Department of Public Health, College of Medicine and Health Sciences, Hawassa University , Hawassa, Ethiopia.
Department of Clinical Sciences, Liverpool School of Tropical Medicine , Liverpool, UK.
Glob Health Action. 2020 Dec 31;13(1):1785737. doi: 10.1080/16549716.2020.1785737.
Previous studies from Ethiopia detected disease clustering using broader geographic settings, but limited information exists on the spatial distribution of the disease using residential locations. An assessment of predictors of spatial variations of TB at community level could fill the knowledge gaps, and helps in devising tailored interventions to improve TB control.
To assess the pattern of spatial distribution of pulmonary tuberculosis (PTB) based on geographic locations of individual cases in the Dale district and Yirga Alem town in southern Ethiopia.
The socio-demographic characteristics of PTB cases were collected using a structured questionnaire, and spatial information was collected using geographic position systems. We carried out Getis and Ord (Gi*) statistics and scan statistics to explore the pattern of spatial clusters of PTB cases, and geographically weighted regression (GWR) was used to assess the spatial heterogeneities in relationship between predictor variables and PTB case notification rates (CNRs).
The distribution of PTB varied by enumeration areas within the kebeles, and we identified areas with significant hotspots in various areas ineach year. In GWR analysis, the disease distribution showed a geographic heterogeneity (non-stationarity) in relation to physical access (distance to TB control facilities) and population density (AICc = 5591, R = 0.3359, adjusted R = 0.2671). The model explained 27% of the variability in PTB CNRs (local R ranged from 0.0002-0.4248 between enumeration areas). The GWR analysis showed that areas with high PTB CNRs had better physical accessibility to TB control facilities and high population density. The effect of physical access on PTB CNRs changed after the coverage of TB control facilities was improved.
We report a varying distribution of PTB in small and different areas over 10 years. Spatial and temporal analysis of disease distribution can be used to identify areas with a high burden of disease and predictors of clustering, which helps in making policy decisions and devising targeted interventions.
以往来自埃塞俄比亚的研究使用更广泛的地理环境来检测疾病聚集情况,但关于利用居民居住位置来评估疾病空间分布的信息有限。在社区层面评估结核病空间变化的预测因素可以填补知识空白,并有助于制定有针对性的干预措施来改善结核病控制。
评估在埃塞俄比亚南部 Dale 区和 Yirga Alem 镇,根据个体病例的地理位置,肺结核(PTB)的空间分布模式。
使用结构化问卷收集结核病例的社会人口特征信息,并使用地理定位系统收集空间信息。我们进行了 Getis 和 Ord(Gi*)统计和扫描统计,以探索结核病例空间聚类模式,并使用地理加权回归(GWR)评估预测变量与结核病例报告率(CNR)之间关系的空间异质性。
PTB 的分布因区内的普查区而异,我们在每年的各个地区都发现了具有显著热点的区域。在 GWR 分析中,疾病分布与物理可达性(距结核病控制设施的距离)和人口密度(AICc=5591,R=0.3359,调整 R=0.2671)存在地理异质性(非平稳性)。该模型解释了结核病例报告率(CNR)变化的 27%(局部 R 在普查区之间的范围为 0.0002-0.4248)。GWR 分析表明,结核病例报告率高的地区具有更好的物理可达性,结核病控制设施覆盖范围广,人口密度高。在结核病控制设施覆盖范围得到改善后,物理可达性对结核病例报告率的影响发生了变化。
我们报告了 10 年来在小而不同的地区结核病例报告率的变化分布。疾病分布的时空分析可用于识别疾病负担高的地区和聚类的预测因素,这有助于做出政策决策和制定有针对性的干预措施。