Accepted for/Published in: JMIR Medical Informatics
Date Submitted: Nov 20, 2019
Date Accepted: Apr 16, 2020
Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.
Prediction of screening-level PTSD in Danish soldiers following deployment: use of automated machine learning for the development of transferable predictive models
ABSTRACT
Background:
Posttraumatic Stress Disorder (PTSD) is a relatively common consequence of deployment to war zones. Early post-deployment screening with the aim of identifying those at risk for PTSD in the years following deployment will help target interventions to those in need but have so far proved unsuccessful.
Objective:
To test the ability of ML-based prediction models to predict screening-level PTSD 2.5 years and 6.5 years after deployment. Further, we test if models trained in one cohort can be transferred to other cohorts.
Methods:
Automated machine learning (AutoML) applied to data collected routinely 6-8 months after return from deployment on three different cohorts of Danish soldiers deployed to Afghanistan in 2009 (Cohort 1, N=287/261), 2010 (Cohort 2, N=352) and 2013 (Cohort 3, N=232).
Results:
For 2.5-year screening-level PTSD, we find that a Random Forest model provides the highest accuracy as measured by area under the ROC-curve (AUC=0.77, CI=0.71-0.83), which is also the case for predicting 6.5-year screening-level PTSD (AUC=0.78, CI=0.73-0.83). Military rank, hypervigilance and level of PTSD-symptoms are consistent predictors.
Conclusions:
The validated models can be readily implemented in future deployment cohorts in the Danish Defense with the aim of targeting post-deployment support interventions to those at highest risk for developing PTSD, provided the cohorts are deployed on similar missions.
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