Department of Cardiovascular Sciences, Unit for Clinical Research in Atherothrombosis, Centro Cardiologico Monzino IRCCS, University of Milan, Milan, Italy.
Ann Thorac Surg. 2012 Feb;93(2):584-91. doi: 10.1016/j.athoracsur.2011.09.073.
The development of acute kidney injury (AKI) after adult cardiac surgery is associated with increased morbidity and mortality. Our aim was to assess the risk factors for postoperative AKI and whether the addition of perioperative management variables can improve AKI prediction.
We studied 3,219 patients operated from January 2006 to December 2009. The AKI was defined as proposed by the Acute Kidney Injury Network. Patient preoperative characteristics, as well as intraoperative, cardiopulmonary bypass (CPB), and postoperative management variables, were evaluated for association with AKI with logistic regression analysis. The model including all variables was assessed first, then separate models including only preoperative variables followed by the sequential addition of intraoperative, CPB, and postoperative management variables were tested; receiver operating characteristic analysis was used to evaluate and compare models' discriminatory power.
The AKI occurred in 288 of 3,219 patients (8.9%). Logistic regression analysis identified 15 predictors of AKI; 4 were preoperative (age, diabetes, smoking, and serum creatinine), 4 intraoperative (inotropes, erythrocytes transfusion, cross-clamp time, and need of a new pump run), 2 CPB-related (urine output and furosemide administration during CPB), and 5 postoperative (erythrocytes transfusion, administration of vasoconstrictors, inotropes, diuretics, and antiarrhythmics). Model-discrimination performance improved from an area under the curve of 0.830 (95% confidence interval 0.807 to 0.854) for the model including only preoperative variables to an area under the curve of 0.904 (95% confidence interval 0.886 to 0.921) for the model including all variables (p<0.001).
Several factors influence AKI development after cardiac surgery and perioperative patient management significantly affects AKI occurrence. Predictive models can be sensibly improved by the addition of these variables.
成人心脏手术后发生急性肾损伤(AKI)与发病率和死亡率增加有关。我们的目的是评估术后 AKI 的危险因素,以及是否可以通过添加围手术期管理变量来改善 AKI 预测。
我们研究了 2006 年 1 月至 2009 年 12 月期间进行的 3219 例患者。AKI 的定义是根据急性肾损伤网络提出的。使用逻辑回归分析评估患者术前特征以及术中、体外循环(CPB)和术后管理变量与 AKI 的关系。首先评估包含所有变量的模型,然后分别评估仅包含术前变量的模型,接着是逐步添加术中、CPB 和术后管理变量的模型;使用接收者操作特征分析评估和比较模型的鉴别能力。
3219 例患者中发生 AKI 288 例(8.9%)。逻辑回归分析确定了 AKI 的 15 个预测因素;其中 4 个是术前因素(年龄、糖尿病、吸烟和血清肌酐),4 个是术中因素(正性肌力药、红细胞输注、体外循环夹闭时间和新泵运行需要),2 个是 CPB 相关因素(CPB 期间的尿量和呋塞米给药),5 个是术后因素(红细胞输注、血管收缩剂、正性肌力药、利尿剂和抗心律失常药)。仅包含术前变量的模型的曲线下面积从 0.830(95%置信区间 0.807 至 0.854)提高到包含所有变量的模型的曲线下面积 0.904(95%置信区间 0.886 至 0.921)(p<0.001)。
多个因素影响心脏手术后 AKI 的发生,围手术期患者管理显著影响 AKI 的发生。通过添加这些变量,可以合理地改进预测模型。