Clinician perspectives on how situational context and augmented intelligence design features impact perceived usefulness of sepsis prediction scores embedded within a simulated electronic health record.

Velma L Payne, Usman Sattar, Melanie C. Wright, Elijah Hill, Jorie M Butler, Brekk C. Macpherson, Amanda Jeppesen, G. Del Fiol, Karl Madaras-Kelly
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Abstract

OBJECTIVE Obtain clinicians' perspectives on early warning scores (EWS) use within context of clinical cases. MATERIAL AND METHODS We developed cases mimicking sepsis situations. De-identified data, synthesized physician notes, and EWS representing deterioration risk were displayed in a simulated EHR for analysis. Twelve clinicians participated in semi-structured interviews to ascertain perspectives across four domains: (1) Familiarity with and understanding of artificial intelligence (AI), prediction models and risk scores; (2) Clinical reasoning processes; (3) Impression and response to EWS; and (4) Interface design. Transcripts were coded and analyzed using content and thematic analysis. RESULTS Analysis revealed clinicians have experience but limited AI and prediction/risk modeling understanding. Case assessments were primarily based on clinical data. EWS went unmentioned during initial case analysis; although when prompted to comment on it, they discussed it in subsequent cases. Clinicians were unsure how to interpret or apply the EWS, and desired evidence on its derivation and validation. Design recommendations centered around EWS display in multi-patient lists for triage, and EWS trends within the patient record. Themes included a "Trust but Verify" approach to AI and early warning information, dichotomy that EWS is helpful for triage yet has disproportional signal-to-high noise ratio, and action driven by clinical judgment, not the EWS. CONCLUSIONS Clinicians were unsure of how to apply EWS, acted on clinical data, desired score composition and validation information, and felt EWS was most useful when embedded in multi-patient views. Systems providing interactive visualization may facilitate EWS transparency and increase confidence in AI-generated information.
临床医生如何看待情景背景和增强智能设计功能对嵌入模拟电子病历中的败血症预测分数有用性的影响。
材料与方法 我们模拟败血症病例。在模拟电子病历中显示去身份化数据、综合医生笔记和代表恶化风险的 EWS,以便进行分析。12 名临床医生参加了半结构化访谈,以确定四个领域的观点:(1) 对人工智能(AI)、预测模型和风险评分的熟悉和理解;(2) 临床推理过程;(3) 对 EWS 的印象和反应;以及 (4) 界面设计。结果分析表明,临床医生有经验,但对人工智能和预测/风险建模的理解有限。病例评估主要基于临床数据。在最初的病例分析中,EWS 未被提及;但当被要求对此发表评论时,他们在随后的病例中进行了讨论。临床医生不确定如何解释或应用 EWS,并希望获得有关其推导和验证的证据。设计建议主要围绕 EWS 在多病人列表中的显示,以便进行分流,以及病人记录中的 EWS 趋势。主题包括对人工智能和预警信息采取 "信任但要验证 "的方法,EWS 对分诊有帮助但信噪比过高的二分法,以及由临床判断而非 EWS 驱动的行动。提供交互式可视化的系统可提高 EWS 的透明度,增强对人工智能生成信息的信心。
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