Spatial association between socio-economic health service factors and sepsis mortality in Thailand.

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES
Juree Sansuk, Wongsa Laohasiriwong, Kittipong Sornlorm
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引用次数: 0

Abstract

Sepsis is a significant global health issue causing organ failure and high mortality. The number of sepsis cases has recently increased in Thailand making it crucial to comprehend the factors behind these infections. This study focuses on exploring the spatial autocorrelation between socio-economic factors and health service factors on the one hand and sepsis mortality on the other. We applied global Moran's I, local indicators of spatial association (LISA) and spatial regression to examine the relationship between these variables. Based on univariate Moran's I scatter plots, sepsis mortality in all 77 provinces in Thailand were shown to exhibit a positive spatial autocorrelation that reached a significant value (0.311). The hotspots/ high-high (HH) clusters of sepsis mortality were mostly located in the central region of the country, while the coldspots/low-low (LL) clusters were observed in the north-eastern region. Bivariate Moran's I indicated a spatial autocorrelation between various factors and sepsis mortality, while the LISA analysis revealed 7 HH clusters and 5 LL clusters associated with population density. Additionally, there were 6 HH and 4 LL clusters in areas with the lowest average temperature, 4 HH and 2 LL clusters in areas with the highest average temperature, 8 HH and 5 LL clusters associated with night-time light and 6 HH and 5 LL clusters associated with pharmacy density. The spatial regression models conducted in this study determined that the spatial error model (SEM) provided the best fit, while the parameter estimation results revealed that several factors, including population density, average lowest and highest temperature, night-time light and pharmacy density, were positively correlated with sepsis mortality. The coefficient of determination (R2) indicated that the SEM model explained 56.4% of the variation in sepsis mortality. Furthermore, based on the Akaike Information Index (AIC), the SEM model slightly outperformed the spatial lag model (SLM) with an AIC value of 518.1 compared to 520.

泰国社会经济卫生服务因素与败血症死亡率的空间关联
败血症是一个重大的全球健康问题,导致器官衰竭和高死亡率。泰国败血症病例的数量最近有所增加,因此了解这些感染背后的因素至关重要。本研究主要探讨社会经济因素、卫生服务因素与败血症死亡率的空间自相关关系。我们运用全局Moran’s I、局部空间关联指标(LISA)和空间回归来检验这些变量之间的关系。基于单变量Moran’s I散点图,泰国所有77个省份的脓毒症死亡率显示出正的空间自相关,达到显著值(0.311)。败血症死亡率热点/高-高(HH)聚集型多位于中部地区,而冷点/低-低(LL)聚集型多位于东北部地区。双变量Moran's I显示各因素与脓毒症死亡率存在空间自相关,而LISA分析显示7个HH聚类和5个LL聚类与人口密度相关。平均气温最低的地区有6个HH和4个LL集群,平均气温最高的地区有4个HH和2个LL集群,与夜间光照相关的有8个HH和5个LL集群,与药房密度相关的有6个HH和5个LL集群。本研究的空间回归模型确定空间误差模型(SEM)拟合最佳,参数估计结果显示人口密度、平均最低和最高温度、夜间光照和药房密度等因素与脓毒症死亡率呈正相关。决定系数(R2)表明SEM模型解释了脓毒症死亡率变异的56.4%。此外,基于赤池信息指数(Akaike Information Index, AIC)的SEM模型的AIC值为518.1,略优于空间滞后模型(spatial lag model, SLM)的520。
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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来源期刊
Geospatial Health
Geospatial Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
2.40
自引率
11.80%
发文量
48
审稿时长
12 months
期刊介绍: The focus of the journal is on all aspects of the application of geographical information systems, remote sensing, global positioning systems, spatial statistics and other geospatial tools in human and veterinary health. The journal publishes two issues per year.
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