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

机译:术后死亡率的术前风险模型(SAMPE模型)的推导和验证:护理分层方法

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摘要

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.
机译:确定哪些患者术后不良后果的风险最高,可以改善护理并提高安全性。这项研究旨在构建和验证术后30天死亡率的倾向指数。一项为期三年的回顾性队列研究在巴西阿雷格里港的Clínicasde Porto进行。使用13524位患者的数据集开发模型,并使用7254位患者的另一数据集进行验证。主要结局为30天住院死亡率。发展数据集中的总死亡率为2.31%[n = 311; 95%置信区间:2.06-2.56%]。四个变量与结果显着相关:年龄,ASA等级,手术性质(紧急/紧急与选择性)和手术严重程度(大/中/小)。具有这组变量的指数可以预测验证样品中的死亡率(n = 7253),AUROC = 0.9137,灵敏度为85.2%,特异性为81.7%。这种敏感性的临界值产生了四类死亡概率:第一类,<2%;第二类,<2%。 II级,2–5%; III级,5-10%; IV级,> 10%。模型应用显示,在定期病房中接受了重症监护的患者中,IV级风险患者的死亡几率比那些在常规病房中接受了重症监护的患者高约五倍(几率5.43,95%置信区间:2.82-10.46)。手术后直接送到重症监护室。 SAMPE(麻醉和围手术期医学服务)模型可准确预测术后30天的死亡率。该模型可以识别高危患者,并且可以用作进行护理分层和合理分配术后关键护理资源的实用工具。

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