Cross-sectional and longitudinal AUD symptom networks: They tell different stories

Addict Behav. 2022 Aug:131:107333. doi: 10.1016/j.addbeh.2022.107333. Epub 2022 Apr 9.

Abstract

Modern theoretical models of Alcohol Use Disorder (AUD) highlight the different functional roles played by various mechanisms associated with different symptoms. Symptom network models (SNMs) offer one approach to modeling AUD symptomatology in a way that could reflect these processes and provide important information on the progression and persistence of disorder. However, much of the research conducted using SNMs relies on cross-sectional data, which has raised questions regarding the extent they reflect dynamic processes. The current study aimed to (a) examine symptom networks of AUD and (b) compare the extent to which cross-sectional network models had similar structures and interpretations as longitudinal network models. 17,360 participants from Wave 1 (2001-2002) and Wave 2 (2003-2004) of the National Epidemiological Survey on Alcohol and Related Conditions (NESARC) were used to model cross-sectional and longitudinal AUD symptom networks. The cross-sectional analyses demonstrate high replicability across waves and central symptoms consistent with other cross-sectional studies on addiction networks. The longitudinal network shared much less similarity than the cross-sectional networks and had a substantially different structure. Given the increasing attention given to the network perspective in psychopathology research, the results of this study raise concerns about interpreting cross-sectional symptom networks as representative of temporal changes occurring within a psychological disorder. We conclude that the psychological symptom network literature should be bolstered with additional research on longitudinal network models.

Keywords: Addiction; Alcohol use disorder; Cross-lagged panel network analysis; Symptom networks; Temporal networks.

MeSH terms

  • Alcohol Drinking
  • Alcohol-Related Disorders* / psychology
  • Alcoholism* / epidemiology
  • Alcoholism* / psychology
  • Cross-Sectional Studies
  • Humans