National Institute of Public Health, Oslo, Norway.
Scand J Public Health. 2010 Nov;38(5 Suppl):119-26. doi: 10.1177/1403494810384646.
In this paper we present multilevel models of individuals' residential history at multiple time points through the life course and their application and discuss some advantages and disadvantages for their use in epidemiological studies.
Literature review of research using longitudinal multilevel models in studies of neighbourhood effects, statistical multilevel models that take individuals' residential history into account, and the application of these models in the Oslo mortality study.
Measures of variance have been used to investigate the contextual impact of membership to collectives, such as area of residence, at several time points. The few longitudinal multilevel models that have been used suggest that early life area of residence may have an effect on mortality independently of residence later in life although the proportion of variation attributable to area level is small compared to individual level. The following multilevel models have been developed: simple multilevel models for each year separately, a multiple membership model, a cross-classified model, and finally a correlated cross-classified model. These models have different assumptions regarding the timing of influence through the life course.
To fully recognise the origin of adult chronic diseases, factors at all stages of the life course at both individual and area level needs to be considered in order to avoid biased estimates. Important challenges in making life course residential data available for research and assessing how changing administrative coding over time reflect contextual impact need to be overcome before these models can be implemented as normal practice in multilevel epidemiology.
本文介绍了个体在整个生命历程中多个时间点的居住史的多层次模型及其应用,并讨论了其在流行病学研究中的一些优缺点。
文献回顾了在邻里效应研究中使用纵向多层次模型、考虑个体居住史的统计多层次模型的研究,以及这些模型在奥斯陆死亡率研究中的应用。
方差测度被用于在多个时间点上研究集合(如居住区域)的环境影响。少数使用的纵向多层次模型表明,早期生活区域居住可能对死亡率有影响,而不考虑后期的居住情况,尽管与个体水平相比,区域水平的差异比例较小。已经开发了以下多层次模型:每年单独的简单多层次模型、多成员模型、交叉分类模型和最终的相关交叉分类模型。这些模型对生命历程中影响的时间有不同的假设。
为了充分认识成人慢性病的起源,需要在个体和区域层面上考虑生命历程各个阶段的因素,以避免有偏差的估计。在这些模型可以作为多层次流行病学的常规实践实施之前,需要克服为研究提供生命历程居住数据的重要挑战,并评估随着时间的推移不断变化的行政编码如何反映环境影响。