| Literature DB >> 28154788 |
Amy E Street1, Anthony J Rosellini2, Robert J Ursano3, Steven G Heeringa4, Eric D Hill2, John Monahan5, James A Naifeh3, Maria V Petukhova2, Ben Y Reis6, Nancy A Sampson2, Paul D Bliese7, Murray B Stein8, Alan M Zaslavsky2, Ronald C Kessler2.
Abstract
Sexual violence victimization is a significant problem among female U.S. military personnel. Preventive interventions for high-risk individuals might reduce prevalence, but would require accurate targeting. We attempted to develop a targeting model for female Regular U.S. Army soldiers based on theoretically-guided predictors abstracted from administrative data records. As administrative reports of sexual assault victimization are known to be incomplete, parallel machine learning models were developed to predict administratively-recorded (in the population) and self-reported (in a representative survey) victimization. Capture-recapture methods were used to combine predictions across models. Key predictors included low status, crime involvement, and treated mental disorders. Area under the Receiver Operating Characteristic curve was .83-.88. 33.7-63.2% of victimizations occurred among soldiers in the highest-risk ventile (5%). This high concentration of risk suggests that the models could be useful in targeting preventive interventions, although final determination would require careful weighing of intervention costs, effectiveness, and competing risks.Entities:
Keywords: Machine learning; military sexual trauma; prediction model; rape; risk model; sexual assault
Year: 2016 PMID: 28154788 PMCID: PMC5279920 DOI: 10.1177/2167702616639532
Source DB: PubMed Journal: Clin Psychol Sci ISSN: 2167-7034