Rethinking Mental Health Assessment: A Network-Based Approach to Understanding University Students’ Well-Being with Exploratory Graph Analysis
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
Psychological well-being Mental health Interconnected psychological factors
Fecha
2025-11-03Referencia bibliográfica
García-Pérez, L., Cepero-González, M., & Mota, J. (2025). Rethinking Mental Health Assessment: A Network-Based Approach to Understanding University Students’ Well-Being with Exploratory Graph Analysis. Youth, 5(4), 116. https:// doi.org/10.3390/youth5040116
Patrocinador
Erasmus+ RESUPERES project (2021-1-ES01-KA220-HED-000031173); Spanish Ministry of Universities (FPU20/01373)Resumen
Mental health (MH) in university students is often studied through isolated variables.
However, a dynamic systems perspective suggests that psychological well-being results
from interactions among multiple dimensions such as personality, mood, resilience, selfesteem, and psychological distress. A total of 928 university students (M = 21.01 ± 1.95)
completed validated questionnaires: Big Five Inventory (BFI-44) for personality, Profile
of Mood States (POMS), Connor-Davidson Resilience Scale (CD-RISC 25), Rosenberg SelfEsteem Scale, and Depression Anxiety Stress Scale (DASS-21). Exploratory Graph Analysis
(EGA) using the EGAnet package in RStudio (v. 2025.09.01) was employed to identify
latent dimensions and their interconnections. EGA revealed five stable and interconnected
dimensions with good fit indices (TEFI = −9.00; ≥0.70): (a) Personality as socio-emotional
regulation, (b) Mood as a generalized affective continuum, (c) Resilience as a unified coping
process, (d) Self-esteem based on competence and self-worth, and (e) Psychological distress
integrating depression, anxiety, and stress. MH appears as a complex and dynamic network
of interrelated psychological components. This network-based approach provides a more
integrative understanding of well-being in students and supports the development of
interventions that target multiple dimensions simultaneously, enhancing effectiveness in
academic settings.





