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利用标准化护理术语实施人工智能防跌倒工具以改善患者结局:一项多医院研究。

Utilizing standardized nursing terminologies in implementing an AI-powered fall-prevention tool to improve patient outcomes: a multihospital study.

机构信息

Nursing Department, Inha University, Incheon, Republic of Korea.

Division of General Internal Medicine, The Center for Patient Safety Research and Practice, Brigham and Women's Hospital, Boston, Massachusetts, USA.

出版信息

J Am Med Inform Assoc. 2023 Oct 19;30(11):1826-1836. doi: 10.1093/jamia/ocad145.

Abstract

OBJECTIVES

Standardized nursing terminologies (SNTs) are necessary to ensure consistent knowledge expression and compare the effectiveness of nursing practice across settings. This study investigated whether SNTs can support semantic interoperability and outcoming tracking over time by implementing an AI-powered CDS tool for fall prevention across multiple EMR systems.

MATERIALS AND METHODS

The study involved 3 tertiary academic hospitals and 1 public hospital with different EMR systems and nursing terms, and employed an AI-powered CDS tool that determines the fall risk within the next hour (prediction model) and recommends tailored care plans (CDS functions; represented by SNTs). The prediction model was mapped to local data elements and optimized using local data sets. The local nursing statements in CDS functions were mapped using an ICNP-based inpatient fall-prevention catalog. Four implementation models were compared, and patient outcomes and nursing activities were observed longitudinally at one site.

RESULTS

The postimplementation approach was practical for disseminating the AI-powered CDS tool for nursing. The 4 hospitals successfully implemented prediction models with little performance variation; the AUROCs were 0.8051-0.9581. The nursing process data contributed markedly to fall-risk predictions. The local nursing statements on preventing falls covered 48.0%-86.7% of statements. There was no significant longitudinal decrease in the fall rate (P = .160, 95% CI = -1.21 to 0.21 per 1000 hospital days), but rates of interventions provided by nurses were notably increased.

CONCLUSION

SNTs contributed to achieving semantic interoperability among multiple EMR systems to disseminate AI-powered CDS tools and automatically track nursing and patient outcomes.

摘要

目的

标准化护理术语(SNTs)是确保知识表达一致并比较不同环境下护理实践效果的必要条件。本研究通过在多个电子病历系统中实施人工智能驱动的跌倒预防 CDS 工具,调查 SNTs 是否能够支持语义互操作性并随着时间的推移跟踪结果。

材料与方法

该研究涉及 3 家三级学术医院和 1 家公立医院,这些医院拥有不同的电子病历系统和护理术语,并采用了人工智能驱动的 CDS 工具,该工具可在未来 1 小时内确定跌倒风险(预测模型)并推荐量身定制的护理计划(CDS 功能;以 SNTs 表示)。预测模型被映射到本地数据元素,并使用本地数据集进行优化。CDS 功能中的本地护理陈述使用基于 ICNP 的住院患者跌倒预防目录进行映射。比较了 4 种实施模型,并在一个地点对患者结果和护理活动进行了纵向观察。

结果

实施后的方法适用于传播人工智能驱动的 CDS 工具进行护理。4 家医院均成功实施了预测模型,性能变化很小;AUROCs 为 0.8051-0.9581。护理过程数据对跌倒风险预测有显著贡献。预防跌倒的本地护理陈述涵盖了 48.0%-86.7%的陈述。跌倒率没有显著的纵向下降(P = .160,95%CI = -1.21 至 0.21/每 1000 个住院日),但护士提供的干预措施率显著增加。

结论

SNTs 有助于在多个电子病历系统之间实现语义互操作性,以传播人工智能驱动的 CDS 工具并自动跟踪护理和患者结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5d5f/10586045/432979aa142b/ocad145f1.jpg

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