Identifying Preliminary Risk Profiles for Dissociation in 16‐ to 25‐Year‐Olds Using Machine Learning
Roberta McGuinness, Daniel Herring, Xinyi Wu, Maryam Almandi, Daveena Bhangu, Lucia Collinson, Xiaocheng Shang, Emma ČernisABSTRACT
Introduction
Dissociation is associated with clinical severity, increased risk of suicide and self‐harm, and disproportionately affects adolescents and young adults. Whilst evidence indicates multiple factors contribute to dissociative experiences, a multi‐factorial explanation of increased risk for dissociation has yet to be achieved.
Methods
We used multiple regression to investigate the relative influence of five plausible risk factors (childhood trauma, loneliness, marginalisation, socio‐economic status, and everyday stress), and machine learning to generate tentative high‐risk profiles for ‘felt sense of anomaly’ dissociation (FSA‐dissociation) using cross‐sectional online survey data from 2384 UK‐based 16‐ to 25‐year‐olds.
Results
Multiple regression indicated that four risk factors significantly contributed to FSA‐dissociation, with relative order of contribution: everyday stress, childhood trauma, loneliness and marginalisation. Exploratory analysis using machine learning suggested dissociation results from a complex interplay between interpersonal, contextual, and intrapersonal pressures: alongside marginalisation and childhood trauma, negative self‐concept and depression were important in younger (16–20 years), and anxiety and maladaptive emotion regulation in older (21–25 years) respondents.
Conclusions
Validation of these findings could inform clinical assessment, and prevention and outreach efforts, improving the under‐recognition of dissociation in mainstream services.