» Articles » PMID: 31665657

Understanding the Population Structure of the GHQ-12: Methodological Considerations in Dimensionally Complex Measurement Outcomes

Overview
Journal Soc Sci Med
Date 2019 Oct 31
PMID 31665657
Citations 16
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Mental health and its complexity, measurement and social determinants are increasingly important avenues of research for social scientists. Quantitative social science commonly investigates mental health as captured by population screening metrics. One of the most common of these metrics is the 12-Item General Health Questionnaire (GHQ-12). Despite itscanonical use as an outcome of interest in social science, the traditional use of the summed scores of summed questionnaires carries empirical and substantive assumptions which are often not fully considered or justified in the research. We outline the implications of these assumptions and the restrictions imposed by traditional modelling techniques and advocate for a more nuanced approach to population mental health modelling and inference.

Data & Methods: We use novel Exploratory Structural Equation Modelling (ESEM) on a large, representative UK sample taken from the first wave of the Understanding Society Survey, totalling 40,452 respondents. We use this to exemplify the potential of traditional, restrictive assumptions to bias conclusions and policy recommendations.

Results: ESEM analysis identifies a 4-factor structure for the GHQ-12, including a newly proposed "Emotional Coping" dimension. This structure is then tested against leading proposed factor structures from the literature and is demonstrated to perform better across all metrics, under both Maximum Likelihood and Bayesian estimation. Moreover, the proposed factors are more substantively dissimilar than those retrieved from previous literature.

Conclusions: The results highlight the inferential limitations of using simple summed scores as population health outcomes. We advocate for the use of the highlighted methods, which in combination with population studies offer quantitative social scientists the opportunity to explore predictors and patterns of underlying processes of population mental health outcomes, explicitly addressing the complexity and measurement error inherent to mental health analysis.

Citing Articles

Using GHQ-12 to Screen Mental Health Issues in People with Emphysema.

Kang W, Whelan E, Pineda Hernandez S Healthcare (Basel). 2023; 11(14).

PMID: 37510450 PMC: 10379281. DOI: 10.3390/healthcare11142009.


Understanding the Relationship Between Decreases in Social Security Benefits and Intergenerational Inequalities in Mental Health.

Simpson J, Bambra C, Brown H Int J Soc Determinants Health Health Serv. 2023; 53(4):403-413.

PMID: 37403462 PMC: 10631259. DOI: 10.1177/27551938231185948.


Understanding the effect of angina on general and dimensions of psychological distress: findings from understanding society.

Kang W Front Psychiatry. 2023; 14:1119562.

PMID: 37304447 PMC: 10248021. DOI: 10.3389/fpsyt.2023.1119562.


Mental Health in Coronary Heart Disease (CHD) Patients: Findings from the UK Household Longitudinal Study (UKHLS).

Kang W, Malvaso A Healthcare (Basel). 2023; 11(10).

PMID: 37239650 PMC: 10218487. DOI: 10.3390/healthcare11101364.


Global and Dimensions of Mental Health in Arthritis Patients.

Kang W Healthcare (Basel). 2023; 11(2).

PMID: 36673563 PMC: 9859167. DOI: 10.3390/healthcare11020195.