Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning

BackgroundPosttraumatic stress disorder (PTSD) is a relatively common consequence of deployment to war zones. Early postdeployment screening with the aim of identifying those at risk for PTSD in the years following deployment will help deliver interventions to those in need b...

Full description

Bibliographic Details
Main Authors: Karstoft, Karen-Inge, Tsamardinos, Ioannis, Eskelund, Kasper, Andersen, Søren Bo, Nissen, Lars Ravnborg
Format: Article
Language:English
Published: JMIR Publications 2020-07-01
Series:JMIR Medical Informatics
Online Access:http://medinform.jmir.org/2020/7/e17119/
id doaj-a02b3ca47010454c884291f5388f623f
record_format Article
spelling doaj-a02b3ca47010454c884291f5388f623f2021-05-02T19:28:53ZengJMIR PublicationsJMIR Medical Informatics2291-96942020-07-0187e1711910.2196/17119Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine LearningKarstoft, Karen-IngeTsamardinos, IoannisEskelund, KasperAndersen, Søren BoNissen, Lars Ravnborg BackgroundPosttraumatic stress disorder (PTSD) is a relatively common consequence of deployment to war zones. Early postdeployment screening with the aim of identifying those at risk for PTSD in the years following deployment will help deliver interventions to those in need but have so far proved unsuccessful. ObjectiveThis study aimed to test the applicability of automated model selection and the ability of automated machine learning prediction models to transfer across cohorts and predict screening-level PTSD 2.5 years and 6.5 years after deployment. MethodsAutomated machine learning was applied to data routinely collected 6-8 months after return from deployment from 3 different cohorts of Danish soldiers deployed to Afghanistan in 2009 (cohort 1, N=287 or N=261 depending on the timing of the outcome assessment), 2010 (cohort 2, N=352), and 2013 (cohort 3, N=232). ResultsModels transferred well between cohorts. For screening-level PTSD 2.5 and 6.5 years after deployment, random forest models provided the highest accuracy as measured by area under the receiver operating characteristic curve (AUC): 2.5 years, AUC=0.77, 95% CI 0.71-0.83; 6.5 years, AUC=0.78, 95% CI 0.73-0.83. Linear models performed equally well. Military rank, hyperarousal symptoms, and total level of PTSD symptoms were highly predictive. ConclusionsAutomated machine learning provided validated models that can be readily implemented in future deployment cohorts in the Danish Defense with the aim of targeting postdeployment support interventions to those at highest risk for developing PTSD, provided the cohorts are deployed on similar missions.http://medinform.jmir.org/2020/7/e17119/
collection DOAJ
language English
format Article
sources DOAJ
author Karstoft, Karen-Inge
Tsamardinos, Ioannis
Eskelund, Kasper
Andersen, Søren Bo
Nissen, Lars Ravnborg
spellingShingle Karstoft, Karen-Inge
Tsamardinos, Ioannis
Eskelund, Kasper
Andersen, Søren Bo
Nissen, Lars Ravnborg
Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
JMIR Medical Informatics
author_facet Karstoft, Karen-Inge
Tsamardinos, Ioannis
Eskelund, Kasper
Andersen, Søren Bo
Nissen, Lars Ravnborg
author_sort Karstoft, Karen-Inge
title Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
title_short Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
title_full Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
title_fullStr Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
title_full_unstemmed Applicability of an Automated Model and Parameter Selection in the Prediction of Screening-Level PTSD in Danish Soldiers Following Deployment: Development Study of Transferable Predictive Models Using Automated Machine Learning
title_sort applicability of an automated model and parameter selection in the prediction of screening-level ptsd in danish soldiers following deployment: development study of transferable predictive models using automated machine learning
publisher JMIR Publications
series JMIR Medical Informatics
issn 2291-9694
publishDate 2020-07-01
description BackgroundPosttraumatic stress disorder (PTSD) is a relatively common consequence of deployment to war zones. Early postdeployment screening with the aim of identifying those at risk for PTSD in the years following deployment will help deliver interventions to those in need but have so far proved unsuccessful. ObjectiveThis study aimed to test the applicability of automated model selection and the ability of automated machine learning prediction models to transfer across cohorts and predict screening-level PTSD 2.5 years and 6.5 years after deployment. MethodsAutomated machine learning was applied to data routinely collected 6-8 months after return from deployment from 3 different cohorts of Danish soldiers deployed to Afghanistan in 2009 (cohort 1, N=287 or N=261 depending on the timing of the outcome assessment), 2010 (cohort 2, N=352), and 2013 (cohort 3, N=232). ResultsModels transferred well between cohorts. For screening-level PTSD 2.5 and 6.5 years after deployment, random forest models provided the highest accuracy as measured by area under the receiver operating characteristic curve (AUC): 2.5 years, AUC=0.77, 95% CI 0.71-0.83; 6.5 years, AUC=0.78, 95% CI 0.73-0.83. Linear models performed equally well. Military rank, hyperarousal symptoms, and total level of PTSD symptoms were highly predictive. ConclusionsAutomated machine learning provided validated models that can be readily implemented in future deployment cohorts in the Danish Defense with the aim of targeting postdeployment support interventions to those at highest risk for developing PTSD, provided the cohorts are deployed on similar missions.
url http://medinform.jmir.org/2020/7/e17119/
work_keys_str_mv AT karstoftkareninge applicabilityofanautomatedmodelandparameterselectioninthepredictionofscreeninglevelptsdindanishsoldiersfollowingdeploymentdevelopmentstudyoftransferablepredictivemodelsusingautomatedmachinelearning
AT tsamardinosioannis applicabilityofanautomatedmodelandparameterselectioninthepredictionofscreeninglevelptsdindanishsoldiersfollowingdeploymentdevelopmentstudyoftransferablepredictivemodelsusingautomatedmachinelearning
AT eskelundkasper applicabilityofanautomatedmodelandparameterselectioninthepredictionofscreeninglevelptsdindanishsoldiersfollowingdeploymentdevelopmentstudyoftransferablepredictivemodelsusingautomatedmachinelearning
AT andersensørenbo applicabilityofanautomatedmodelandparameterselectioninthepredictionofscreeninglevelptsdindanishsoldiersfollowingdeploymentdevelopmentstudyoftransferablepredictivemodelsusingautomatedmachinelearning
AT nissenlarsravnborg applicabilityofanautomatedmodelandparameterselectioninthepredictionofscreeninglevelptsdindanishsoldiersfollowingdeploymentdevelopmentstudyoftransferablepredictivemodelsusingautomatedmachinelearning
_version_ 1721488101104156672