Department of Cardiovascular Surgery, Intensive Care Unit, Affiliated Hospital of Nantong University, No.20, Xi Si Road, Chongchuan District, Nantong City, Jiangsu Province, China.
Affiliated Nantong Hospital of Shanghai University, No. 881, Yonghe Road, Chongchuan District, Nantong City, Jiangsu Province, China.
Eur J Cardiovasc Nurs. 2023 Sep 5;22(6):594-601. doi: 10.1093/eurjcn/zvac076.
This study aimed to develop a nomogram model for predicting prolonged mechanical ventilation (PMV) in patients undergoing cardiovascular surgery.
In total, 693 patients undergoing cardiovascular surgery at an Affiliated Hospital of Nantong University between January 2018 and June 2020 were studied. Postoperative PMV was required in 147 patients (21.2%). Logistic regression analysis showed that delirium [odds ratio (OR), 3.063; 95% confidence interval (CI), 1.991-4.713; P < 0.001], intraoperative blood transfusion (OR, 2.489; 95% CI, 1.565-3.960; P < 0.001), obesity (OR, 2.789; 95% CI, 1.543-5.040; P = 0.001), postoperative serum creatinine level (mmol/L; OR, 1.012; 95% CI, 1.007-1.017; P < 0.001), postoperative serum albumin level (g/L; OR, 0.937; 95% CI, 0.902-0.973; P = 0.001), and postoperative total bilirubin level (μmol/L; OR, 1.020; 95% CI, 1.005-1.034; P = 0.008) were independent risk factors for PMV. The area under the receiver operating characteristic curve for our nomogram was found to be 0.770 (95% CI, 0.727-0.813). The goodness-of-fit test indicated that the model fitted the data well (χ2 = 12.480, P = 0.131). After the model was internally validated, the calibration plot demonstrated good performance of the nomogram, as supported by the Harrell concordance index of 0.760. Decision curve analysis demonstrated that the nomogram was clinically useful in identifying patients at risk for PMV.
We established a new nomogram model that may provide an individual prediction of PMV. This model may provide nurses, social workers, physicians, and administrators with an accurate and objective assessment tool to identify patients at high risk for PMV after cardiovascular surgery.
本研究旨在为接受心血管手术的患者建立预测长时间机械通气(PMV)的列线图模型。
研究共纳入南通大学附属医院 2018 年 1 月至 2020 年 6 月期间 693 例行心血管手术的患者,其中术后需行 PMV 的患者有 147 例(21.2%)。多因素 logistic 回归分析显示,谵妄(OR,3.063;95%CI,1.991-4.713;P<0.001)、术中输血(OR,2.489;95%CI,1.565-3.960;P<0.001)、肥胖(OR,2.789;95%CI,1.543-5.040;P=0.001)、术后血肌酐水平(mmol/L;OR,1.012;95%CI,1.007-1.017;P<0.001)、术后血清白蛋白水平(g/L;OR,0.937;95%CI,0.902-0.973;P=0.001)和术后总胆红素水平(μmol/L;OR,1.020;95%CI,1.005-1.034;P=0.008)是 PMV 的独立危险因素。列线图的受试者工作特征曲线下面积为 0.770(95%CI,0.727-0.813)。拟合优度检验表明该模型拟合数据良好(χ2=12.480,P=0.131)。模型内部验证后,校准图表明列线图性能良好,哈雷一致性指数为 0.760。决策曲线分析表明,该列线图可用于识别心血管手术后发生 PMV 的高危患者,具有临床应用价值。
本研究建立了一种新的列线图模型,可对 PMV 进行个体化预测。该模型可为护士、社会工作者、医生和管理人员提供一种准确、客观的评估工具,用于识别心血管手术后发生 PMV 的高危患者。