| Literature DB >> 30977400 |
Paul Lodder1,2, Johan Denollet1, Wilco H M Emons2, Giesje Nefs1, Frans Pouwer3,4, Jane Speight5,6,7, Jelte M Wicherts2.
Abstract
Several approaches exist to model interactions between latent variables. However, it is unclear how these perform when item scores are skewed and ordinal. Research on Type D personality serves as a good case study for that matter. In Study 1, we fitted a multivariate interaction model to predict depression and anxiety with Type D personality, operationalized as an interaction between its two subcomponents negative affectivity (NA) and social inhibition (SI). We constructed this interaction according to four approaches: (1) sum score product; (2) single product indicator; (3) matched product indicators; and (4) latent moderated structural equations (LMS). In Study 2, we compared these interaction models in a simulation study by assessing for each method the bias and precision of the estimated interaction effect under varying conditions. In Study 1, all methods showed a significant Type D effect on both depression and anxiety, although this effect diminished after including the NA and SI quadratic effects. Study 2 showed that the LMS approach performed best with respect to minimizing bias and maximizing power, even when item scores were ordinal and skewed. However, when latent traits were skewed LMS resulted in more false-positive conclusions, while the Matched PI approach adequately controlled the false-positive rate.Entities:
Keywords: Latent prediction model; SEM; Type D personality; anxiety; depression; latent interaction; nonnormality; structural equation modeling
Mesh:
Year: 2019 PMID: 30977400 DOI: 10.1080/00273171.2018.1562863
Source DB: PubMed Journal: Multivariate Behav Res ISSN: 0027-3171 Impact factor: 5.923