Merlo Juan, Chaix Basile, Yang Min, Lynch John, Råstam Lennart
Department of Community Medicine (Section of Preventive Medicine), Malmö University Hospital, Faculty of Medicine (Campus Malmö), Lund University, S-205 02 Malmö, Sweden.
J Epidemiol Community Health. 2005 Dec;59(12):1022-8. doi: 10.1136/jech.2004.028035.
Using a conceptual rather than a mathematical approach, this article proposed a link between multilevel regression analysis (MLRA) and social epidemiological concepts. It has been previously explained that the concept of clustering of individual health status within neighbourhoods is useful for operationalising contextual phenomena in social epidemiology. It has been shown that MLRA permits investigating neighbourhood disparities in health without considering any particular neighbourhood characteristic but only information on the neighbourhood to which each person belongs. This article illustrates how to analyse cross level (neighbourhood-individual) interactions, how to investigate associations between neighbourhood characteristics and individual health, and how to use the concept of clustering when interpreting those associations and geographical differences in health.
A MLRA was performed using hypothetical data pertaining to systolic blood pressure (SBP) from 25 000 subjects living in the 39 neighbourhoods of an imaginary city. Associations between individual characteristics (age, body mass index (BMI), use of antihypertensive drug, income) or neighbourhood characteristic (neighbourhood income) and SBP were analysed.
About 8% of the individual differences in SBP were located at the neighbourhood level. SBP disparities and clustering of individual SBP within neighbourhoods increased along individual BMI. Neighbourhood low income was associated with increased SBP over and above the effect of individual characteristics, and explained 22% of the neighbourhood differences in SBP among people of normal BMI. This neighbourhood income effect was more intense in overweight people.
Measures of variance are relevant to understanding geographical and individual disparities in health, and complement the information conveyed by measures of association between neighbourhood characteristics and health.
本文采用概念性而非数学方法,提出了多水平回归分析(MLRA)与社会流行病学概念之间的联系。此前已有解释称,邻里间个体健康状况聚集的概念有助于在社会流行病学中对情境现象进行操作化。研究表明,MLRA允许在不考虑任何特定邻里特征的情况下调查邻里间的健康差异,只需了解每个人所属邻里的信息即可。本文阐述了如何分析跨层次(邻里 - 个体)相互作用,如何调查邻里特征与个体健康之间的关联,以及在解释这些关联和健康方面的地理差异时如何使用聚集概念。
使用来自虚构城市39个邻里的25000名受试者的收缩压(SBP)假设数据进行多水平回归分析。分析了个体特征(年龄、体重指数(BMI)、抗高血压药物使用情况、收入)或邻里特征(邻里收入)与收缩压之间的关联。
收缩压个体差异的约8%位于邻里层面。邻里内收缩压差异和个体收缩压聚集随个体BMI增加而增加。邻里低收入与个体特征影响之外的收缩压升高相关,并且解释了正常BMI人群中收缩压邻里差异的22%。这种邻里收入效应在超重人群中更为强烈。
方差测量对于理解健康方面的地理和个体差异具有重要意义,并且补充了邻里特征与健康之间关联测量所传达的信息。