...
首页> 外文期刊>Biostatistics >Bayesian distributed lag interaction models to identify perinatal windows of vulnerability in children's health
【24h】

Bayesian distributed lag interaction models to identify perinatal windows of vulnerability in children's health

机译:贝叶斯分布式滞后交互模型,以识别儿童健康中脆弱性的围困窗口

获取原文
获取原文并翻译 | 示例
           

摘要

Epidemiological research supports an association between maternal exposure to air pollution during pregnancy and adverse children's health outcomes. Advances in exposure assessment and statistics allow for estimation of both critical windows of vulnerability and exposure effect heterogeneity. Simultaneous estimation of windows of vulnerability and effect heterogeneity can be accomplished by fitting a distributed lag model (DLM) stratified by subgroup. However, this can provide an incomplete picture of how effects vary across subgroups because it does not allow for subgroups to have the same window but different within-windoweffects or to have different windows but the same within-windoweffect. Because the timing of some developmental processes are common across subpopulations of infants while for others the timing differs across subgroups, both scenarios are important to consider when evaluating health risks of prenatal exposures. We propose a new approach that partitions the DLM into a constrained functional predictor that estimates windows of vulnerability and a scalar effect representing the within-window effect directly. The proposed method allows for heterogeneity in only the window, only the within-window effect, or both. In a simulation study we show that a model assuming a shared component across groups results in lower bias and mean squared error for the estimated windows and effects when that component is in fact constant across groups. We apply the proposed method to estimate windows of vulnerability in the association between prenatal exposures to fine particulate matter and each of birth weight and asthma incidence, and estimate how these associations vary by sex and maternal obesity status in a Boston-area prospective pre-birth cohort study.
机译:流行病学研究支持孕产妇暴露于妊娠期间的空气污染和不良儿童的健康结果。曝光评估和统计数据的进展允许估算脆弱性和曝光效果异质性的关键窗口。通过拟合由子组分层分层的分布式滞后模型(DLM)可以同时估计漏洞和效果异质性。但是,这可以提供一个不完整的图像,这些图像如何在子组中变化,因为它不允许子组具有相同的窗口,但在Wintereffect中不同或具有不同的窗口,但在Winest yeff中具有相同的窗口。由于某些发育过程的时间在婴儿的亚群中是常见的,而对于其他人在亚组的时序不同,这两种情景对于评估产前暴露的健康风险时都很重要。我们提出了一种新的方法,将DLM分区为约束的功能预测,估计漏洞的Windows直接表示窗口效果的标量效果。所提出的方法仅在窗口中仅允许异质性,仅窗口内效应,或两者。在仿真研究中,我们表明假设跨组的共享组件的模型导致估计窗口的较低偏差和均方的误差,并且当该组件实际上跨组实际上是常量的效果。我们应用提出的方法来估算产前暴露与细颗粒物质和哮喘发病率之间的关联的脆弱性的窗口,并估计这些协会在波士顿地区预发育中的性别和产妇肥胖状态如何变化。队列研究。

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