| Literature DB >> 30764816 |
Janet M Turan1, Melissa A Elafros2, Carmen H Logie3,4, Swagata Banik5, Bulent Turan6, Kaylee B Crockett6, Bernice Pescosolido7, Sarah M Murray8.
Abstract
BACKGROUND: 'Intersectional stigma' is a concept that has emerged to characterize the convergence of multiple stigmatized identities within a person or group, and to address their joint effects on health and wellbeing. While enquiry into the intersections of race, class, and gender serves as the historical and theoretical basis for intersectional stigma, there is little consensus on how best to characterize and analyze intersectional stigma, or on how to design interventions to address this complex phenomenon. The purpose of this paper is to highlight existing intersectional stigma literature, identify gaps in our methods for studying and addressing intersectional stigma, provide examples illustrating promising analytical approaches, and elucidate priorities for future health research. DISCUSSION: Evidence from the existing scientific literature, as well as the examples presented here, suggest that people in diverse settings experience intersecting forms of stigma that influence their mental and physical health and corresponding health behaviors. As different stigmas are often correlated and interrelated, the health impact of intersectional stigma is complex, generating a broad range of vulnerabilities and risks. Qualitative, quantitative, and mixed methods approaches are required to reduce the significant knowledge gaps that remain in our understanding of intersectional stigma, shared identity, and their effects on health.Entities:
Keywords: Layered stigma; discrimination; double stigma; intersectional; measurement; multiple stigma; overlapping stigma; prejudice
Mesh:
Year: 2019 PMID: 30764816 PMCID: PMC6376691 DOI: 10.1186/s12916-018-1246-9
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Overview of quantitative analysis strategies for modeling intersectional stigma
| Strategy | Description | Advantages | Limitations | Examples | Recommendations for use |
|---|---|---|---|---|---|
| Stratified analyses | The relationship between a measure of stigma and a health outcome is analyzed in separate samples disaggregated by an identity of interest (e.g., illness status, gender, race) | • Simple, easy to perform and interpret | • Cannot necessarily test for statistical significance [ | • Exploration of educational outcomes among individuals of Mexican origin only within a sample of women [ | • Exploratory questions about how the relationship between stigma and health might vary in the presence of an additional identity-related factor that is discrete (e.g., HIV-status, gender) |
| Factorial design | Vignettes that describe individuals with different combinations of characteristics or identities are presented, typically randomly, to a general population sample. Individuals’ responses to a measure of stigma (e.g., social distance) across vignettes are compared [ | • Allows for decomposition of stigma related to different identities or factors into unique and shared components [ | • Can reflect additive assumptions about the nature of intersectional stigma [ | • Disentanglement of stigma associated with HIV from stigma associated with risk practices (e.g., injection drug use) [ | • How the level of community discrimination or stigmatizing attitudes and beliefs may vary based on the presence or absence of a small number of additional behavioral or identity-related factors |
| Moderation analysis | The main effects of two (or more) stigma-related variables are modeled along with the product of those variables (e.g., race × gender × HIV status) | • Simple to do, and in the case of two-way interactions, to interpret | • When main effects explain much of the variance in the outcome, the ability to assess interactions between those terms is limited [ | • Examination of how social adversity, HIV status, and race interact to explain depression [ | • When large sample sizes are available and variation is present within subgroups to test how the relationship between stigma and health might vary in the presence of an additional identity-related factor that is discrete (e.g., HIV-status, gender) |
| Latent class or latent profile analysis | Identifies subpopulations of individuals based on their endorsement of different stigma or discrimination experiences | • A person-centered, rather than variable-centered, approach to assessing intersectionality | • Can require large sample sizes | • Identification of patterns of bullying and discrimination experiences related to different identities and assessed to what extent these patterns differentially predicted mental health outcomes [ | • When large sample sizes are available and the question of interest is how the nature of stigma may vary based on the presence of different combinations of stigmatized behaviors or identities |
| Multilevel models | In addition to fixed effects, random effects (intercepts and slopes) at the cluster level (e.g., neighborhood, city, country) are included in regression models | • Enables modeling of structural level influences on stigma and health | • More difficult to explain to lay audiences, including policymakers and funders in some cases | • Exploration of whether the relationship of gender, class, and race to self-rated health varied by neighborhood [ | • When multiple time points are available or data is available from multiple clusters (the number necessary will vary, but 10–15 would be considered few clusters for an analysis [ |
| Structural equation modeling | Allows for simultaneous estimation of measurement and structural components, including pathways between observed and latent variables | • Appropriately models measurement error associated with inclusion of latent variables | • Modeled relationships may be inappropriately interpreted as causal | • Simultaneous assessment of experiences of racial discrimination and HIV-related stigma on quality of life among African and Caribbean Black women in Canada [ | • For estimating complex models including multiple stigma-related factors as predictors or multiple related health outcomes of interest, particularly when including psychosocial variables that are not directly observable (e.g., stress, coping) |
Fig. 1Preference for social distance due to schizophrenia and other minority traits (Box 1).