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A prospective study of acute kidney injury in the intensive care unit: development and validation of a risk prediction model

机译:重症监护单位急性肾损伤的前瞻性研究:风险预测模型的发展与验证

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BACKGROUND:Acute kidney injury (AKI) has high morbidity and mortality in intensive care units (ICU). It can also lead to chronic kidney disease (CKD), more costs and longer hospital stay. Early identification of AKI is important.METHODS:We conducted this monocenter prospective observational study at West China Hospital, Sichuan University, China. We recorded information of each patient in the ICU within 24?h after admission and updated every two days. Patients who reached the primary outcome were accepted into the AKI group. Of all patients, we randomly drew 70% as the development cohort and the remaining 30% as the validation cohort. Using binary logistic regression we got a risk prediction model of the development cohort. In the validation cohort, we validated its discrimination by the area under the receiver operator curve (AUROC) and calibration by a calibration curve.RESULTS:There were 656 patients in the development cohorts and 280 in the validation cohort. Independent predictors of AKI in the risk prediction model including hypertension, chronic kidney disease, acute pancreatitis, cardiac failure, shock, pH?≤?7.30, CK??1000?U/L, hypoproteinemia, nephrotoxin exposure, and male. In the validation cohort, the AUROC is 0.783 (95% CI 0.730-0.836) and the calibration curve shows good calibration of this prediction model. The optimal cut-off value to distinguish high-risk and low-risk patients is 4.5 points (sensitivity is 78.4%, specificity is 73.2% and Youden's index is 0.516).CONCLUSIONS:This risk prediction model can help to identify high-risk patients of AKI in ICU to prevent the development of AKI and treat it at the early stages. Trial registration TCTR, TCTR20170531001. Registered 30 May 2017, http://www.clinicaltrials.in.th/index.php?tp=regtrials&menu=trialsearch&smenu=fulltext&task=search&task2=view1&id=2573.
机译:背景:急性肾损伤(AKI)在重症监护单位(ICU)中具有高发病率和死亡率。它还可以导致慢性肾病(CKD),更高的成本和住院时间更长。早期识别AKI是重要的。方法:我们在中国四川大学西部医院进行了这项单社会期前的观察研究。我们在入场后24℃的ICU中的每位患者的信息记录一次,每两天更新一次。达到主要结果的患者被接受到AKI组中。在所有患者中,我们随机吸引了70%的发展队列,剩下的30%作为验证队列。使用二元逻辑回归我们得到了开发队列的风险预测模型。在验证队列中,我们通过校准曲线校准了由接收器运营商曲线(AUROC)下的区域的歧视。结果:验证队列中有656名患者和280名患者。 AKI的独立预测因素在患有高血压,慢性肾病,急性胰腺炎,心衰竭,休克,pH?≤α.7.30,CK?> 1000?U / L,肾上腺素,肾毒素暴露,肾上腺血症,肾脏抑制症。在验证队列中,Auroc为0.783(95%CI 0.730-0.836),校准曲线显示出良好的该预测模型的校准。区分高风险和低风险患者的最佳截止值为4.5点(敏感性为78.4%,特异性为73.2%,Yeyden指数为0.516).Conclusions:这种风险预测模型可以帮助识别高危患者ICU中的AKI防止AKI的发展并在早期阶段对待它。试验登记TCTR,TCTR20170531001 2017年5月30日注册,http://www.clinicaltrials.in.th/index.php?TP=RegTrials&menu=TrialSearch&smenu=fulltext&Task=Search&Task2=View1&id=2573。

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