Towards Causal Interpretation of Sexual Orientation in Regression Analysis: Applications and Challenges
Junjie Lu, Zhongyi Guo, David H. Rehkopf

TL;DR
This paper proposes a causal analysis framework for understanding health disparities in Sexual and Gender Minority populations, emphasizing precise measurement of sexual orientation and social support to improve causal inference in regression models.
Contribution
It introduces a method for causal interpretation of sexual orientation effects in regression analysis, incorporating mediators and detailed orientation domains, demonstrated through health survey data.
Findings
SGM status has a significant direct effect on depression
No significant indirect effect of social support on depression
Highlights importance of detailed sexual orientation measurement
Abstract
This study presents an approach to analyze health disparities in Sexual and Gender Minority (SGM) populations, with a focus on the role of social support levels as an example to allow causal interpretations of regression models. We advocate for precisely defining the exposure variable and incorporating mediators into analyses, to address the limitations of comparing counterfactual outcomes solely between SGM and heterosexual populations. We define sexual orientation into domains (attraction, behavior, and identity), and emphasize a consideration of these elements either separately or together, depending on the research question. We also introduce social support measured before and after the disclosure of sexual orientation to facilitate inference. We illustrate this approach by examining the association between SGM status and depression diagnosis with data from the 2020 and 2021…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Demographic Trends and Gender Preferences · Survey Sampling and Estimation Techniques
