Biostatistics Research Unit, South African Medical Research Council, Pretoria 0001, South Africa.
Department of Statistics, University of Pretoria, Pretoria 0002, South Africa.
Int J Environ Res Public Health. 2020 Apr 28;17(9):3070. doi: 10.3390/ijerph17093070.
Spatial analysis has become an increasingly used analytic approach to describe and analyze spatial characteristics of disease burden, but the depth and coverage of its usage for health surveys data in Sub-Saharan Africa are not well known. The objective of this scoping review was to conduct an evaluation of studies using spatial statistics approaches for national health survey data in the SSA region. An organized literature search for studies related to spatial statistics and national health surveys was conducted through PMC, PubMed/Medline, Scopus, NLM Catalog, and Science Direct electronic databases. Of the 4,193 unique articles identified, 153 were included in the final review. Spatial smoothing and prediction methods were predominant (n = 108), followed by spatial description aggregation (n = 25), and spatial autocorrelation and clustering (n = 19). Bayesian statistics methods and lattice data modelling were predominant (n = 108). Most studies focused on malaria and fever (n = 47) followed by health services coverage (n = 38). Only fifteen studies employed nonstandard spatial analyses (e.g., spatial model assessment, joint spatial modelling, accounting for survey design). We recommend that for future spatial analysis using health survey data in the SSA region, there must be an improve recognition and awareness of the potential dangers of a naïve application of spatial statistical methods. We also recommend a wide range of applications using big health data and the future of data science for health systems to monitor and evaluate impacts that are not well understood at local levels.
空间分析已成为一种越来越常用的分析方法,用于描述和分析疾病负担的空间特征,但在撒哈拉以南非洲的健康调查数据中,其使用的深度和广度尚不清楚。本范围综述的目的是评估在该地区使用空间统计学方法进行国家健康调查数据的研究。通过 PMC、PubMed/Medline、Scopus、NLM 目录和 Science Direct 电子数据库,对与空间统计学和国家健康调查相关的研究进行了有组织的文献检索。在确定的 4193 篇独特文章中,有 153 篇被纳入最终综述。空间平滑和预测方法占主导地位(n = 108),其次是空间描述聚集(n = 25),空间自相关和聚类(n = 19)。贝叶斯统计方法和格子数据建模占主导地位(n = 108)。大多数研究集中在疟疾和发热(n = 47),其次是卫生服务覆盖范围(n = 38)。只有 15 项研究采用了非标准的空间分析(例如,空间模型评估、联合空间建模、考虑调查设计)。我们建议,在撒哈拉以南非洲地区未来使用健康调查数据进行空间分析时,必须提高对空间统计方法的盲目应用的潜在危险的认识和认识。我们还建议广泛应用大数据和未来的数据科学来监测和评估在地方一级尚未充分了解的卫生系统影响。