Liu Lian, Yin Chengfen, Zhi Yongle, Gao Xinjing, Xu Lei
The Third Central Clinical College of Tianjin Medical University, Tianjin 300170, China.
Department of Intensive Care Unit, Tianjin Third Central Hospital, Tianjin 300170, China. Corresponding author: Xu Lei, Email:
Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2020 Feb;32(2):171-176. doi: 10.3760/cma.j.cn121430-20191015-00032.
To establish a model that can predict weaning failure from ventilation through hemodynamic and fluid balance parameters.
A retrospective analysis was conducted. The patients who underwent invasive mechanical ventilation for more than 24 hours and having spontaneous breathing test admitted to intensive care unit (ICU) of Tianjin Third Central Hospital from January 1st, 2017 to December 31st, 2018 were enrolled. The information was collected, which included the baseline data, hemodynamic parameters by pulse indicator continuous cardiac output (PiCCO) monitoring, B-type natriuretic peptide (BNP), urinary output, fluid balance in first 24 hours when patients admitted to ICU, and hemodynamic parameters by PiCCO monitoring, BNP, urinary output, fluid balance, diuretic usage, noradrenalin usage within 24 hours before weaning as well as usage of continuous renal replacement therapy (CRRT) during mechanical ventilation. According to weaning success or failure, the patients were divided into weaning success group and weaning failure group, and the statistical differences between the two groups were calculated. Variables with statistical significance within 24 hours before weaning were included in the multivariate Logistic regression analysis to establish weaning failure prediction model and find out the possible risk factors of weaning failure.
A total of 159 patients were included in this study, which included 138 patients in the weaning success group and 21 patients in the weaning failure group. There were no statistical differences in all hemodynamic parameters by PiCCO monitoring, BNP, urinary output, fluid balance within 24 hours into ICU between two groups. There were statistical differences in BNP (χ = 9.262, P = 0.026), central venous pressure (CVP; χ = 7.948, P = 0.047), maximum rate of the increase in pressure (dPmx; χ = 10.486, P = 0.015), urinary output (χ = 8.921, P = 0.030), fluid balance (χ = 9.172, P = 0.027) within 24 hours before weaning between two groups. In addition, variable about cardiac index (CI; χ = 7.789, P = 0.051) was included into multivariate Logistic regression model to improve the prediction model and enhance the accuracy of model. Finally, variables included in the multivariate Logistic regression model were BNP, CVP, CI, dPmx, urinary output, fluid balance volume, and the accuracy of the weaning failure prediction model was 92.9%, the sensitivity was 100%, and the specificity was 76.8%. When the model was adjusted by variables of age and noradrenalin usage, the accuracy of model to predict failure of weaning was 94.2%, the sensitivity was 100%, the specificity was 81.2%.
Weaning failure prediction model based on hemodynamic parameters by PiCCO monitoring and variables about liquid balance has high accuracy and can guide clinical weaning.
建立一种通过血流动力学和液体平衡参数预测机械通气撤机失败的模型。
进行回顾性分析。纳入2017年1月1日至2018年12月31日在天津市第三中心医院重症监护病房(ICU)接受有创机械通气超过24小时且进行了自主呼吸试验的患者。收集相关信息,包括基线数据、通过脉搏指示连续心输出量(PiCCO)监测的血流动力学参数、B型利钠肽(BNP)、尿量、患者入住ICU后最初24小时的液体平衡情况,以及撤机前24小时内通过PiCCO监测的血流动力学参数、BNP、尿量、液体平衡、利尿剂使用情况、去甲肾上腺素使用情况以及机械通气期间连续肾脏替代疗法(CRRT)的使用情况。根据撤机成功与否,将患者分为撤机成功组和撤机失败组,并计算两组之间的统计学差异。将撤机前24小时内具有统计学意义的变量纳入多因素Logistic回归分析,以建立撤机失败预测模型并找出撤机失败的可能危险因素。
本研究共纳入159例患者,其中撤机成功组138例,撤机失败组21例。两组患者入住ICU后24小时内通过PiCCO监测的所有血流动力学参数、BNP、尿量、液体平衡情况均无统计学差异。两组患者撤机前24小时内的BNP(χ = 9.262,P = 0.026)、中心静脉压(CVP;χ = 7.948,P = 0.047)、最大压力上升速率(dPmx;χ = 10.486,P = 0.015)、尿量(χ = 8.921,P = 0.030)、液体平衡(χ = 9.172,P = 0.027)存在统计学差异。此外,将心脏指数(CI;χ = 7.789,P = 0.051)变量纳入多因素Logistic回归模型以改进预测模型并提高模型准确性。最终,多因素Logistic回归模型纳入的变量为BNP、CVP、CI、dPmx、尿量、液体平衡量,撤机失败预测模型的准确性为92.9%,敏感性为100%,特异性为76.8%。当模型通过年龄和去甲肾上腺素使用变量进行调整后,预测撤机失败的模型准确性为94.2%,敏感性为100%,特异性为81.2%。
基于PiCCO监测的血流动力学参数和液体平衡变量建立的撤机失败预测模型具有较高准确性,可指导临床撤机。