Dunn Erin C, Masyn Katherine E, Johnston William R, Subramanian S V
Psychiatric and Neurodevelopmental Genetics Unit, Center for Human Genetic Research, Massachusetts General Hospital, 185 Cambridge Street, Simches, Room 6.252, Boston, MA 02114 USA.
Division of Epidemiology and Biostatistics, School of Public Health, Georgia State University, Atlanta, GA 30302 USA.
Popul Health Metr. 2015 May 10;13:12. doi: 10.1186/s12963-015-0045-1. eCollection 2015.
Population health scientists increasingly study how contextual-level attributes affect individual health. A major challenge in this domain relates to measurement, i.e., how best to measure and create variables that capture characteristics of individuals and their embedded contexts. This paper presents an illustration of multilevel factor analysis (MLFA), an analytic method that enables researchers to model contextual effects using individual-level data without using derived variables. MLFA uses the shared variance in sets of observed items among individuals within the same context to estimate a measurement model for latent constructs; it does this by decomposing the total sample variance-covariance matrix into within-group (e.g., individual-level) and between-group (e.g., contextual-level) matrices and simultaneously modeling distinct latent factor structures at each level. We illustrate the MLFA method using items capturing collective efficacy, which were self-reported by 2,599 adults in 65 census tracts from the Los Angeles Family and Neighborhood Survey (LAFANS). MLFA identified two latent factors at the individual level and one factor at the neighborhood level. Indicators of collective efficacy performed differently at each level. The ability of MLFA to identify different latent factor structures at each level underscores the utility of this analytic tool to model and identify attributes of contexts relevant to health.
人口健康科学家越来越多地研究背景层面的属性如何影响个体健康。该领域的一个主要挑战与测量有关,即如何最好地测量和创建能够捕捉个体及其所处背景特征的变量。本文展示了多水平因子分析(MLFA),这是一种分析方法,使研究人员能够在不使用派生变量的情况下,利用个体层面的数据对背景效应进行建模。MLFA利用同一背景下个体间观察项目集的共享方差来估计潜在结构的测量模型;它通过将总样本方差协方差矩阵分解为组内(如个体层面)和组间(如背景层面)矩阵,并同时对每个层面不同的潜在因子结构进行建模来实现这一点。我们使用来自洛杉矶家庭与邻里调查(LAFANS)的65个人口普查区的2599名成年人自我报告的捕捉集体效能的项目来说明MLFA方法。MLFA在个体层面识别出两个潜在因子,在邻里层面识别出一个因子。集体效能的指标在每个层面的表现不同。MLFA在每个层面识别不同潜在因子结构的能力突出了这种分析工具在建模和识别与健康相关的背景属性方面的效用。