Department of Geography, State University of New York at Buffalo, Buffalo, NY, USA.
Department of Epidemiology and Environmental Health, State University of New York at Buffalo, Buffalo, NY, USA.
Popul Health Metr. 2021 Oct 28;19(1):42. doi: 10.1186/s12963-021-00273-0.
When Service Provision Assessment (SPA) surveys on primary health service delivery are combined with the nationally representative household survey-Demographic and Health Survey (DHS), they can provide key information on the access, utilization, and equity of health service availability in low- and middle-income countries. However, existing linkage methods have been established only at aggregate levels due to known limitations of the survey datasets.
For the linkage of two data sets at a disaggregated level, we developed a geostatistical approach where SPA limitations are explicitly accounted for by identifying the sites where health facilities might be present but not included in SPA surveys. Using the knowledge gained from SPA surveys related to the contextual information around facilities and their spatial structure, we made an inference on the service environment of unsampled health facilities. The geostatistical linkage results on the availability of health service were validated using two criteria-prediction accuracy and classification error. We also assessed the effect of displacement of DHS clusters on the linkage results using simulation.
The performance evaluation of the geostatistical linkage method, demonstrated using information on the general service readiness of sampled health facilities in Tanzania, showed that the proposed methods exceeded the performance of the existing methods in terms of both prediction accuracy and classification error. We also found that the geostatistical linkage methods are more robust than existing methods with respect to the displacement of DHS clusters.
The proposed geospatial approach minimizes the methodological issues and has potential to be used in various public health research applications where facility and population-based data need to be combined at fine spatial scale.
当初级卫生服务提供情况服务提供评估 (SPA) 调查与具有代表性的国家住户调查——人口与健康调查 (DHS) 相结合时,它们可以提供关于中低收入国家卫生服务可得性的获取、利用和公平性的关键信息。然而,由于调查数据集的已知局限性,现有的链接方法仅在总体水平上建立。
为了在细分水平上进行两个数据集的链接,我们开发了一种地统计方法,通过识别可能存在但未包含在 SPA 调查中的卫生设施地点,明确考虑 SPA 的局限性。利用与设施周围环境及其空间结构相关的 SPA 调查获得的知识,我们对未抽样卫生设施的服务环境进行推断。使用两个标准——预测准确性和分类错误——验证了卫生服务可用性的地统计链接结果。我们还使用模拟评估了 DHS 集群的置换对链接结果的影响。
使用坦桑尼亚抽样卫生设施一般服务准备情况的信息对地理统计链接方法的性能评估表明,在所提出的方法中,无论是在预测准确性还是分类错误方面,都超过了现有方法的性能。我们还发现,与现有方法相比,地理统计链接方法在 DHS 集群的置换方面具有更强的稳健性。
所提出的空间方法最大限度地减少了方法学问题,并且有可能在需要在精细空间尺度上结合设施和人口数据的各种公共卫生研究应用中使用。