首页> 外文期刊>Journal of exposure science & environmental epidemiology >Considering spatial heterogeneity in the distributed lag non-linear model when analyzing spatiotemporal data
【24h】

Considering spatial heterogeneity in the distributed lag non-linear model when analyzing spatiotemporal data

机译:考虑分布式滞后非线性模型时的空间异质性分析时空数据

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

The distributed lag non-linear (DLNM) model has been frequently used in time series environmental health research. However, its functionality for assessing spatial heterogeneity is still restricted, especially in analyzing spatiotemporal data. This study proposed a solution to take a spatial function into account in the DLNM, and compared the influence with and without considering spatial heterogeneity in a case study. This research applied the DLNM to investigate non-linear lag effect up to 7 days in a case study about the spatiotemporal impact of fine particulate matter (PM2.5) on preschool children's acute respiratory infection in 41 districts of northern Taiwan during 2005 to 2007. We applied two spatiotemporal methods to impute missing air pollutant data, and included the Markov random fields to analyze district boundary data in the DLNM. When analyzing the original data without a spatial function, the overall PM2.5 effect accumulated from all lag-specific effects had a slight variation at smaller PM2.5 measurements, but eventually decreased to relative risk significantly 1 when PM2.5 increased. While analyzing spatiotemporal imputed data without a spatial function, the overall PM2.5 effect did not decrease but increased in monotone as PM2.5 increased over 20 mu g/m(3). After adding a spatial function in the DLNM, spatiotemporal imputed data conducted similar results compared with the overall effect from the original data. Moreover, the spatial function showed a clear and uneven pattern in Taipei, revealing that preschool children living in 31 districts of Taipei were vulnerable to acute respiratory infection. Our findings suggest the necessity of including a spatial function in the DLNM to make a spatiotemporal analysis available and to conduct more reliable and explainable research. This study also revealed the analytical impact if spatial heterogeneity is ignored.
机译:分布式滞后非线性(DLNM)模型是时间序列环境健康研究中常用的模型。然而,其评估空间异质性的功能仍然受到限制,尤其是在分析时空数据方面。本研究提出了在DLNM中考虑空间功能的解决方案,并在案例研究中比较了考虑和不考虑空间异质性的影响。本研究应用DLNM调查了2005年至2007年间台湾北部41个地区细颗粒物(PM2.5)对学龄前儿童急性呼吸道感染的时空影响的案例研究中长达7天的非线性滞后效应。我们采用两种时空方法来插补缺失的空气污染物数据,并在DLNM中加入马尔可夫随机场来分析区域边界数据。在没有空间函数的情况下分析原始数据时,总体PM2。5在PM2较小时,所有滞后效应累积的效应略有变化。5次测量,但最终显著降低相对风险;1.PM2。5增加。在分析没有空间函数的时空插补数据时,总体PM2。随着PM2浓度的增加,5效应并没有减弱,而是单调增加。5增加20亩g/m以上(3)。在DLNM中添加空间函数后,时空插补数据与原始数据的总体效果进行了类似的结果比较。此外,台北市的空间功能呈现出明显且不均匀的格局,表明台北市31个区的学龄前儿童易受急性呼吸道感染。我们的研究结果表明,有必要在DLNM中包含一个空间函数,以便进行时空分析,并进行更可靠、更可解释的研究。这项研究还揭示了忽略空间异质性的分析影响。

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