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[脓毒症患者血压指标与预后的相关性:一项基于MIMIC-III数据库的队列研究]

[Correlation between blood pressure indexes and prognosis in sepsis patients: a cohort study based on MIMIC-III database].

作者信息

Liu Xiaobin, Zhao Yu, Qin Yingyi, Ma Qimin, Wang Yusong, Weng Zuquan, Zhu Feng

机构信息

Department of Burns, Changhai Hospital of Naval Medical University, Shanghai 200433, China.

College of Computer and Data Science of Fuzhou University, Fuzhou 350025, Fujian, China.

出版信息

Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2023 Jun;35(6):578-585. doi: 10.3760/cma.j.cn121430-20220830-00799.

Abstract

OBJECTIVE

To investigate the correlation between early-stage blood pressure indexes and prognosis in sepsis patients.

METHODS

A retrospective cohort study was conducted on the medical records of patients diagnosed with sepsis from 2001 to 2012 in the Medical Information Mart for Intensive Care-III (MIMIC-III) database. Patients were divided into survival group and death group according to the 28-day prognosis. General data of patients and heart rate (HR) and blood pressure at admission to ICU and within 24 hours after admission were collected. The blood pressure indexes including the maximum, median and mean value of systolic index, diastolic index and mean arterial pressure (MAP) index were calculated. The data were randomly divided into training set and validation set (4 : 1). Univariate Logistic regression analysis was used to screen covariates, and multivariate Logistic stepwise regression models were further developed. Model 1 (including HR, blood pressure, and blood pressure index related variables with P < 0.1 and other variables with P < 0.05) and Model 2 (including HR, blood pressure, and blood pressure index related variables with P < 0.1) were developed respectively. The receiver operator characteristic curve (ROC curve), precision recall curve (PRC) and decision curve analysis (DCA) curve were used to evaluate the quality of the two models, and the influencing factors of the prognosis of sepsis patients were analyzed. Finally, nomogram model was developed according to the better model and effectiveness of it was evaluated.

RESULTS

A total of 11 559 sepsis patients were included in the study, with 10 012 patients in the survival group and 1 547 patients in the death group. There were significant differences in age, survival time, Elixhauser comorbidity score and other 46 variables between the two groups (all P < 0.05). Thirty-seven variables were preliminarily screened by univariate Logistic regression analysis. After multivariate Logistic stepwise regression model screening, among the indicators related to HR, blood pressure and blood pressure index, the HR at admission to ICU [odds ratio (OR) = 0.992, 95% confidence interval (95%CI) was 0.988-0.997] and the maximum HR (OR = 1.006, 95%CI was 1.001-1.011), maximum MAP index (OR = 1.620, 95%CI was 1.244-2.126), mean diastolic index (OR = 0.283, 95%CI was 0.091-0.856), median systolic index (OR = 2.149, 95%CI was 0.805-4.461), median diastolic index (OR = 3.986, 95%CI was 1.376-11.758) were selected (all P < 0.1). There were 14 other variables with P < 0.05, including age, Elixhauser comorbidity score, continuous renal replacement therapy (CRRT), use of ventilator, sedation and analgesia, norepinephrine, norepinephrine, highest serum creatinine (SCr), maximum blood urea nitrogen (BUN), highest prothrombin time (PT), highest activated partial thromboplastin time (APTT), lowest platelet count (PLT), highest white blood cell count (WBC), minimum hemoglobin (Hb). The ROC curve showed that the area under the curve (AUC) of Model 1 and Model 2 were 0.769 and 0.637, respectively, indicating that model 1 had higher prediction accuracy. The PRC curve showed that the AUC of Model 1 and Model 2 were 0.381 and 0.240, respectively, indicating that Model 1 had a better effect. The DCA curve showed that when the threshold was 0-0.8 (the probability of death was 0-80%), the net benefit rate of Model 1 was higher than that of Model 2. The calibration curve showed that the prediction effect of the nomogram model developed according to Model 1 was in good agreement with the actual outcome. The Bootstrap verification results showed that the nomogram model was consistent with the above results and had good prediction effects.

CONCLUSIONS

The nomogram model constructed has good prediction effects on the 28-day prognosis in sepsis patients, and the blood pressure indexes are important predictors in the model.

摘要

目的

探讨脓毒症患者早期血压指标与预后的相关性。

方法

对重症监护医学信息数据库三期(MIMIC-III)中2001年至2012年诊断为脓毒症的患者病历进行回顾性队列研究。根据28天预后将患者分为生存组和死亡组。收集患者的一般资料以及入住重症监护病房(ICU)时和入住后24小时内的心率(HR)和血压。计算血压指标,包括收缩压指标、舒张压指标和平均动脉压(MAP)指标的最大值、中位数和平均值。数据随机分为训练集和验证集(4∶1)。采用单因素Logistic回归分析筛选协变量,并进一步建立多因素Logistic逐步回归模型。分别建立模型1(包括HR、血压以及P<0.1的血压指标相关变量和P<0.05的其他变量)和模型2(包括HR、血压以及P<0.1的血压指标相关变量)。采用受试者工作特征曲线(ROC曲线)、精确召回率曲线(PRC)和决策曲线分析(DCA)曲线评估两个模型的质量,并分析脓毒症患者预后的影响因素。最后,根据较好的模型建立列线图模型并评估其有效性。

结果

本研究共纳入11559例脓毒症患者,其中生存组10012例,死亡组1547例。两组患者在年龄、生存时间、埃利克斯豪泽合并症评分等46个变量上存在显著差异(均P<0.05)。通过单因素Logistic回归分析初步筛选出37个变量。经过多因素Logistic逐步回归模型筛选,在与HR、血压和血压指标相关的指标中,入住ICU时的HR[比值比(OR)=0.992,95%置信区间(95%CI)为0.988-0.997]、最高HR(OR=1.006,95%CI为1.001-1.011)、最高MAP指标(OR=1.620,95%CI为1.244-2.1x26)、平均舒张压指标(OR=0.283,95%CI为0.091-0.856)、中位数收缩压指标(OR=2.149,95%CI为0.805-4.461)、中位数舒张压指标(OR=3.986,95%CI为1.376-11.758)被纳入(均P<0.1)。另外有14个P<0.05的变量,包括年龄、埃利克斯豪泽合并症评分、持续肾脏替代治疗(CRRT)、使用呼吸机、镇静和镇痛、去甲肾上腺素、最高血清肌酐(SCr)、最高血尿素氮(BUN)、最高凝血酶原时间(PT)、最高活化部分凝血活酶时间(APTT)、最低血小板计数(PLT)、最高白细胞计数(WBC)、最低血红蛋白(Hb)。ROC曲线显示,模型1和模型2的曲线下面积(AUC)分别为0.769和0.637,表明模型1具有更高的预测准确性。PRC曲线显示,模型1和模型2的AUC分别为0.381和0.240,表明模型1效果更好。DCA曲线显示,当阈值为0-0.8(死亡概率为0-80%)时,模型1的净获益率高于模型2。校准曲线显示,根据模型1建立的列线图模型的预测效果与实际结果吻合良好。Bootstrap验证结果显示,列线图模型与上述结果一致,具有良好的预测效果。

结论

构建的列线图模型对脓毒症患者28天预后具有良好的预测效果,血压指标是该模型中的重要预测因素。

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