6533b82dfe1ef96bd1291493

RESEARCH PRODUCT

Is Small Still Beautiful for the Strengths and Difficulties Questionnaire? Novel Findings Using Exploratory Structural Equation Modeling.

Luis Rojo-morenoAgustín Martínez-molinaGloria FerrísLuis Eduardo GarridoLuis Eduardo GarridoJuan Ramón BarradaJose Armando AguasvivasHudson GolinoEva LegazVíctor B. Arias

subject

050103 clinical psychologyAdolescentFactor structuredimensionalityStructural equation modelingfactor structure0504 sociologySDQSurveys and QuestionnairesMathematics educationHumansMass Screening0501 psychology and cognitive sciencesadolescentsChildApplied PsychologyLanguage05 social sciences050401 social sciences methodsStrengths and Difficulties QuestionnaireESEMConfirmatory factor analysisClinical PsychologyCFALatent Class AnalysisPsychologyFactor Analysis Statisticalbehavioral problems

description

Article first published online: June 17, 2018 During the present decade a large body of research has employed confirmatory factor analysis (CFA) to evaluate the factor structure of the Strengths and Difficulties Questionnaire (SDQ) across multiple languages and cultures. However, because CFA can produce strongly biased estimations when the population cross-loadings differ meaningfully from zero, it may not be the most appropriate framework to model the SDQ responses. With this in mind, the current study sought to assess the factorial structure of the SDQ using the more flexible exploratory structural equation modeling approach. Using a large-scale Spanish sample composed of 67,253 youths aged between 10 and 18 years (M = 14.16, SD = 1.07), the results showed that CFA provided a severely biased and overly optimistic assessment of the underlying structure of the SDQ. In contrast, exploratory structural equation modeling revealed a generally weak factorial structure, including questionable indicators with large cross-loadings, multiple error correlations, and significant wording variance. A subsequent Monte Carlo study showed that sample sizes greater than 4,000 would be needed to adequately recover the SDQ loading structure. The findings from this study prevent recommending the SDQ as a screening tool and suggest caution when interpreting previous results in the literature based on CFA modeling. The author(s) received no financial support for the research, authorship, and/or publication of this article

10.1177/1073191118780461https://pubmed.ncbi.nlm.nih.gov/29911418