Division of Cardiac Anesthesiology University of Ottawa Heart Institute and the School of Epidemiology and Public Health University of Ottawa Ontario Canada.
Institute for Clinical Evaluative Sciences University of Ottawa Heart Institute Ottawa Ontario Canada.
J Am Heart Assoc. 2020 Nov 3;9(21):e017847. doi: 10.1161/JAHA.120.017847. Epub 2020 Sep 29.
Background Across the globe, elective surgeries have been postponed to limit infectious exposure and preserve hospital capacity for coronavirus disease 2019 (COVID-19). However, the ramp down in cardiac surgery volumes may result in unintended harm to patients who are at high risk of mortality if their conditions are left untreated. To help optimize triage decisions, we derived and ambispectively validated a clinical score to predict intensive care unit length of stay after cardiac surgery. Methods and Results Following ethics approval, we derived and performed multicenter valida tion of clinical models to predict the likelihood of short (≤2 days) and prolonged intensive care unit length of stay (≥7 days) in patients aged ≥18 years, who underwent coronary artery bypass grafting and/or aortic, mitral, and tricuspid value surgery in Ontario, Canada. Multivariable logistic regression with backward variable selection was used, along with clinical judgment, in the modeling process. For the model that predicted short intensive care unit stay, the c-statistic was 0.78 in the derivation cohort and 0.71 in the validation cohort. For the model that predicted prolonged stay, c-statistic was 0.85 in the derivation and 0.78 in the validation cohort. The models, together termed the , demonstrated a high degree of accuracy during prospective testing. Conclusions Clinical judgment alone has been shown to be inaccurate in predicting postoperative intensive care unit length of stay. The CardiOttawa LOS Score performed well in prospective validation and will complement the clinician's gestalt in making more efficient resource allocation during the COVID-19 period and beyond.
在全球范围内,已推迟择期手术以限制感染暴露并为 2019 年冠状病毒病(COVID-19)保留医院容量。然而,心脏手术量的减少可能会对那些如果不治疗就有高死亡率风险的患者造成意外伤害。为了帮助优化分诊决策,我们开发并前瞻性验证了一种临床评分,以预测心脏手术后重症监护病房(ICU)的住院时间。
在获得伦理批准后,我们在加拿大安大略省进行了多中心衍生和验证,以预测年龄≥18 岁的患者接受冠状动脉旁路移植术和/或主动脉、二尖瓣和三尖瓣手术的情况下,发生短(≤2 天)和长(≥7 天)ICU 住院时间的可能性。使用多变量逻辑回归进行建模,采用向后变量选择,并结合临床判断。对于预测 ICU 短期住院时间的模型,其推导队列中的 C 统计量为 0.78,验证队列中的 C 统计量为 0.71。对于预测 ICU 长期住院时间的模型,其推导队列中的 C 统计量为 0.85,验证队列中的 C 统计量为 0.78。这两个模型共同被称为“CardiOttawa LOS Score”,在前瞻性测试中表现出高度准确性。
单独的临床判断在预测术后 ICU 住院时间方面已经证明是不准确的。CardiOttawa LOS Score 在前瞻性验证中表现良好,并将在 COVID-19 期间和之后补充临床医生在更有效地分配资源方面的整体判断。