College of Nursing, University of Cincinnati, Cincinnati, OH, USA.
Department of Pediatrics, The Ohio State University College of Medicine, Columbus, OH, USA.
Child Maltreat. 2024 Nov;29(4):601-611. doi: 10.1177/10775595231194599. Epub 2023 Aug 6.
Survivors of child sex trafficking (SCST) experience high rates of adverse health outcomes. Amidst the duration of their victimization, survivors regularly seek healthcare yet fail to be identified. This study sought to utilize artificial intelligence (AI) to identify SCST and describe the elements of their healthcare presentation. An AI-supported keyword search was conducted to identify SCST within the electronic medical records (EMR) of ∼1.5 million patients at a large midwestern pediatric hospital. Descriptive analyses were used to evaluate associated diagnoses and clinical presentation. A sex trafficking-related keyword was identified in .18% of patient charts. Among this cohort, the most common associated diagnostic codes were for Confirmed Sexual/Physical Assault; Trauma and Stress-Related Disorders; Depressive Disorders; Anxiety Disorders; and Suicidal Ideation. Our findings are consistent with the myriad of known adverse physical and psychological outcomes among SCST and illuminate the future potential of AI technology to improve screening and research efforts surrounding all aspects of this vulnerable population.
儿童性贩卖幸存者(SCST)经历了高比例的不良健康结果。在他们受害的过程中,幸存者经常寻求医疗保健,但未能被识别。本研究旨在利用人工智能(AI)来识别 SCST 并描述其医疗保健表现的要素。在一家大型中西部儿科医院的约 150 万患者的电子病历(EMR)中,进行了 AI 支持的关键字搜索,以识别 SCST。使用描述性分析来评估相关诊断和临床表现。在患者图表中.18%的比例中识别出了与性贩卖相关的关键字。在这一队列中,最常见的相关诊断代码是确认的性/身体攻击;创伤和应激相关障碍;抑郁障碍;焦虑障碍;和自杀意念。我们的发现与 SCST 中众多已知的身体和心理不良后果一致,并阐明了人工智能技术在改善对这一弱势群体各个方面的筛查和研究工作方面的未来潜力。