Journal of Affective Disorders Reports (Apr 2021)

Depression over time in persons with stroke: A network analysis approach

  • Sameer A. Ashaie,
  • Jinyi Hung,
  • Carter J. Funkhouser,
  • Stewart A. Shankman,
  • Leora R. Cherney

Journal volume & issue
Vol. 4
p. 100131

Abstract

Read online

Background: Network analysis has been used to elucidate the relationships among depressive symptoms, but this approach has not been typically used in persons with stroke. Method: Using a sample of 835 persons with stroke from Stroke Recovery in Underserved Populations 2005–2006 dataset, this study used network analysis to (1) examine changes in relationships between depressive symptoms over time, and (2) test whether baseline network characteristics were prognostic for depression persistence. Network analysis was performed on depressive symptoms collected at discharge from inpatient rehabilitation and at 3-months and 12-months post-discharge. Results: The depressive symptom network at discharge was less connected than at both post-discharge follow-ups. Trouble focusing and feeling good as others were the most predictable symptoms at post-discharge, even though they were less connected to other depressive symptoms. Among participants with elevated baseline depression severity, those whose depression persisted 12 months later had more strongly connected networks at discharge than those who recovered 12 months later. Limitations: This study was unable to determine the directionality of edges. The depression scale was administered differently across time points. Conclusion: These results suggest that baseline network connectivity can predict the course of post-stroke depression, similar to non-stroke populations. More broadly, the study highlights the importance of examining relationships between individual depressive symptoms rather than only sum-scores.

Keywords