Department of Medicine, University of Calgary, Calgary, AB, Canada.
O'Brien Institute for Public Health, Cumming School of Medicine, University of Calgary, Calgary, AB, Canada.
BMC Nephrol. 2023 Mar 10;24(1):49. doi: 10.1186/s12882-023-03093-6.
People with kidney failure often require surgery and experience worse postoperative outcomes compared to the general population, but existing risk prediction tools have excluded those with kidney failure during development or exhibit poor performance. Our objective was to derive, internally validate, and estimate the clinical utility of risk prediction models for people with kidney failure undergoing non-cardiac surgery.
DESIGN, SETTING, PARTICIPANTS, AND MEASURES: This study involved derivation and internal validation of prognostic risk prediction models using a retrospective, population-based cohort. We identified adults from Alberta, Canada with pre-existing kidney failure (estimated glomerular filtration rate [eGFR] < 15 mL/min/1.73m or receipt of maintenance dialysis) undergoing non-cardiac surgery between 2005-2019. Three nested prognostic risk prediction models were assembled using clinical and logistical rationale. Model 1 included age, sex, dialysis modality, surgery type and setting. Model 2 added comorbidities, and Model 3 added preoperative hemoglobin and albumin. Death or major cardiac events (acute myocardial infarction or nonfatal ventricular arrhythmia) within 30 days after surgery were modelled using logistic regression models.
The development cohort included 38,541 surgeries, with 1,204 outcomes (after 3.1% of surgeries); 61% were performed in males, the median age was 64 years (interquartile range [IQR]: 53, 73), and 61% were receiving hemodialysis at the time of surgery. All three internally validated models performed well, with c-statistics ranging from 0.783 (95% Confidence Interval [CI]: 0.770, 0.797) for Model 1 to 0.818 (95%CI: 0.803, 0.826) for Model 3. Calibration slopes and intercepts were excellent for all models, though Models 2 and 3 demonstrated improvement in net reclassification. Decision curve analysis estimated that use of any model to guide perioperative interventions such as cardiac monitoring would result in potential net benefit over default strategies.
We developed and internally validated three novel models to predict major clinical events for people with kidney failure having surgery. Models including comorbidities and laboratory variables showed improved accuracy of risk stratification and provided the greatest potential net benefit for guiding perioperative decisions. Once externally validated, these models may inform perioperative shared decision making and risk-guided strategies for this population.
肾衰竭患者通常需要手术,并且与一般人群相比,术后结果更差,但现有的风险预测工具在开发过程中排除了肾衰竭患者,或者表现出较差的性能。我们的目标是为接受非心脏手术的肾衰竭患者开发、内部验证并估计风险预测模型的临床实用性。
设计、环境、参与者和措施:这项研究使用回顾性、基于人群的队列来开发和内部验证预后风险预测模型。我们从加拿大艾伯塔省确定了 2005 年至 2019 年期间患有预先存在的肾衰竭(估计肾小球滤过率[eGFR]<15 ml/min/1.73m 或接受维持性透析)并接受非心脏手术的成年人。使用临床和逻辑推理,组装了三个嵌套的预后风险预测模型。模型 1 包括年龄、性别、透析方式、手术类型和环境。模型 2 增加了合并症,模型 3 增加了术前血红蛋白和白蛋白。使用逻辑回归模型对术后 30 天内死亡或主要心脏事件(急性心肌梗死或非致命性室性心律失常)进行建模。
开发队列包括 38541 例手术,有 1204 例(在 3.1%的手术后)发生结果;61%的手术是男性进行的,中位年龄为 64 岁(四分位间距[IQR]:53,73),61%的患者在手术时接受血液透析。所有三个内部验证的模型表现良好,C 统计量范围从模型 1 的 0.783(95%置信区间[CI]:0.770,0.797)到模型 3 的 0.818(95%CI:0.803,0.826)。所有模型的校准斜率和截距都很好,尽管模型 2 和模型 3 显示出在重新分类方面的改进。决策曲线分析估计,使用任何模型来指导围手术期干预措施,如心脏监测,将比默认策略产生潜在的净收益。
我们开发并内部验证了三个新的模型,以预测接受手术的肾衰竭患者的主要临床事件。包括合并症和实验室变量的模型显示出风险分层准确性的提高,并为指导围手术期决策提供了最大的潜在净收益。一旦外部验证,这些模型可以为该人群提供围手术期的共同决策和风险导向策略。