Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
316450 | Comprehensive Psychiatry | 2013 | 10 Pages |
BackgroundThere is a paucity of empirical studies examining the latent structure of depression symptoms within clinical populations.ObjectiveThe current study aimed to evaluate the latent structure of DSM-IV major depression utilising dimensional, categorical, and hybrid models of dimensional and categorical latent variables in a large treatment-seeking population.MethodsLatent class models, latent factor models, and factor mixture models were fit to data from 1165 patients currently undergoing online treatment for depression.ResultsModel fit statistics indicated that a two-factor model fit the data the best when compared to a one-factor model, latent class models, and factor mixture models.ConclusionsThe current study suggests that the structure of depression consists of two underlying dimensions of depression severity when compared to categorical or a mixture of both categorical and dimensional structures. For clinical samples, the two latent factors represent psychological and somatic symptoms.