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Latent variable and clustering methods in intersectionality research: systematic review of methods applications
- Source :
- Social Psychiatry and Psychiatric Epidemiology
- Publication Year :
- 2021
- Publisher :
- Springer Berlin Heidelberg, 2021.
-
Abstract
- Purpose An intersectionality framework has been increasingly incorporated into quantitative study of health inequity, to incorporate social power in meaningful ways. Researchers have identified “person-centered” methods that cluster within-individual characteristics as appropriate to intersectionality. We aimed to review their use and match with theory. Methods We conducted a multidisciplinary systematic review of English-language quantitative studies wherein authors explicitly stated an intersectional approach, and used clustering methods. We extracted study characteristics and applications of intersectionality. Results 782 studies with quantitative applications of intersectionality were identified, of which 16 were eligible: eight using latent class analysis, two latent profile analysis, and six clustering methods. Papers used cross-sectional data (100.0%) primarily had U.S. lead authors (68.8%) and were published within psychology, social sciences, and health journals. While 87.5% of papers defined intersectionality and 93.8% cited foundational authors, engagement with intersectionality method literature was more limited. Clustering variables were based on social identities/positions (e.g., gender), dimensions of identity (e.g., race centrality), or processes (e.g., stigma). Results most commonly included four classes/clusters (60.0%), which were frequently used in additional analyses. These described sociodemographic differences across classes/clusters, or used classes/clusters as an exposure variable to predict outcomes in regression analysis, structural equation modeling, mediation, or survival analysis. Author rationales for method choice included both theoretical/intersectional and statistical arguments. Conclusion Latent variable and clustering methods were used in varied ways in intersectional approaches, and reflected differing matches between theory and methods. We highlight situations in which these methods may be advantageous, and missed opportunities for additional uses.
- Subjects :
- Intersectionality
Mediation (statistics)
Health (social science)
Intersectional Framework
Social Psychology
Epidemiology
Social Stigma
Latent variable
Review
Structural equation modeling
Cluster Analysis
Humans
Social identity theory
Cluster analysis
Health equity
Health Inequities
Regression analysis
Latent variable methods
Data science
Latent class model
Psychiatry and Mental health
Cross-Sectional Studies
Systematic review
Clustering methods
Psychology
Research methods
Subjects
Details
- Language :
- English
- ISSN :
- 14339285 and 09337954
- Volume :
- 57
- Issue :
- 2
- Database :
- OpenAIRE
- Journal :
- Social Psychiatry and Psychiatric Epidemiology
- Accession number :
- edsair.doi.dedup.....90f21f7b3c8e412aa7115e8663d1ea52