自动信息学可提高人口贩运可疑案件的侦破率--初步研究。

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES JAMIA Open Pub Date : 2023-12-14 eCollection Date: 2023-12-01 DOI:10.1093/jamiaopen/ooad097
David O Duke, Derin Allard, Suzanne Dysart, Keenan O Hogan, Suzanne Phelan, Luke Rawlings, Hanni Stoklosa
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引用次数: 0

摘要

目标:在全球范围内,估计有 4030 万受害者被困在现代奴隶制中,其中包括 2490 万被强迫劳动和 1540 万被强迫结婚的受害者。大多数劳动力和性贩运幸存者报告称,在受害期间至少遇到过一次医疗保健服务。本文的主要重点是在医院/急诊科环境中实时识别被贩运者的信息学技术解决方案:Octavia 是一款在加利福尼亚州 3 家医院实施的软件应用程序,它扫描了所有患者的就诊情况,以确定哪些社会和临床决定因素是人口贩运的一致预测因素。任何符合这些标准的患者都会被转交给一名经过专门培训的高风险导航员,该导航员会对数据进行筛选,并在可能的情况下与患者进行直接接触,以努力建立融洽的关系,并在可能的情况下为受害者提供帮助:结果:在观察期内,与项目实施前的基线相比,对医院患者就诊情况进行自动扫描后,发现的有可能被贩运的人员明显增加:我们的经验表明,自动化技术可以帮助医疗服务提供者识别潜在的被贩运者,从而提高提供护理的可能性。
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Automated informatics may increase the detection rate of suspicious cases of human trafficking-a preliminary study.

Objectives: Worldwide, there is an estimated 40.3 million victims trapped in modern day slavery, including 24.9 million in forced labor and 15.4 million in forced marriage. A majority of labor and sex trafficking survivors report at least one healthcare encounter during their victimization. An approach to an informatics technology solution for identifying trafficked persons in real time, in the hospital / emergency department settings is the primary focus of this paper.

Materials and methods: Octavia, a software application implemented in 3 California hospitals, scanned all patient encounters for social and clinical determinants that are consistent predictors of HT. Any encounter that matched these criteria was forwarded to a specially trained High-Risk Navigator who screened the data and when able, made direct contact in an effort to build rapport and possibly provide victim assistance.

Results: During the observation period, the automated scanning of hospital patient encounters resulted in a notable increase in the detection of persons who had a likelihood of being trafficked when compared to a pre-project baseline.

Discussion: Our experience demonstrated that automated technology is useful to assist healthcare providers in identification of potentially trafficked persons, improving the likelihood of care provision.

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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
期刊最新文献
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