...
首页> 外文期刊>International Journal of Environmental Research and Public Health >The Association between Environmental Factors and Scarlet Fever Incidence in Beijing Region: Using GIS and Spatial Regression Models
【24h】

The Association between Environmental Factors and Scarlet Fever Incidence in Beijing Region: Using GIS and Spatial Regression Models

机译:北京地区环境因素与猩红热发病率的关联:基于GIS和空间回归模型

获取原文
           

摘要

(1) Evidence regarding scarlet fever and its relationship with meteorological, including air pollution factors, is not very available. This study aimed to examine the relationship between ambient air pollutants and meteorological factors with scarlet fever occurrence in Beijing, China. (2) Methods: A retrospective ecological study was carried out to distinguish the epidemic characteristics of scarlet fever incidence in Beijing districts from 2013 to 2014. Daily incidence and corresponding air pollutant and meteorological data were used to develop the model. Global Moran’s I statistic and Anselin’s local Moran’s I (LISA) were applied to detect the spatial autocorrelation (spatial dependency) and clusters of scarlet fever incidence. The spatial lag model (SLM) and spatial error model (SEM) including ordinary least squares (OLS) models were then applied to probe the association between scarlet fever incidence and meteorological including air pollution factors. (3) Results: Among the 5491 cases, more than half (62%) were male, and more than one-third (37.8%) were female, with the annual average incidence rate 14.64 per 100,000 population. Spatial autocorrelation analysis exhibited the existence of spatial dependence; therefore, we applied spatial regression models. After comparing the values of R-square, log-likelihood and the Akaike information criterion (AIC) among the three models, the OLS model (R2 = 0.0741, log likelihood = ?1819.69, AIC = 3665.38), SLM (R2 = 0.0786, log likelihood = ?1819.04, AIC = 3665.08) and SEM (R2 = 0.0743, log likelihood = ?1819.67, AIC = 3665.36), identified that the spatial lag model (SLM) was best for model fit for the regression model. There was a positive significant association between nitrogen oxide (p = 0.027), rainfall (p = 0.036) and sunshine hour (p = 0.048), while the relative humidity (p = 0.034) had an adverse association with scarlet fever incidence in SLM. (4) Conclusions: Our findings indicated that meteorological, as well as air pollutant factors may increase the incidence of scarlet fever; these findings may help to guide scarlet fever control programs and targeting the intervention.
机译:(1)关于猩红热及其与气象(包括空气污染因素)的关系的证据不是很充分。本研究旨在探讨中国北京地区大气污染物和气象因素与猩红热发生的关系。 (2)方法:进行回顾性生态研究,以区分北京地区2013年至2014年猩红热发病的流行特征。使用日发病率以及相应的空气污染物和气象数据来建立该模型。使用全球Moran I统计和Anselin当地Moran I(LISA)来检测空间自相关(空间依赖性)和猩红热发病率的群集。然后,应用包括普通最小二乘(OLS)模型的空间滞后模型(SLM)和空间误差模型(SEM)来研究猩红热的发生率与气象学(包括空气污染因子)之间的关联。 (3)结果:在5491例病例中,男性占一半以上(62%),女性占三分之一以上(37.8%),年平均发病率为每10万人14.64。空间自相关分析表明存在空间依赖性。因此,我们应用了空间回归模型。在比较这三个模型的R平方,对数似然度和Akaike信息标准(AIC)的值后,OLS模型(R2 = 0.0741,对数似然性=?1819.69,AIC = 3665.38),SLM(R2 = 0.0786,对数似然= 1819.04,AIC = 3665.08)和SEM(R2 = 0.0743,对数似然= 18181.67,AIC = 3665.36)表明,空间滞后模型(SLM)最适合回归模型。在SLM中,氮氧化物(p = 0.027),降雨(p = 0.036)和日照时间(p = 0.048)之间存在正显着正相关,而相对湿度(p = 0.034)与猩红热的发生呈负相关。 (4)结论:我们的发现表明,气象因素以及空气污染物因素可能会增加猩红热的发生;这些发现可能有助于指导猩红热控制计划和针对性干预。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号