CONCERN预警系统对意外ICU转院、住院死亡率和住院时间的影响:一项多地点实用随机对照临床试验的结果

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2025-05-22 eCollection Date: 2024-01-01
Rachel Y Lee, Kenrick D Cato, Patricia C Dykes, Graham Lowenthal, Jennifer B Withall, Sandy Cho, Haomiao Jia, Sarah C Rossetti
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摘要

RNs早期预警系统(CONCERN EWS)是一种机器学习预测模型,它利用护理监测文件模式来预测住院患者的恶化风险。在一项多地点实用随机对照试验的1013例意外ICU转院患者的回顾性队列研究中,我们评估了CONCERN EWS对意外ICU转院后住院死亡率和住院时间的影响。采用卡方检验、t检验、多元逻辑回归和广义线性模型。我们的研究结果显示,与接受常规护理的患者相比,从急性重症监护病房意外转移到ICU的患者住院死亡率更低,平均住院时间更短。这些结果表明,CONCERN EWS增强了护理团队的共同态势感知,改善了沟通,有效地促进了及时干预,从而简化了护理流程,改善了患者的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of the CONCERN Early Warning System on Unanticipated ICU Transfers, In-Hospital Mortality, and Length of Stay: Results from a Multi-site Pragmatic Randomized Controlled Clinical Trial.

Communicating Narrative Concerns Entered by RNs Early Warning System (CONCERN EWS) is a machine-learning predictive model that leverages nursing surveillance documentation patterns to predict deterioration risks for hospitalized patients. In a retrospective cohort study of 1,013 hospital encounters with unanticipated ICU transfers from a multi-site pragmatic randomized controlled trial, we assessed the influence of CONCERN EWS on in-hospital mortality and length of stay following unanticipated ICU transfers. Chi-square tests, t-tests, multivariate logistic regression, and generalized linear models were used. Our findings showed that patients who had unanticipated ICU transfers from acute care units with CONCERN EWS had a lower in-hospital mortality rate and a shorter average hospital stay than those transferred from units receiving usual care. These results suggest that CONCERN EWS enhances shared situational awareness for care teams, improves communication, and effectively facilitates timely interventions, thereby streamlining care processes and improving patient outcomes.

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