Levkovich Inbar, Haber Yuval, Levi-Belz Yossi, Elyoseph Zohar
Faculty of Education, Tel Hai College, Upper Galilee, Israel.
Interdisciplinary Studies Unit, Bar- Ilan University, Ramat Gan, Israel.
Front Med (Lausanne). 2025 Jun 11;12:1599900. doi: 10.3389/fmed.2025.1599900. eCollection 2025.
Suicide remains a leading cause of preventable death, placing a significant burden on healthcare systems worldwide. Effective suicide prevention relies not only on mental health professionals but also on well-trained gatekeepers, including primary care providers, emergency physicians, and community healthcare workers. Traditional training programs, such as (QPR), require structured practice and continuous reinforcement to ensure competency. The integration of artificial intelligence (AI)-based simulators into medical training offers a promising, scalable approach for improving suicide prevention skills in healthcare settings. This study evaluates the effectiveness of an AI-driven simulator in enhancing QPR-related competencies.
A total of 89 adult participants from the community, all of whom were mental health professionals (including social workers, occupational therapists, speech therapists, and physicians), completed pre- and post-intervention assessments measuring self-efficacy and willingness to support individuals at risk of suicide. Participants engaged in real-time interactions with an AI-powered simulator that mimicked conversations with at-risk individuals, enabling dynamic practice of QPR (Question, Persuade, Refer) skills. Data were collected in June 2024. Quantitative data were analyzed using paired -tests and Pearson correlations, while qualitative feedback was examined through content analysis.
Post-intervention self-efficacy scores showed a significant increase, with a large effect size (Cohen's D = 1.67). Willingness-to-support scores demonstrated a slight but non-significant improvement. Higher QPR self-efficacy correlated positively with increased willingness to support. Qualitative feedback indicated that participants found the simulator realistic and beneficial for skill acquisition, although some expressed concerns regarding the potential reduction of human interaction in mental health training.
AI-driven simulators hold promise as scalable, accessible, and clinically relevant tools for suicide prevention training. Their integration into medical education and clinical settings could improve the preparedness of healthcare providers, primary care physicians, and frontline medical staff in identifying and managing suicide risk. These findings support the adoption of digital health innovations to enhance medical training and public health interventions.
自杀仍然是可预防死亡的主要原因,给全球医疗系统带来了沉重负担。有效的自杀预防不仅依赖于心理健康专业人员,还依赖于训练有素的守门人,包括初级保健提供者、急诊医生和社区医护人员。传统的培训项目,如(QPR),需要结构化的练习和持续强化以确保能力。将基于人工智能(AI)的模拟器整合到医学培训中,为提高医疗环境中的自杀预防技能提供了一种有前景、可扩展的方法。本研究评估了人工智能驱动的模拟器在增强与QPR相关能力方面的有效性。
共有89名来自社区的成年参与者,他们均为心理健康专业人员(包括社会工作者、职业治疗师、言语治疗师和医生),完成了干预前后测量自我效能感以及支持有自杀风险个体意愿的评估。参与者与一个人工智能驱动的模拟器进行实时互动,该模拟器模拟与有风险个体的对话,从而实现QPR(提问、劝说、转介)技能的动态练习。数据于2024年6月收集。定量数据使用配对t检验和皮尔逊相关性进行分析,而定性反馈则通过内容分析进行检查。
干预后自我效能感得分显著提高,效应量较大(科恩d值 = 1.67)。支持意愿得分显示出轻微但不显著的改善。较高的QPR自我效能感与增加的支持意愿呈正相关。定性反馈表明,参与者发现模拟器逼真且对技能获取有益,尽管一些人对心理健康培训中人际互动可能减少表示担忧。
人工智能驱动的模拟器有望成为用于自杀预防培训的可扩展、可获取且与临床相关的工具。将其整合到医学教育和临床环境中,可以提高医疗保健提供者、初级保健医生和一线医务人员识别和管理自杀风险的准备程度。这些发现支持采用数字健康创新来加强医学培训和公共卫生干预。