open access publication

Article, 2024

Stressful life events exhibit complex patterns of associations with depressive symptoms in two population-based samples using network analysis

Journal of Affective Disorders, ISSN 0165-0327, 1573-2517, Volume 349, Pages 569-576, 10.1016/j.jad.2024.01.054

Contributors

Bjørndal, Ludvig Daae 0000-0001-9773-8287 (Corresponding author) [1] Ebrahimi, Omid V 0000-0002-8335-2217 [1] [2] Røysamb, Espen 0000-0001-5133-7170 [1] [3] Karstoft, Karen-Inge 0000-0001-9234-9784 [4] Czajkowski, Nikolai Olavi 0000-0002-3713-653X [1] [3] Nes, Ragnhild Bang 0000-0001-7828-7863 [1] [3]

Affiliations

  1. [1] University of Oslo
  2. [NORA names: Norway; Europe, Non-EU; Nordic; OECD];
  3. [2] University of Oxford
  4. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  5. [3] Norwegian Institute of Public Health
  6. [NORA names: Norway; Europe, Non-EU; Nordic; OECD];
  7. [4] University of Copenhagen
  8. [NORA names: KU University of Copenhagen; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

BACKGROUND: Stressful life events (SLEs) constitute key risk factors for depression. However, previous studies examining associations between SLEs and depression have been limited by focusing on single events, combining events into broad categories, and/or ignoring interrelationships between events in statistical analyses. Network analysis comprises a set of statistical methods well-suited for assessing relationships between multiple variables and can help surpass several limitations of previous studies. METHODS: We applied network analysis using mixed graphical models combining two large-scale population-based samples and >34,600 randomly sampled adults to investigate the associations between SLEs and current depressive symptoms in the general population. RESULTS: Numerous SLEs were uniquely associated with specific symptoms. Strong pairwise links were observed between SLEs during the past year and individual symptoms, e.g., between having experienced illness or injury and sleeping problems, having been degraded or humiliated and feeling blue, and between financial problems and hopelessness and being worried and anxious. Several SLEs, such as financial problems, sexual abuse, and having been degraded or humiliated, were associated with symptoms across more than one timepoint. More recent SLEs were generally more strongly associated with depressive symptoms. Several life events were strongly interrelated, such as multiple forms of abuse, and financial problems, unemployment, divorce, and serious illness or injury. LIMITATIONS: Limitations include a retrospective SLE measure, cross-sectional data, a brief self-report measure of depressive symptoms, and possible attrition bias in the sample. CONCLUSIONS: Our findings may have implications for public health efforts seeking to improve population mental health.

Keywords

abuse, adults, analysis, associated with depressive symptoms, associated with specific symptoms, associated with symptoms, association, attrition, attrition bias, bias, broad categories, categories, complex patterns, cross-sectional data, current depressive symptoms, data, depression, depressive symptoms, divorce, efforts, events, factors, financial problems, findings, general population, graphical models, health, health efforts, hopelessness, illness, improve population mental health, individual symptoms, injury, interrelationships, life events, limitations, links, measurements, mental health, method well-suited, model, multiple variables, network, network analysis, pairwise links, population, population mental health, population-based sample, problem, public health efforts, relationship, risk, risk factors, sampled adults, samples, self-report measures, severe life events, sexual abuse, sleep problems, specific symptoms, statistical analysis, stressful life events, study, symptoms, unemployment, variables, well-suited, years

Funders

  • The Research Council of Norway

Data Provider: Digital Science