From the Systems Research Initiative, Kaiser Permanente Division of Research, Oakland (G.J.E., V.X.L., A.S., B.L., J.D.G., P.K.), the Intensive Care Unit, Kaiser Permanente Medical Center, Santa Clara (V.X.L.), and Unlearn.AI, San Francisco (A.S.) - all in California.
N Engl J Med. 2020 Nov 12;383(20):1951-1960. doi: 10.1056/NEJMsa2001090.
Hospitalized adults whose condition deteriorates while they are in wards (outside the intensive care unit [ICU]) have considerable morbidity and mortality. Early identification of patients at risk for clinical deterioration has relied on manually calculated scores. Outcomes after an automated detection of impending clinical deterioration have not been widely reported.
On the basis of a validated model that uses information from electronic medical records to identify hospitalized patients at high risk for clinical deterioration (which permits automated, real-time risk-score calculation), we developed an intervention program involving remote monitoring by nurses who reviewed records of patients who had been identified as being at high risk; results of this monitoring were then communicated to rapid-response teams at hospitals. We compared outcomes (including the primary outcome, mortality within 30 days after an alert) among hospitalized patients (excluding those in the ICU) whose condition reached the alert threshold at hospitals where the system was operational (intervention sites, where alerts led to a clinical response) with outcomes among patients at hospitals where the system had not yet been deployed (comparison sites, where a patient's condition would have triggered a clinical response after an alert had the system been operational). Multivariate analyses adjusted for demographic characteristics, severity of illness, and burden of coexisting conditions.
The program was deployed in a staggered fashion at 19 hospitals between August 1, 2016, and February 28, 2019. We identified 548,838 non-ICU hospitalizations involving 326,816 patients. A total of 43,949 hospitalizations (involving 35,669 patients) involved a patient whose condition reached the alert threshold; 15,487 hospitalizations were included in the intervention cohort, and 28,462 hospitalizations in the comparison cohort. Mortality within 30 days after an alert was lower in the intervention cohort than in the comparison cohort (adjusted relative risk, 0.84, 95% confidence interval, 0.78 to 0.90; P<0.001).
The use of an automated predictive model to identify high-risk patients for whom interventions by rapid-response teams could be implemented was associated with decreased mortality. (Funded by the Gordon and Betty Moore Foundation and others.).
在病房(重症监护病房外)中病情恶化的住院成人有相当高的发病率和死亡率。早期识别有临床恶化风险的患者一直依赖于手动计算的评分。自动化检测到即将发生的临床恶化后的结果尚未广泛报道。
基于一个使用电子病历信息识别有临床恶化高风险的住院患者的验证模型(允许自动实时风险评分计算),我们开发了一个干预计划,包括护士对被认为高风险的患者记录进行远程监测;然后将监测结果传达给医院的快速反应小组。我们比较了病情达到警报阈值的住院患者(不包括重症监护病房患者)的结果(包括主要结果,即警报后 30 天内的死亡率),这些患者在系统运行的医院(干预地点,在这些地点,警报会导致临床反应)与系统尚未部署的医院(比较地点,在这些地点,系统运行后,患者的病情将触发临床反应)的患者结果。多变量分析调整了人口统计学特征、疾病严重程度和共存疾病负担。
该计划于 2016 年 8 月 1 日至 2019 年 2 月 28 日分阶段在 19 家医院部署。我们确定了涉及 326816 名患者的 548838 例非 ICU 住院治疗。共有 43949 例住院治疗(涉及 35669 名患者)涉及病情达到警报阈值的患者;15487 例住院治疗纳入干预队列,28462 例住院治疗纳入比较队列。警报后 30 天内的死亡率在干预队列中低于比较队列(调整后的相对风险,0.84,95%置信区间,0.78 至 0.90;P<0.001)。
使用自动化预测模型识别高危患者,以便快速反应团队可以实施干预措施,与死亡率降低相关。(由戈登和贝蒂·摩尔基金会等资助)。