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术后死亡术前风险模型(SAMPE模型)的推导与验证:一种护理分层方法

Derivation and validation of a preoperative risk model for postoperative mortality (SAMPE model): An approach to care stratification.

作者信息

Stefani Luciana Cadore, Gutierrez Claudia De Souza, Castro Stela Maris de Jezus, Zimmer Rafael Leal, Diehl Felipe Polgati, Meyer Leonardo Elman, Caumo Wolnei

机构信息

Department of Surgery, Universidade Federal do Rio Grande do Sul (UFRGS), Porto Alegre, RS, Brazil.

Anesthesia and Perioperative Medicine Service, Hospital de Clínicas de Porto Alegre (HCPA), Porto Alegre, RS, Brazil.

出版信息

PLoS One. 2017 Oct 30;12(10):e0187122. doi: 10.1371/journal.pone.0187122. eCollection 2017.

Abstract

Ascertaining which patients are at highest risk of poor postoperative outcomes could improve care and enhance safety. This study aimed to construct and validate a propensity index for 30-day postoperative mortality. A retrospective cohort study was conducted at Hospital de Clínicas de Porto Alegre, Brazil, over a period of 3 years. A dataset of 13524 patients was used to develop the model and another dataset of 7254 was used to validate it. The primary outcome was 30-day in-hospital mortality. Overall mortality in the development dataset was 2.31% [n = 311; 95% confidence interval: 2.06-2.56%]. Four variables were significantly associated with outcome: age, ASA class, nature of surgery (urgent/emergency vs elective), and surgical severity (major/intermediate/minor). The index with this set of variables to predict mortality in the validation sample (n = 7253) gave an AUROC = 0.9137, 85.2% sensitivity, and 81.7% specificity. This sensitivity cut-off yielded four classes of death probability: class I, <2%; class II, 2-5%; class III, 5-10%; class IV, >10%. Model application showed that, amongst patients in risk class IV, the odds of death were approximately fivefold higher (odds ratio 5.43, 95% confidence interval: 2.82-10.46) in those admitted to intensive care after a period on the regular ward than in those sent to the intensive care unit directly after surgery. The SAMPE (Anaesthesia and Perioperative Medicine Service) model accurately predicted 30-day postoperative mortality. This model allows identification of high-risk patients and could be used as a practical tool for care stratification and rational postoperative allocation of critical care resources.

摘要

确定哪些患者术后预后不良的风险最高,有助于改善护理并提高安全性。本研究旨在构建并验证一个用于预测术后30天死亡率的倾向指数。在巴西阿雷格里港临床医院进行了一项为期3年的回顾性队列研究。使用13524例患者的数据集来建立模型,另一个包含7254例患者的数据集用于验证该模型。主要结局为术后30天内的院内死亡率。在建立模型的数据集中,总体死亡率为2.31%[n = 311;95%置信区间:2.06 - 2.56%]。有四个变量与结局显著相关:年龄、美国麻醉医师协会(ASA)分级、手术性质(急诊/紧急手术与择期手术)以及手术严重程度(大手术/中等手术/小手术)。使用这组变量构建的指数在验证样本(n = 7253)中预测死亡率时,曲线下面积(AUROC)为0.9137,灵敏度为85.2%,特异度为81.7%。这个灵敏度截断值产生了四类死亡概率:I类,<2%;II类,2 - 5%;III类,5 - 10%;IV类,>10%。模型应用显示,在IV类风险患者中,在普通病房住院一段时间后转入重症监护病房的患者死亡几率比术后直接送入重症监护病房的患者高出约五倍(优势比5.43,95%置信区间:2.82 - 10.46)。SAMPE(麻醉与围手术期医学服务)模型准确预测了术后30天死亡率。该模型能够识别高危患者,可作为护理分层以及合理分配术后重症监护资源的实用工具。

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