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Ensemble machine learning prediction of posttraumatic stress disorder screening status after emergency room hospitalization.
Papini, Santiago; Pisner, Derek; Shumake, Jason; Powers, Mark B; Beevers, Christopher G; Rainey, Evan E; Smits, Jasper A J; Warren, Ann Marie.
Afiliação
  • Papini S; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States. Electronic address: spapini@utexas.edu.
  • Pisner D; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States.
  • Shumake J; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States.
  • Powers MB; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States; Baylor University Medical Center, United States.
  • Beevers CG; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States.
  • Rainey EE; Baylor University Medical Center, United States.
  • Smits JAJ; Department of Psychology and Institute for Mental Health Research, The University of Texas at Austin, United States.
  • Warren AM; Baylor University Medical Center, United States.
J Anxiety Disord ; 60: 35-42, 2018 12.
Article em En | MEDLINE | ID: mdl-30419537
Posttraumatic stress disorder (PTSD) develops in a substantial minority of emergency room admits. Inexpensive and accurate person-level assessment of PTSD risk after trauma exposure is a critical precursor to large-scale deployment of early interventions that may reduce individual suffering and societal costs. Toward this aim, we applied ensemble machine learning to predict PTSD screening status three months after severe injury using cost-effective and minimally invasive data. Participants (N = 271) were recruited at a Level 1 Trauma Center where they provided variables routinely collected at the hospital, including pulse, injury severity, and demographics, as well as psychological variables, including self-reported current depression, psychiatric history, and social support. Participant zip codes were used to extract contextual variables including population total and density, average annual income, and health insurance coverage rates from publicly available U.S. Census data. Machine learning yielded good prediction of PTSD screening status 3 months post-hospitalization, AUC = 0.85 95% CI [0.83, 0.86], and significantly outperformed all benchmark comparison models in a cross-validation procedure designed to yield an unbiased estimate of performance. These results demonstrate that good prediction can be attained from variables that individually have relatively weak predictive value, pointing to the promise of ensemble machine learning approaches that do not rely on strong isolated risk factors.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Etiology_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Limite: Adult / Female / Humans / Male / Middle aged Idioma: En Ano de publicação: 2018 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Etiology_studies / Prognostic_studies / Risk_factors_studies / Screening_studies Limite: Adult / Female / Humans / Male / Middle aged Idioma: En Ano de publicação: 2018 Tipo de documento: Article