AIと看護の連携で命を救う(Nurses and AI Collaborate to Save Lives, Reduce Hospital Stays)

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2025-05-05 コロンビア大学

コロンビア大学の研究チームは、看護師の観察力とAIを組み合わせた早期警告システム「CONCERN」を開発しました。このシステムは、電子カルテに記録された看護師の文書パターンを機械学習で解析し、患者の状態悪化を最大42時間早く予測します。従来のバイタルサインに依存する方法と比べ、死亡率を35.6%、敗血症リスクを7.5%低下させ、平均入院期間を0.5日短縮する効果が確認されました。研究成果は『Nature Medicine』に掲載され、他の医療機関への応用も期待されています。

<関連情報>

患者悪化のためのリアルタイム監視システム:実用的クラスター無作為化比較試験 Real-time surveillance system for patient deterioration: a pragmatic cluster-randomized controlled trial

Sarah C. Rossetti,Patricia C. Dykes,Chris Knaplund,Sandy Cho,Jennifer Withall,Graham Lowenthal,David Albers,Rachel Y. Lee,Haomiao Jia,Suzanne Bakken,Min-Jeoung Kang,Frank Y. Chang,Li Zhou,David W. Bates,Temiloluwa Daramola,Fang Liu,Jessica Schwartz-Dillard,Mai Tran,Syed Mohtashim Abbas Bokhari,Jennifer Thate & Kenrick D. Cato
Nature Medicine  Published:02 April 2025
DOI:https://doi.org/10.1038/s41591-025-03609-7

Abstract

The COmmunicating Narrative Concerns Entered by RNs (CONCERN) early warning system (EWS) uses real-time nursing surveillance documentation patterns in its machine learning algorithm to identify deterioration risk. We conducted a 1-year, multisite, pragmatic trial with cluster-randomization of 74 clinical units (37 intervention; 37 usual care) across 2 health systems. Eligible adult hospital encounters were included. We tested if outcomes differed between patients whose care teams were and patients whose care teams were not informed by the CONCERN EWS. Coprimary outcomes were in-hospital mortality (examined as instantaneous risk) and length of stay. Secondary outcomes were cardiopulmonary arrest, sepsis, unanticipated intensive care unit transfers and 30-day hospital readmission. Among 60,893 hospital encounters (33,024 intervention; 27,869 usual care), intervention group encounters had 35.6% decreased instantaneous risk of death (adjusted hazard ratio (HR), 0.64; 95% confidence interval (CI), 0.53–0.78; P < 0.0001), 11.2% decreased length of stay (adjusted incidence rate ratio, 0.91; 95% CI, 0.90–0.93; P < 0.0001), 7.5% decreased instantaneous risk of sepsis (adjusted HR, 0.93; 95% CI, 0.86–0.99; P = 0.0317) and 24.9% increased instantaneous risk of unanticipated intensive care unit transfer (adjusted HR, 1.25; 95% CI, 1.09–1.43; P = 0.0011) compared with usual-care group encounters. No adverse events were reported. A machine learning-based EWS, modeled on nursing surveillance patterns, decreased inpatient deterioration risk with statistical significance. ClinicalTrials.gov registration: NCT03911687.

医療・健康
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