Machine learning algorithms for predicting PTSD: a systematic review and meta-analysis.

Journal: BMC medical informatics and decision making
PMID:

Abstract

This study aimed to compare and evaluate the prediction accuracy and risk of bias (ROB) of post-traumatic stress disorder (PTSD) predictive models. We conducted a systematic review and random-effect meta-analysis summarizing predictive model development and validation studies using machine learning in diverse samples to predict PTSD. Model performances were pooled using the area under the curve (AUC) with a 95% confidence interval (CI). Heterogeneity in each meta-analysis was measured using I. The risk of bias in each study was appraised using the PROBAST tool. 48% of the 23 included studies had a high ROB, and the remaining had unclear. Tree-based models were the primarily used algorithms and showed promising results in predicting PTSD outcomes for various groups, as indicated by their pooled AUCs: military incidents (0.745), sexual or physical trauma (0.861), natural disasters (0.771), medical trauma (0.808), firefighters (0.96), and alcohol-related stress (0.935). However, the applicability of these findings is limited due to several factors, such as significant variability among the studies, high and unclear risks of bias, and a shortage of models that maintain accuracy when tested in new settings. Researchers should follow the reporting standards for AI/ML and adhere to the PROBAST guidelines. It is also essential to conduct external validations of these models to ensure they are practical and relevant in real-world settings.

Authors

  • Masoumeh Vali
    Doctoral School of Applied Informatics and Applied Mathematics, Obuda University, Budapest, 1034, Hungary.
  • Hossein Motahari Nezhad
    HECON Health Economics Research Center, University Research and Innovation Center, Óbuda University, Budapest, Hungary.
  • Levente Kovács
    Physiological Controls Research Center, Research and Innovation Center of Óbuda University, Óbuda University, Budapest, Hungary. Electronic address: kovacs.levente@nik.uni-obuda.hu.
  • Amir H Gandomi
    Faculty of Engineering Information Technology, University of Technology Sydney, Ultimo, NSW 2007, Australia.