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How well can post-traumatic stress disorder be predicted from pre-trauma risk factors? An exploratory study in the WHO World Mental Health Surveys

Authors :
Alan M. Zaslavsky
Sherri Rose
Arieh Y. Shalev
Paul E. Stang
Anthony J. Rosellini
Dan J. Stein
Silvia Florescu
Derrick Silove
Koen Demyttenaere
Kate M. Scott
Samuel A. McLean
Ayelet Meron Ruscio
Ronald C. Kessler
Steven G. Heeringa
Matthias C. Angermeyer
Yolanda Torres
Elie G. Karam
Sam Murphy
María Elena Medina-Mora
Katie A. McLaughlin
Giovanni de Girolamo
Josep Maria Haro
Peter de Jonge
Sing Lee
Israel Liberzon
Maria Petukhova
B. E. Pennell
Norito Kawakami
Victoria Shahly
Maria Carmen Viana
Viviane Kovess-Masfety
Marina Piazza
Jose Posada-Villa
Eric Hill
Hristo Hinkov
Karestan C. Koenen
Fernando Navarro-Mateu
Oye Gureje
José Miguel Caldas de Almeida
Evelyn J. Bromet
Department of Psychiatry and Mental Health
Faculty of Health Sciences
Interdisciplinary Centre Psychopathology and Emotion regulation (ICPE)
Life Course Epidemiology (LCE)
Source :
World Psychiatry, World psychiatry, 13(3), 265-274. Wiley
Publication Year :
2014
Publisher :
The University of North Carolina at Chapel Hill University Libraries, 2014.

Abstract

Post-traumatic stress disorder (PTSD) should be one of the most preventable mental disorders, since many people exposed to traumatic experiences (TEs) could be targeted in first response settings in the immediate aftermath of exposure for preventive intervention. However, these interventions are costly and the proportion of TE-exposed people who develop PTSD is small. To be cost-effective, risk prediction rules are needed to target high-risk people in the immediate aftermath of a TE. Although a number of studies have been carried out to examine prospective predictors of PTSD among people recently exposed to TEs, most were either small or focused on a narrow sample, making it unclear how well PTSD can be predicted in the total population of people exposed to TEs. The current report investigates this issue in a large sample based on the World Health Organization (WHO)'s World Mental Health Surveys. Retrospective reports were obtained on the predictors of PTSD associated with 47,466 TE exposures in representative community surveys carried out in 24 countries. Machine learning methods (random forests, penalized regression, super learner) were used to develop a model predicting PTSD from information about TE type, socio-demographics, and prior histories of cumulative TE exposure and DSM-IV disorders. DSM-IV PTSD prevalence was 4.0% across the 47,466 TE exposures. 95.6% of these PTSD cases were associated with the 10.0% of exposures (i.e., 4,747) classified by machine learning algorithm as having highest predicted PTSD risk. The 47,466 exposures were divided into 20 ventiles (20 groups of equal size) ranked by predicted PTSD risk. PTSD occurred after 56.3% of the TEs in the highest-risk ventile, 20.0% of the TEs in the second highest ventile, and 0.0-1.3% of the TEs in the 18 remaining ventiles. These patterns of differential risk were quite stable across demographic-geographic sub-samples. These results demonstrate that a sensitive risk algorithm can be created using data collected in the immediate aftermath of TE exposure to target people at highest risk of PTSD. However, validation of the algorithm is needed in prospective samples, and additional work is warranted to refine the algorithm both in terms of determining a minimum required predictor set and developing a practical administration and scoring protocol that can be used in routine clinical practice.

Details

Language :
English
ISSN :
17238617
Database :
OpenAIRE
Journal :
World Psychiatry, World psychiatry, 13(3), 265-274. Wiley
Accession number :
edsair.doi.dedup.....954c5cdb9015e1a4b958ef3820a14e88
Full Text :
https://doi.org/10.17615/txsb-4t02