• Title of article

    A neural network model analysis to identify victims of intimate partner violence

  • Author/Authors

    Arm، نويسنده , , G. Sprecher، نويسنده , , Robert L. Muelleman، نويسنده , , Michael C. Wadman، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2004
  • Pages
    3
  • From page
    87
  • To page
    89
  • Abstract
    The objective of this study was to determine if a neural network model can identify victims of intimate partner violence (IPV). A custom neural network model was constructed and trained using the 1995 ED databases at Truman Medical Center of all female visits. The input vector developed was an array of 100 binary elements containing, in coded form, the patient’s age, day of week, primary diagnosis (excluding 995.81), disposition, race, time, and E-code. The trained network was then presented with a series of 19,830 female patients from the 1996 ED database to determine if it could discriminate cases from control subjects. The neural network identified 231 of 297 known IPV victims (sensitivity 78%) in the 1996 database. It also categorized 2234 false-positive patients out of 19,533 IPV-negative patients (specificity 89%). A computer-based neural network model, when supplied with information commonly available in the ED medical record, can identify victims of IPV.
  • Keywords
    Author Keywords: Intimate partner , violence , neural network
  • Journal title
    American Journal of Emergency Medicine
  • Serial Year
    2004
  • Journal title
    American Journal of Emergency Medicine
  • Record number

    780433