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Estimating the Age at HIV Infection Retroactively in Limited Resource Settings: A Case Study of Tanzania

机译:在资源有限的情况下追溯估计艾滋病毒感染的年龄:以坦桑尼亚为例

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Estimation of HIV infection time is a crucial step in HIV/AIDS management as it can help to make informed decisions on the best intervention strategies for controlling new infections, and for taking care of the infected individuals. This study demonstrates three approaches for estimating the age at HIV infection in limited resource settings. Using HIV testing history data collected from a sample of 88 HIV positive women in Kilimanjaro region-Tanzania, we developed a model for estimating the most likely age at which HIV infection occurs for women under reproductive age. The sampled data were collected from typical poor resource settings where access to data is very challenging and the gap between last HIV negative test and first HIV positive test is wide. Formulation of the proposed model involved three steps. Through Modified Midpoint approach, we first determined the midpoint of the age at last negative HIV test and the age at first positive HIV test for each subject. Then, the average time at risk prior to infection, taken over all individuals was subtracted from each midpoint value to obtain the distribution of their estimated age at HIV infection (T). In the second step, survival analysis techniques were used to obtain the Kaplan Meier plots and Nelson Aalen cumulative hazards estimates in which the median age for HIV infection and the most risky age were estimated. The plots of Kaplan Meir survival curves for women with different marital status and levels of education helped to assess whether their age at infection were significantly different. In the third step, we used bootstrap estimation procedures to generate 200 samples of random data and obtain the bootstrap median age at HIV infection and its confidence intervals. The estimated median age at HIV infection from survival analysis approach was 28 years while from bootstrap estimation procedures was 27 years. Likewise, the Nelson Aalen cumulative hazards plot indicated that the most risky age for HIV infection is between 18-40 years while the most risky age from bootstrap estimation was 25 to 27 years. The confidence intervals obtained through bootstrap estimation approach was narrower than that obtained from the survival analysis approach, implying that the bootstrap approach gives more precise estimates. Generally, the study findings provide useful information towards the attainment of the 90-90-90 global HIV/AIDS target as it shows where to allocate more resources and establish more focused interventions for HIV/AIDS management and control.
机译:估计艾滋病毒感染时间是艾滋病毒/艾滋病管理中的关键步骤,因为它有助于做出关于控制新感染和照顾感染者的最佳干预策略的明智决定。这项研究证明了在有限的资源环境中估算HIV感染年龄的三种方法。我们使用从坦桑尼亚乞力马扎罗地区88名HIV阳性妇女的样本中收集的HIV检测历史数据,开发了一个模型,用于估算育龄以下妇女发生HIV感染的最可能年龄。采样数据是从典型的不良资源环境中收集的,在这些环境中,获取数据非常困难,并且上一次HIV阴性测试和首次HIV阳性测试之间的差距很大。拟议模型的制定涉及三个步骤。通过修改后的中点方法,我们首先确定了每个受试者上次HIV阴性检测的年龄和首次HIV阳性检测的年龄的中点。然后,从每个中点值中减去所有个体感染前的平均处于感染风险的时间,以获得其估计的HIV感染年龄分布(T)。第二步,使用生存分析技术获得Kaplan Meier图和Nelson Aalen累积危害估计值,其中估计了HIV感染的中位年龄和最危险的年龄。具有不同婚姻状况和受教育水平的妇女的Kaplan Meir生存曲线图有助于评估她们的感染年龄是否存在显着差异。第三步,我们使用引导程序估计程序生成200个随机数据样本,并获得HIV感染时的引导程序中位年龄及其置信区间。生存分析方法估计的HIV感染中位数年龄为28岁,而引导程序估计的年龄中位数为27岁。同样,尼尔森·阿伦(Nelson Aalen)累积危害图表明,艾滋病毒感染的最高风险年龄在18至40岁之间,而根据自举法估计的最高风险年龄为25至27岁。通过自举估计方法获得的置信区间比从生存分析方法获得的置信区间窄,这意味着自举方法给出了更精确的估计。一般而言,研究结果为实现90-90-90全球艾滋病毒/艾滋病目标提供了有用的信息,因为它显示了在哪里分配更多的资源并建立更集中的艾滋病毒/艾滋病管理和控制干预措施。

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