Early prediction of mental health problems following military deployment: Integrating pre- and post-deployment factors in neural network models

软件部署 军事部署 心理健康 数据收集 医学 计算机科学 心理学 精神科 社会学 社会科学 操作系统
作者
Karen‐Inge Karstoft,Kasper Eskelund,Jaimie L. Gradus,Søren Bo Andersen,Lars Ravnborg Nissen
出处
期刊:Journal of Psychiatric Research [Elsevier BV]
卷期号:163: 109-117 被引量:3
标识
DOI:10.1016/j.jpsychires.2023.05.014
摘要

Military personnel deployed to war zones are at increased risk of mental health problems such as posttraumatic stress disorder (PTSD) or depression. Early pre- or post-deployment identification of those at highest risk of such problems is crucial to target intervention to those in need. However, sufficiently accurate models predicting objectively assessed mental health outcomes have not been put forward. In a sample consisting of all Danish military personnel who deployed to war zones for the first (N = 27,594), second (N = 11,083) and third (N = 5,161) time between 1992 and 2013, we apply neural networks to predict psychiatric diagnoses or use of psychotropic medicine in the years following deployment. Models are based on pre-deployment registry data alone or on pre-deployment registry data in combination with post-deployment questionnaire data on deployment experiences or early post-deployment reactions. Further, we identified the most central predictors of importance for the first, second, and third deployment. Models based on pre-deployment registry data alone had lower accuracy (AUCs ranging from 0.61 (third deployment) to 0.67 (first deployment)) than models including pre- and post-deployment data (AUCs ranging from 0.70 (third deployment) to 0.74 (first deployment)). Age at deployment, deployment year and previous physical trauma were important across deployments. Post-deployment predictors varied across deployments but included deployment exposures as well as early post-deployment symptoms. The results suggest that neural network models combining pre- and early post-deployment data can be utilized for screening tools that identify individuals at risk of severe mental health problems in the years following military deployment.
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