Verma Amol A, Stukel Therese A, Colacci Michael, Bell Shirley, Ailon Jonathan, Friedrich Jan O, Murray Joshua, Kuzulugil Sebnem, Yang Zhen, Lee Yuna, Pou-Prom Chloe, Mamdani Muhammad
St. Michael's Hospital (Verma, Colacci, Bell, Ailon, Friedrich, Kuzulugil, Yang, Lee, Pou-Prom, Mamdani), Unity Health Toronto; Department of Medicine (Verma, Colacci, Ailon, Friedrich, Lee, Mamdani), and Institute of Health Policy, Management, and Evaluation (Verma, Stukel, Colacci, Murray, Mamdani), and Department of Laboratory Medicine and Pathobiology (Verma, Mamdani), University of Toronto; ICES Central (Stukel); Leslie Dan Faculty of Pharmacy (Mamdani), University of Toronto, Toronto, Ont.
CMAJ. 2024 Sep 15;196(30):E1027-E1037. doi: 10.1503/cmaj.240132.
The implementation and clinical impact of machine learning-based early warning systems for patient deterioration in hospitals have not been well described. We sought to describe the implementation and evaluation of a multifaceted, real-time, machine learning-based early warning system for patient deterioration used in the general internal medicine (GIM) unit of an academic medical centre.
In this nonrandomized, controlled study, we evaluated the association between the implementation of a machine learning-based early warning system and clinical outcomes. We used propensity score-based overlap weighting to compare patients in the GIM unit during the intervention period (Nov. 1, 2020, to June 1, 2022) to those admitted during the pre-intervention period (Nov. 1, 2016, to June 1, 2020). In a difference-indifferences analysis, we compared patients in the GIM unit with those in the cardiology, respirology, and nephrology units who did not receive the intervention. We retrospectively calculated system predictions for each patient in the control cohorts, although alerts were sent to clinicians only during the intervention period for patients in GIM. The primary outcome was non-palliative in-hospital death.
The study included 13 649 patient admissions in GIM and 8470 patient admissions in subspecialty units. Non-palliative deaths were significantly lower in the intervention period than the pre-intervention period among patients in GIM (1.6% v. 2.1%; adjusted relative risk [RR] 0.74, 95% confidence interval [CI] 0.55-1.00) but not in the subspecialty cohorts (1.9% v. 2.1%; adjusted RR 0.89, 95% CI 0.63-1.28). Among high-risk patients in GIM for whom the system triggered at least 1 alert, the proportion of non-palliative deaths was 7.1% in the intervention period, compared with 10.3% in the pre-intervention period (adjusted RR 0.69, 95% CI 0.46-1.02), with no meaningful difference in subspecialty cohorts (10.4% v. 10.6%; adjusted RR 0.98, 95% CI 0.60-1.59). In the difference-indifferences analysis, the adjusted relative risk reduction for non-palliative death in GIM was 0.79 (95% CI 0.50-1.24).
Implementing a machine learning-based early warning system in the GIM unit was associated with lower risk of non-palliative death than in the pre-intervention period. Machine learning-based early warning systems are promising technologies for improving clinical outcomes.
基于机器学习的医院患者病情恶化早期预警系统的实施情况及其临床影响尚未得到充分描述。我们试图描述一个多方面、实时、基于机器学习的患者病情恶化早期预警系统在一所学术医疗中心的普通内科(GIM)病房的实施与评估情况。
在这项非随机对照研究中,我们评估了基于机器学习的早期预警系统的实施与临床结局之间的关联。我们使用基于倾向评分的重叠加权法,将干预期间(2020年11月1日至2022年6月1日)GIM病房的患者与干预前期(2016年11月1日至2020年6月1日)入院的患者进行比较。在差异-差异分析中,我们将GIM病房的患者与未接受干预的心脏病科、呼吸科和肾内科病房的患者进行比较。我们对对照队列中的每位患者进行回顾性系统预测,不过仅在干预期间向GIM病房的患者临床医生发送警报。主要结局为非姑息性院内死亡。
该研究纳入了GIM病房的13649例住院患者以及专科病房的8470例住院患者。GIM病房患者中,干预期的非姑息性死亡显著低于干预前期(1.6%对2.1%;调整后相对风险[RR]0.74,95%置信区间[CI]0.55 - 1.00),但专科病房队列中无此差异(1.9%对2.1%;调整后RR 0.89, 95% CI 0.63 - 1.28)。在GIM病房中系统触发至少1次警报的高危患者中,干预期非姑息性死亡比例为7.1%,而干预前期为10.3%(调整后RR 0.69,95% CI 0.46 - 1.02),专科病房队列中无显著差异(10.4%对10.6%;调整后RR 0.98,95% CI 0.60 - 1.59)。在差异-差异分析中,GIM病房非姑息性死亡的调整后相对风险降低为0.79(95% CI 0.50 - 1.24)。
在GIM病房实施基于机器学习的早期预警系统与干预前期相比,非姑息性死亡风险较低。基于机器学习的早期预警系统是改善临床结局的有前景的技术。