCV, HBV, and syphilis among transgender women from Brazil: Assessing different methods to adjust infection rates of a hard-to-reach, sparse population

机译:来自巴西的变性妇女中的HIV,HCV,HBV和梅毒:评估不同方法来调整难以达到的稀疏人群的感染率

获取原文
           

摘要

Different sampling strategies, analytic alternatives, and estimators have been proposed to better assess the characteristics of different hard-to-reach populations and their respective infection rates (as well as their sociodemographic characteristics, associated harms, and needs) in the context of studies based on respondent-driven sampling (RDS). Despite several methodological advances and hundreds of empirical studies implemented worldwide, some inchoate findings and methodological challenges remain. The in-depth assessment of the local structure of networks and the performance of the available estimators are particularly relevant when the target populations are sparse and highly stigmatized. In such populations, bottlenecks as well as other sources of biases (for instance, due to homophily and/or too sparse or fragmented groups of individuals) may be frequent, affecting the estimates. In the present study, data were derived from a cross-sectional, multicity RDS study, carried out in 12 Brazilian cities with transgender women (TGW). Overall, infection rates for HIV and syphilis were very high, with some variation between different cities. Notwithstanding, findings are of great concern, considering the fact that female TGW are not only very hard-to-reach but also face deeply-entrenched prejudice and have been out of the reach of most therapeutic and preventive programs and projects. We cross-compared findings adjusted using 2 estimators (the classic estimator usually known as estimator II, originally proposed by Volz and Heckathorn) and a brand new strategy to adjust data generated by RDS, partially based on Bayesian statistics, called for the sake of this paper, the RDS-B estimator. Adjusted prevalence was cross-compared with estimates generated by non-weighted analyses, using what has been called by us a na?ve estimator or rough estimates.
机译:在基于研究的背景下,已经提出了不同的抽样策略,分析替代方法和估计量,以更好地评估难以到达的不同人群的特征及其各自的感染率(以及他们的社会人口统计学特征,相关危害和需求)。响应者驱动的抽样(RDS)。尽管在方法论方面取得了一些进步,并且在全球范围内进行了数百次实证研究,但仍存在一些早期的发现和方法论上的挑战。当目标人群稀少且受到严重污名化时,对网络本地结构的深入评估和可用估算器的性能尤为重要。在此类人群中,瓶颈以及其他偏见的来源(例如,由于同质和/或过于稀疏或零散的个人群体)可能会很常见,从而影响估计。在本研究中,数据来自于在12个巴西跨性别女性城市(TGW)进行的多城市RDS横断面研究。总体而言,艾滋病毒和梅毒的感染率很高,不同城市之间存在一定差异。尽管如此,考虑到女性TGW不仅很难触及而且面临根深蒂固的偏见,而且大多数治疗和预防计划和项目都无法做到这一点,因此研究结果仍令人担忧。我们交叉比较了使用2个估算器(最初由Volz和Heckathorn提出的经典估算器,通常称为estimator II)和部分调整基于贝叶斯统计量的RDS生成的数据的全新策略来调整的调整结果。纸,RDS-B估算器。调整后的患病率与非加权分析产生的估计值进行了交叉比较,使用我们所谓的幼稚估计量或粗略估计值。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号