基于人工智能的学生自杀风险活动监控:K-12 学校、护理人员、政府和技术开发人员的考虑因素。

Rand health quarterly Pub Date : 2024-03-04 eCollection Date: 2024-03-01
Lynsay Ayer, Benjamin Boudreaux, Jessica Welburn Paige, Pierrce Holmes, Tara Laila Blagg, Sapna J Mendon-Plasek
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引用次数: 0

摘要

为了应对普遍存在的青少年心理健康危机,一些幼儿园到十二年级(K-12)的学校已经开始采用基于人工智能(AI)的工具来帮助识别有自杀和自残风险的学生。采用人工智能和其他类型的教育技术来部分满足学生的心理健康需求,是许多学校在向远程教育过渡过程中自然而然迈出的一步。然而,人们对这些项目如何运作、学校如何实施以及它们对学生及其家庭是有利还是有害的了解还很有限。为了帮助政策制定者、学区、学校领导等就这些工具的使用做出决策,作者针对这些知识空白,对 K-12 学校如何实施基于人工智能的自杀风险监控项目、利益相关者如何看待这些项目对学生的影响以及这些工具的潜在益处和风险进行了初步研究。通过分析,作者还为学校和学区领导、州、联邦和地方政策制定者以及技术开发者提出了建议,供他们在推进基于人工智能的自杀风险监控项目时参考,最大限度地发挥其预期效益并降低其可能存在的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-Based Student Activity Monitoring for Suicide Risk: Considerations for K-12 Schools, Caregivers, Government, and Technology Developers.

In response to the widespread youth mental health crisis, some kindergarten-through-12th-grade (K-12) schools have begun employing artificial intelligence (AI)-based tools to help identify students at risk for suicide and self-harm. The adoption of AI and other types of educational technology to partially address student mental health needs has been a natural forward step for many schools during the transition to remote education. However, there is limited understanding about how such programs work, how they are implemented by schools, and how they may benefit or harm students and their families. To assist policymakers, school districts, school leaders, and others in making decisions regarding the use of these tools, the authors address these knowledge gaps by providing a preliminary examination of how AI-based suicide risk monitoring programs are implemented in K-12 schools, how stakeholders perceive the effects that the programs are having on students, and the potential benefits and risks of such tools. Using this analysis, the authors also offer recommendations for school and district leaders; state, federal, and local policymakers; and technology developers to consider as they move forward in maximizing the intended benefits and mitigating the possible risks of AI-based suicide risk monitoring programs.

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