White Richard G, Ben S Cooper, Kedhar Anusha, Orroth Kate K, Biraro Sam, Baggaley Rebecca F, Whitworth Jimmy, Korenromp Eline L, Ghani Azra, Boily Marie-Claude, Hayes Richard J
Department of Epidemiology and Population Health, London School of Hygiene and Tropical Medicine, London WC1E 7HT, United Kingdom.
Proc Natl Acad Sci U S A. 2007 Jun 5;104(23):9794-9. doi: 10.1073/pnas.0610435104. Epub 2007 May 23.
Assessments of the importance of different routes of HIV-1 (HIV) transmission are vital for prioritization of control efforts. Lack of consistent direct data and large uncertainty in the risk of HIV transmission from HIV-contaminated injections has made quantifying the proportion of transmission caused by contaminated injections in sub-Saharan Africa difficult and unavoidably subjective. Depending on the risk assumed, estimates have ranged from 2.5% to 30% or more. We present a method based on an age-structured transmission model that allows the relative contribution of HIV-contaminated injections, and other routes of HIV transmission, to be robustly estimated, both fully quantifying and substantially reducing the associated uncertainty. To do this, we adopt a Bayesian perspective, and show how prior beliefs regarding the safety of injections and the proportion of HIV incidence due to contaminated injections should, in many cases, be substantially modified in light of age-stratified incidence and injection data, resulting in improved (posterior) estimates. Applying the method to data from rural southwest Uganda, we show that the highest estimates of the proportion of incidence due to injections are reduced from 15.5% (95% credible interval) (0.7%, 44.9%) to 5.2% (0.5%, 17.0%) if random mixing is assumed, and from 14.6% (0.7%, 42.5%) to 11.8% (1.2%, 32.5%) under assortative mixing. Lower, and more widely accepted, estimates remain largely unchanged, between 1% and 3% (0.1-6.3%). Although important uncertainty remains, our analysis shows that in rural Uganda, contaminated injections are unlikely to account for a large proportion of HIV incidence. This result is likely to be generalizable to many other populations in sub-Saharan Africa.
评估HIV-1(艾滋病毒)不同传播途径的重要性对于确定防控工作的重点至关重要。缺乏关于受艾滋病毒污染注射传播艾滋病毒风险的一致直接数据且不确定性很大,这使得量化撒哈拉以南非洲因受污染注射导致的传播比例变得困难,且不可避免地带有主观性。根据所假定的风险不同,估计范围在2.5%至30%或更高。我们提出一种基于年龄结构传播模型的方法,该方法能够可靠地估计受艾滋病毒污染注射以及其他艾滋病毒传播途径的相对贡献,既能全面量化又能大幅降低相关不确定性。为此,我们采用贝叶斯观点,并展示在许多情况下,鉴于年龄分层发病率和注射数据,关于注射安全性以及受污染注射导致的艾滋病毒发病率比例的先验信念应如何大幅修正,从而得到改进后的(后验)估计值。将该方法应用于乌干达西南部农村的数据,我们发现,如果假定随机混合,因注射导致的发病率的最高估计值从15.5%(95%可信区间)(0.7%,44.9%)降至5.2%(0.5%,17.0%);在异性混合情况下,从14.6%(0.7%,42.5%)降至11.8%(1.2%,32.5%)。较低且更被广泛接受的估计值在1%至3%(0.1 - 6.3%)之间基本保持不变。尽管仍存在重要的不确定性,但我们的分析表明,在乌干达农村,受污染注射不太可能占艾滋病毒发病率的很大比例。这一结果可能适用于撒哈拉以南非洲的许多其他人群。