Kandala N-B, Ji C, Cappuccio P F, Stones R W
Clinical Sciences Research Institute, Warwick Medical School, Coventry, UK.
AIDS Care. 2008 Aug;20(7):812-9. doi: 10.1080/09540120701742292.
Population surveys of health and fertility are an important source of information about demographic trends and their likely impact on the HIV/AIDS epidemic. In contrast to groups sampled at health facilities they can provide nationally and regionally representative estimates of a range of variables. Data on HIV-sero-status were collected in the 2001 Zambia Demographic and Health Survey (ZDHS) and made available in a separate data file in which HIV status was linked to a very limited set of demographic variables. We utilized this data set to examine associations between HIV prevalence, gender, age and geographical location. We applied the generalized geo-additive semi-parametric model as an alternative to the common linear model, in the context of analyzing the prevalence of HIV infection. This model enabled us to account for spatial auto-correlation, non-linear, location effects on the prevalence of HIV infection at the disaggregated provincial level (nine provinces) and assess temporal and geographical variation in the prevalence of HIV infection, while simultaneously controlling for important risk factors. Of the overall sample of 3950, 54% was female. The overall HIV-positivity rate was 565 (14.3%). The mean age at HIV diagnosis for male was 30.3 (SD=11.2) and 27.7 (SD=9.3) for female respectively. Lusaka and Copperbelt have the first and second highest prevalence of AIDS/HIV (marginal odds ratios of 3.24 and 2.88, respectively) but when the younger age of the urban population and the spatial auto-correlation was taken into account, Lusaka and Copperbelt were no longer among the areas with the highest prevalence. Non-linear effects of age at HIV diagnosis are also discussed and the importance of spatial residual effects and control of confounders on the prevalence of HIV infection. The study was conducted to assess the spatial pattern and the effect of confounding risk factors on AIDS/HIV prevalence and to develop a means of adjusting estimates of AIDS/HIV prevalence on the important risk factors. Controlling for important risk factors, such as geographical location (spatial auto-correlation), age structure of the population and gender, gave estimates of prevalence that are statistically robust. Researchers should be encouraged to use all available information in the data to account for important risk factors when reporting AIDS/HIV prevalence. Where this is not possible, correction factors should be applied, particularly where estimates of AIDS/HIV prevalence are pooled in systematic reviews. Our maps can be used for policy planning and management of AIDS/HIV in Zambia.
关于健康与生育的人口调查是了解人口趋势及其对艾滋病毒/艾滋病疫情可能影响的重要信息来源。与在医疗机构抽取的样本群体不同,它们能够提供一系列变量在全国和区域层面具有代表性的估计值。2001年赞比亚人口与健康调查(ZDHS)收集了艾滋病毒血清学状态数据,并在一个单独的数据文件中提供,其中艾滋病毒状态与一组非常有限的人口统计学变量相关联。我们利用这个数据集来研究艾滋病毒感染率、性别、年龄和地理位置之间的关联。在分析艾滋病毒感染率的背景下,我们应用广义地理加性半参数模型作为普通线性模型的替代方法。该模型使我们能够考虑空间自相关性、非线性、在省级层面(九个省份)艾滋病毒感染率的位置效应,并评估艾滋病毒感染率的时间和地理变化,同时控制重要的风险因素。在3950人的总体样本中,54%为女性。总体艾滋病毒阳性率为565人(14.3%)。男性艾滋病毒诊断时的平均年龄为30.3岁(标准差=11.2),女性为27.7岁(标准差=9.3)。卢萨卡和铜带省的艾滋病/艾滋病毒感染率分别位居第一和第二(边际优势比分别为3.24和2.88),但在考虑到城市人口的年轻年龄和空间自相关性后,卢萨卡和铜带省不再是感染率最高的地区。还讨论了艾滋病毒诊断年龄的非线性效应以及空间残差效应和混杂因素控制对艾滋病毒感染率的重要性。开展这项研究是为了评估艾滋病/艾滋病毒感染率的空间模式和混杂风险因素的影响,并开发一种根据重要风险因素调整艾滋病/艾滋病毒感染率估计值的方法。控制重要的风险因素,如地理位置(空间自相关性)、人口年龄结构和性别,得出的感染率估计值在统计学上是稳健的。应鼓励研究人员在报告艾滋病/艾滋病毒感染率时利用数据中的所有可用信息来考虑重要的风险因素。如果无法做到这一点,应应用校正因子,特别是在系统性综述中汇总艾滋病/艾滋病毒感染率估计值的情况下。我们的地图可用于赞比亚艾滋病/艾滋病毒的政策规划和管理。