Evaluation of geospatial methods to generate subnational HIV prevalence estimates for local level planning

J. Larmarange
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引用次数: 35

Abstract

Objective:There is evidence of substantial subnational variation in the HIV epidemic. However, robust spatial HIV data are often only available at high levels of geographic aggregation and not at the finer resolution needed for decision making. Therefore, spatial analysis methods that leverage available data to provide local estimates of HIV prevalence may be useful. Such methods exist but have not been formally compared when applied to HIV. Design/methods:Six candidate methods – including those used by the Joint United Nations Programme on HIV/AIDS to generate maps and a Bayesian geostatistical approach applied to other diseases – were used to generate maps and subnational estimates of HIV prevalence across three countries using cluster level data from household surveys. Two approaches were used to assess the accuracy of predictions: internal validation, whereby a proportion of input data is held back (test dataset) to challenge predictions; and comparison with location-specific data from household surveys in earlier years. Results:Each of the methods can generate usefully accurate predictions of prevalence at unsampled locations, with the magnitude of the error in predictions similar across approaches. However, the Bayesian geostatistical approach consistently gave marginally the strongest statistical performance across countries and validation procedures. Conclusions:Available methods may be able to furnish estimates of HIV prevalence at finer spatial scales than the data currently allow. The subnational variation revealed can be integrated into planning to ensure responsiveness to the spatial features of the epidemic. The Bayesian geostatistical approach is a promising strategy for integrating HIV data to generate robust local estimates.
评价地理空间方法,为地方一级规划编制次国家艾滋病毒流行情况估计数
目的:有证据表明,艾滋病毒流行在不同国家之间存在很大差异。然而,可靠的艾滋病毒空间数据往往只能在高水平的地理聚集上获得,而不能在决策所需的更精细的分辨率上获得。因此,利用现有数据提供当地艾滋病毒流行率估计的空间分析方法可能是有用的。这些方法是存在的,但在应用于艾滋病毒时尚未进行正式比较。设计/方法:使用六种候选方法——包括联合国艾滋病毒/艾滋病联合规划署用于生成地图的方法和适用于其他疾病的贝叶斯地理统计学方法——利用来自住户调查的聚类级数据生成三个国家艾滋病毒流行情况的地图和次国家估计数。我们使用了两种方法来评估预测的准确性:内部验证,即保留一定比例的输入数据(测试数据集)来挑战预测;并与早些年住户调查的具体地点数据进行比较。结果:每种方法都可以对未采样地点的患病率产生有用的准确预测,并且不同方法的预测误差大小相似。然而,贝叶斯地质统计学方法始终在各国和验证程序中提供了最强大的统计性能。结论:现有的方法可能能够在比目前数据更精细的空间尺度上提供艾滋病毒流行率的估计。所揭示的地方差异可纳入规划,以确保对该流行病的空间特征作出反应。贝叶斯地质统计学方法是一种很有前途的整合艾滋病毒数据以产生可靠的局部估计的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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