Kaiser Permanente Northwest Center for Health Research, 3800 N Interstate Ave, Portland, OR, 97227, USA.
Kaiser Permanente Washington Health Research Institute, WA, Seattle, USA.
BMC Psychiatry. 2022 Jul 23;22(1):494. doi: 10.1186/s12888-022-04129-1.
Suicide risk prediction models derived from electronic health records (EHR) and insurance claims are a novel innovation in suicide prevention but patient perspectives on their use have been understudied.
In this qualitative study, between March and November 2020, 62 patients were interviewed from three health systems: one anticipating implementation of an EHR-derived suicide risk prediction model and two others piloting different implementation approaches. Site-tailored interview guides focused on patients' perceptions of this technology, concerns, and preferences for and experiences with suicide risk prediction model implementation in clinical practice. A constant comparative analytic approach was used to derive themes.
Interview participants were generally supportive of suicide risk prediction models derived from EHR data. Concerns included apprehension about inducing anxiety and suicidal thoughts, or triggering coercive treatment, particularly among those who reported prior negative experiences seeking mental health care. Participants who were engaged in mental health care or case management expected to be asked about their suicide risk and largely appreciated suicide risk conversations, particularly by clinicians comfortable discussing suicidality.
Most patients approved of suicide risk models that use EHR data to identify patients at-risk for suicide. As health systems proceed to implement such models, patient-centered care would involve dialogue initiated by clinicians experienced with assessing suicide risk during virtual or in person care encounters. Health systems should proactively monitor for negative consequences that result from risk model implementation to protect patient trust.
基于电子健康记录(EHR)和保险索赔的自杀风险预测模型是预防自杀的一项新创新,但患者对其使用的看法研究不足。
在这项定性研究中,2020 年 3 月至 11 月,从三个医疗系统采访了 62 名患者:一个系统预期实施基于 EHR 的自杀风险预测模型,另外两个系统则在试点不同的实施方法。根据地点定制的访谈指南重点关注患者对该技术的看法、关注和对临床实践中实施自杀风险预测模型的偏好和体验。采用恒定性比较分析方法得出主题。
接受采访的患者普遍支持基于 EHR 数据的自杀风险预测模型。患者关注的问题包括对引起焦虑和自杀念头或触发强制治疗的担忧,特别是那些报告有过寻求心理健康护理负面经历的人。参与心理健康护理或病例管理的患者希望被问及他们的自杀风险,并普遍欣赏自杀风险对话,特别是由善于讨论自杀的临床医生进行的对话。
大多数患者赞成使用 EHR 数据识别自杀风险患者的自杀风险模型。随着医疗系统继续实施此类模型,以患者为中心的护理将涉及在虚拟或面对面护理期间,由经验丰富的评估自杀风险的临床医生发起的对话。医疗系统应主动监测因风险模型实施而产生的负面后果,以保护患者信任。