# Comparison of psychometric methods for examining the factor structure of the Supportive Care Needs Survey- Short Form (SCNS-SF34) in Colombian cancer patients

**Authors:** Nicolás Martinez-Ramos, Gabriela Negrete-Tobar, Oscar Gamboa-Garay, Raúl Murillo

PMC · DOI: 10.21500/20112084.7546 · International Journal of Psychological Research · 2025-11-19

## TL;DR

This study compares different psychometric methods to evaluate the structure of a cancer patient needs survey in Colombia.

## Contribution

The study evaluates the factor structure of the SCNS-SF34 using parallel analysis, ESEM, and EGA in a Colombian cancer patient sample.

## Key findings

- Parallel analysis identified 5 factors with low goodness of fit.
- ESEM showed a better fit but some items had loading issues.
- EGA suggested 5 node communities with some item integration across domains.

## Abstract

to ensure optimal oncology care a structured assessment of different needs is highly desirable. The Supportive Care Needs Survey in its short form (SCNS-SF34) is frequently used to such objective. The survey has been validated in several contexts; accordingly, some reports suggest alternative structures. However, there are differences in validation outcomes attributable to study heterogeneity. Thus, we aimed to test the factor structure of the SCNS-SF34 comparing different psychometric methods.

an instrumental study was conducted in Bogotá-Colombia. A sample of 200 adult patients diagnosed and already treated for any type of cancer was estimated. Patients were randomly selected at a referral center; data was collected by trained personnel. To test the factor invariance, we used a parallel analysis for the exploratory factor analysis (EFA), the exploratory structural equation modelling (ESEM), and the exploratory graph analysis (EGA).

overall, 245 patients were recruited; 64.0% women; 83.7% lived in urban areas; 34.7% had elementary education, and all were affiliated to a health insurance company in the Colombian health system. The parallel analysis yielded 5 factors explaining 55% of variance with low goodness of fit (CFI = 0.687, TLI = 0.602, RMSEA = 0.139, SRMR = 0.040). The ESEM adjusted for 5 factors with good fit (CFI = 0.971, TLI = 0.960, RMSEA = 0.023, SRMR = 0.04), however, some items presented a Heywood effect and loaded to different domains. The EGA showed 5 node communities, but some patient care and support items were found integrated within the health systems-and-information domain. The theoretical domains showed adequate reliability.

the 5 domains of the SCNS-SF34 showed structural validity for its application in Colombia. Further analysis in other Spanish-speaking Latin American countries are anticipated but our results suggest that ESEM and EGA approaches may be better to understand the structure of the survey.

## Linked entities

- **Diseases:** cancer (MONDO:0004992)

## Full-text entities

- **Genes:** PF4 (platelet factor 4) [NCBI Gene 5196] {aka CXCL4, PF-4, SCYB4}, PC (pyruvate carboxylase) [NCBI Gene 5091] {aka PCB}
- **Diseases:** melanoma (MESH:D008545), death (MESH:D003643), dying (MESH:D064806), Pc (MESH:C535424), cancer (MESH:D009369), neurocognitive deficits (MESH:D009461), prostate (MESH:D011472)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## References

65 references — full list in the complete paper: https://tomesphere.com/paper/PMC12863982/full.md

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Source: https://tomesphere.com/paper/PMC12863982