DOI: 10.35377/saucis...1821410 ISSN: 2636-8129

Data-Driven Phenotyping of Post-Traumatic Stress Disorder Among Survivors of the 2023 Derna Dam Collapse

Mansour Essgaer, Asma Agaal, Fathiyah Aejaal, Zulaiha Othman, Eljilani Hmouda
Two years after the catastrophic 2023 Derna dam collapse in Libya, the long-term psychological consequences for survivors remain a critical public health concern. Traditional Post-Traumatic Stress Disorder (PTSD) assessments often rely on a single severity metric, which can obscure the heterogeneous nature of trauma responses. This study applies computational modeling to move beyond this monolithic perspective and identify distinct, data-driven trauma phenotypes within the survivor cohort. In this exploratory, cross-sectional analysis of 648 survivors, we employed an unsupervised machine learning framework to uncover latent symptom profiles. The analysis revealed that while 21.5\% of the cohort exhibited high-severity PTSD (Total Score $\geq 34$), the underlying trauma response was not uniform. We identified four robust phenotypes: High Distress (18.8\%), Re-experiencing and Avoidant (26.0\%), Somatic Anxiety and Arousal (30.7\%), and Resilient / Low-Symptom (24.5\%). Phenotype membership was independent of demographic variables, highlighting a latent structure distinct from standard risk factors. These findings demonstrate that the psychological response to the Derna disaster is heterogeneous and can be effectively stratified using computational methods, offering a data-driven foundation for tiered mental health interventions.

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