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青少年、家长和医疗服务提供者对一种用于识别初级保健中青少年自杀风险的预测算法的看法。

Adolescent, Parent, and Provider Perceptions of a Predictive Algorithm to Identify Adolescent Suicide Risk in Primary Care.

机构信息

Department of Child and Adolescent Psychiatry and Behavioral Sciences (M Davis, GC Dysart, KTG Schwartz, and JF Young), Children's Hospital of Philadelphia, Philadelphia, Pa; PolicyLab (M Davis, GC Dysart, SK Doupnik, KTG Schwartz, and JF Young), Children's Hospital of Philadelphia, Philadelphia, Pa; Clinical Futures (M Davis and SK Doupnik), Children's Hospital of Philadelphia, Philadelphia, Pa; Department of Psychiatry (M Davis and JF Young), University of Pennsylvania Perelman School of Medicine, Philadelphia, Pa; Penn Implementation Science Center at the Leonard Davis Institute of Health Economics (PISCE@LDI) (M Davis and SK Doupnik), University of Pennsylvania, Philadelphia, Pa.

Department of Child and Adolescent Psychiatry and Behavioral Sciences (M Davis, GC Dysart, KTG Schwartz, and JF Young), Children's Hospital of Philadelphia, Philadelphia, Pa; PolicyLab (M Davis, GC Dysart, SK Doupnik, KTG Schwartz, and JF Young), Children's Hospital of Philadelphia, Philadelphia, Pa.

出版信息

Acad Pediatr. 2024 May-Jun;24(4):645-653. doi: 10.1016/j.acap.2023.12.015. Epub 2024 Jan 6.

DOI:10.1016/j.acap.2023.12.015
PMID:38190885
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11056301/
Abstract

OBJECTIVE

To understand adolescent, parent, and provider perceptions of a machine learning algorithm for detecting adolescent suicide risk prior to its implementation primary care.

METHODS

We conducted semi-structured, qualitative interviews with adolescents (n = 9), parents (n = 12), and providers (n = 10; mixture of behavioral health and primary care providers) across two major health systems. Interviews were audio recorded and transcribed with analyses supported by use of NVivo. A codebook was developed combining codes derived inductively from interview transcripts and deductively from implementation science frameworks for content analysis.

RESULTS

Reactions to the algorithm were mixed. While many participants expressed privacy concerns, they believed the algorithm could be clinically useful for identifying adolescents at risk for suicide and facilitating follow-up. Parents' past experiences with their adolescents' suicidal thoughts and behaviors contributed to their openness to the algorithm. Results also aligned with several key Consolidated Framework for Implementation Research domains. For example, providers mentioned barriers inherent to the primary care setting such as time and resource constraints likely to impact algorithm implementation. Participants also cited a climate of mistrust of science and health care as potential barriers.

CONCLUSIONS

Findings shed light on factors that warrant consideration to promote successful implementation of suicide predictive algorithms in pediatric primary care. By attending to perspectives of potential end users prior to the development and testing of the algorithm, we can ensure that the risk prediction methods will be well-suited to the providers who would be interacting with them and the families who could benefit.

摘要

目的

在机器学习算法在初级保健中实施之前,了解青少年、家长和提供者对其检测青少年自杀风险的看法。

方法

我们在两个主要医疗系统中对青少年(n=9)、家长(n=12)和提供者(n=10;包括行为健康和初级保健提供者)进行了半结构式定性访谈。访谈进行了录音并转录,使用 NVivo 支持分析。代码本结合了从访谈记录中归纳得出的代码和从实施科学框架中推导出的内容分析代码。

结果

对算法的反应不一。虽然许多参与者表示担心隐私问题,但他们认为该算法在识别有自杀风险的青少年并促进随访方面可能具有临床意义。父母过去与青少年自杀念头和行为的经历使他们对算法持开放态度。结果也与实施研究的几个关键整合框架一致。例如,提供者提到了初级保健环境固有的障碍,如时间和资源限制,这些障碍可能会影响算法的实施。参与者还提到了对科学和医疗保健的不信任气氛,这可能是潜在的障碍。

结论

研究结果阐明了在开发和测试算法之前需要考虑的因素,以促进自杀预测算法在儿科初级保健中的成功实施。通过在开发和测试算法之前关注潜在最终用户的观点,我们可以确保风险预测方法将非常适合与之交互的提供者和可能受益的家庭。

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