一种基于语音的数字助理,用于在 ICU 查房期间智能提示基于证据的实践。
A voice-based digital assistant for intelligent prompting of evidence-based practices during ICU rounds.
机构信息
Department of Critical Care Medicine, University of Pittsburgh School of Medicine, Scaife Hall Suite 600, 3550 Terrace Street, Pittsburgh, PA 15261, USA.
Department of Biomedical Informatics, University of Pittsburgh School of Medicine, Offices at Baum 4th Floor, 5607 Baum Blvd, Pittsburgh, PA 15206, USA.
出版信息
J Biomed Inform. 2023 Oct;146:104483. doi: 10.1016/j.jbi.2023.104483. Epub 2023 Aug 30.
OBJECTIVE
To evaluate the technical feasibility and potential value of a digital assistant that prompts intensive care unit (ICU) rounding teams to use evidence-based practices based on analysis of their real-time discussions.
METHODS
We evaluated a novel voice-based digital assistant which audio records and processes the ICU care team's rounding discussions to determine which evidence-based practices are applicable to the patient but have yet to be addressed by the team. The system would then prompt the team to consider indicated but not yet delivered practices, thereby reducing cognitive burden compared to traditional rigid rounding checklists. In a retrospective analysis, we applied automatic transcription, natural language processing, and a rule-based expert system to generate personalized prompts for each patient in 106 audio-recorded ICU rounding discussions. To assess technical feasibility, we compared the system's prompts to those created by experienced critical care nurses who directly observed rounds. To assess potential value, we also compared the system's prompts to a hypothetical paper checklist containing all evidence-based practices.
RESULTS
The positive predictive value, negative predictive value, true positive rate, and true negative rate of the system's prompts were 0.45 ± 0.06, 0.83 ± 0.04, 0.68 ± 0.07, and 0.66 ± 0.04, respectively. If implemented in lieu of a paper checklist, the system would generate 56% fewer prompts per patient, with 50%±17% greater precision.
CONCLUSION
A voice-based digital assistant can reduce prompts per patient compared to traditional approaches for improving evidence uptake on ICU rounds. Additional work is needed to evaluate field performance and team acceptance.
目的
评估一种数字助手的技术可行性和潜在价值,该助手通过分析实时讨论,提示重症监护病房(ICU)查房团队使用基于证据的实践。
方法
我们评估了一种新颖的基于语音的数字助手,该助手录制和处理 ICU 护理团队的查房讨论,以确定哪些基于证据的实践适用于患者,但尚未被团队解决。然后,该系统会提示团队考虑已确定但尚未实施的实践,从而减轻与传统严格查房清单相关的认知负担。在回顾性分析中,我们应用自动转录、自然语言处理和基于规则的专家系统,为 106 段录音 ICU 查房讨论中的每位患者生成个性化提示。为了评估技术可行性,我们将系统的提示与经验丰富的重症监护护士直接观察查房时生成的提示进行了比较。为了评估潜在价值,我们还将系统的提示与包含所有基于证据的实践的假设性纸质清单进行了比较。
结果
系统提示的阳性预测值、阴性预测值、真阳性率和真阴性率分别为 0.45±0.06、0.83±0.04、0.68±0.07 和 0.66±0.04。如果替代纸质清单实施,系统将为每位患者生成的提示减少 56%,而精度则提高 50%±17%。
结论
与传统的提高 ICU 查房证据采用率的方法相比,基于语音的数字助手可以减少每位患者的提示。需要进一步的工作来评估现场性能和团队接受度。