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Gepubliceerd in: Quality of Life Research 11/2023

07-07-2023

Comparison of latent variable and psychological network models in PROMIS data: output metrics and factor structure

Auteurs: Joshua Starr, Carl F. Falk

Gepubliceerd in: Quality of Life Research | Uitgave 11/2023

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Abstract

Purpose

Much research is still needed to compare traditional latent variable models such as confirmatory factor analysis (CFA) to emerging psychometric models such as the Gaussian graphical model (GGM). Previous comparisons of GGM centrality indices with factor loadings from CFA have discovered redundancies, and investigations into how well a GGM-based alternative to exploratory factor analysis (i.e., exploratory graph analysis, or EGA) is able to recover the hypothesized factor structure show mixed results. Importantly, such comparisons have not typically been examined in real mental and physical health symptom data, despite such data being an excellent candidate for the GGM. Our goal was to extend previous work by comparing the GGM and CFA using data from Wave 1 of the Patient Reported Outcomes Measurement Information System (PROMIS).

Methods

Models were fit to PROMIS data based on 16 test forms designed to measure 9 mental and physical health domains. Our analyses borrowed a two-stage approach for handling missing data from the structural equation modeling literature.

Results

We found weaker correspondence between centrality indices and factor loadings than found by previous research, but in a similar pattern of correspondence. EGA recommended a factor structure discrepant with PROMIS domains in most cases yet may be taken to provide substantive insight into the dimensionality of PROMIS domains.

Conclusion

In real mental and physical health data, the GGM and EGA may provide complementary information to traditional CFA metrics.
Bijlagen
Alleen toegankelijk voor geautoriseerde gebruikers
Voetnoten
1
These symptoms correspond to items EDDEP06, EDDEP07, and FATEXP7, respectively, on PROMIS form H. The data and test forms will be described later.
 
2
For details on data collection and sample selection criteria, see Cella et al. [21].
 
3
If some items are never observed together at the same time, the GGM may not be identified.
 
4
Code for all analyses is available at: https://​osf.​io/​79ys4/​.
 
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Metagegevens
Titel
Comparison of latent variable and psychological network models in PROMIS data: output metrics and factor structure
Auteurs
Joshua Starr
Carl F. Falk
Publicatiedatum
07-07-2023
Uitgeverij
Springer International Publishing
Gepubliceerd in
Quality of Life Research / Uitgave 11/2023
Print ISSN: 0962-9343
Elektronisch ISSN: 1573-2649
DOI
https://doi.org/10.1007/s11136-023-03471-5

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