| Literature DB >> 34867526 |
Katja Schueler1,2, Jessica Fritz3, Lena Dorfschmidt3, Anne-Laura van Harmelen4, Eike Stroemer5, Michèle Wessa1,5.
Abstract
Resilience to stress has gained increasing interest by researchers from the field of mental health and illness and some recent studies have investigated resilience from a network perspective. General self-efficacy constitutes an important resilience factor. High levels of self-efficacy have shown to promote resilience by serving as a stress buffer. However, little is known about the role of network connectivity of self-efficacy in the context of stress resilience. The present study aims at filling this gap by using psychological network analysis to study self-efficacy and resilience. Based on individual resilient functioning scores, we divided a sample of 875 mentally healthy adults into a high and low resilient functioning group. To compute these scores, we applied a novel approach based on Partial Least Squares Regression on self-reported stress and mental health measures. Separately for both groups, we then estimated regularized partial correlation networks of a ten-item self-efficacy questionnaire. We compared three different global connectivity measures-strength, expected influence, and shortest path length-as well as absolute levels of self-efficacy between the groups. Our results supported our hypothesis that stronger network connectivity of self-efficacy would be present in the highly resilient functioning group compared to the low resilient functioning group. In addition, the former showed higher absolute levels of general self-efficacy. Future research could consider using partial least squares regression to quantify resilient functioning to stress and to study the association between network connectivity and resilient functioning in other resilience factors.Entities:
Keywords: connectivity; network analysis; partial least squares regression; resilience; self-efficacy
Year: 2021 PMID: 34867526 PMCID: PMC8635703 DOI: 10.3389/fpsyt.2021.736147
Source DB: PubMed Journal: Front Psychiatry ISSN: 1664-0640 Impact factor: 5.435
Characteristics of and differences between both groups.
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| Age | n.s. | ||
| Σ minor stressors (freq) | n.s. | ||
| Σ minor stressors (sev) | n.s. | ||
| Σ major stressors | n.s. | ||
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n.s., not significant with p > 0.05;
p < 0.001;
bonferroni corrected p-values.
Figure 1Data distribution of all ten items of the general self-efficacy scale (43). Abbreviations GSE01 until GSE10 indicate item numbers. The x-axis shows the response ranging from 1 (“not at all”) to 4 (“very much”) and frequencies, i.e., number of participants, are depicted on the y-axis.
Global connectivity of self-efficacy networks.
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| Strength | 0.88 | 0.77 |
| Expected influence | 0.84 | 0.72 |
| Shortest path length | 7.43 | 9.07 |
Comparison of global network connectivity measures in high resilient (n = 467) compared to low resilient (n = 408) adults. Values indicate the average connectivity parameters per node.
Figure 2Regularized partial correlation networks of (A) the high resilient functioning group (n = 467) and (B) the low resilient functioning group (n = 408). Network nodes refer to the items of the General Self-Efficacy Scale (43). Edges show regularized partial correlations between all ten questionnaire items (GSE01 until GSE10). A thicker line indicates higher correlations. No line indicates that the correlation between this respective pair of nodes was did not survive regularization.