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Predicting Major Adverse Kidney Events among Critically Ill Adults Using the Electronic Health Record

机译:使用电子健康记录预测批判性成年人中的主要不良肾脏事件

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Prediction of major adverse kidney events in critically ill patients may help target therapy, allow risk adjustment, and facilitate the conduct of clinical trials. In a cohort comprised of all critically ill adults admitted to five intensive care units at a single tertiary care center over one year, we developed a logistic regression model for the outcome of Major Adverse Kidney Events within 30 days (MAKE30), the composite of persistent renal dysfunction, new renal replacement therapy (RRT), and in-hospital mortality. Proposed risk factors for the MAKE30 outcome were selected a priori and included age, race, gender, University Health System Consortium (UHC) expected mortality, baseline creatinine, volume of isotonic crystalloid fluid received in the prior 24 h, admission service, intensive care unit (ICU), source of admission, mechanical ventilation or receipt of vasopressors within 24 h of ICU admission, renal replacement therapy prior to ICU admission, acute kidney injury, chronic kidney disease as defined by baseline creatinine value, and renal failure as defined by the Elixhauser index. Among 10,983 patients in the study population, 1489 patients (13.6%) met the MAKE30 endpoint. The strongest independent predictors of MAKE30 were UHC expected mortality (OR 2.32 [95% CI 2.06-2.61]) and presence of acute kidney injury at ICU admission (OR 4.98 [95% CI 4.12-6.03]). The model had strong predictive properties including excellent discrimination with a bootstrap-corrected area-under-the-curve (AUC) of 0.903, and high precision of calibration with a mean absolute error prediction of 1.7%. The MAKE30 composite outcome can be reliably predicted from factors present within 24 h of ICU admission using data derived from the electronic health record.
机译:预测危重患者的主要不良肾脏事件可能有助于靶向治疗,允许风险调整,并促进临床试验的进行。在一年内由所有批判性的成年人组成的群组中,在一年多的三级护理中心录取了五个重症监护室,我们开发了一个持续不利肾脏事件的结果的逻辑回归模型(Make30),持久性综合肾功能障碍,新肾替代疗法(RRT)和住院死亡率。制作30个结果的提议危险因素被选为先验并包括年龄,种族,性别,大学卫生系统联盟(UHC)预期死亡率,基线肌酐,以前的24小时,入场服务,密集护理单位收到的等渗晶体流体。 (ICU),入院,机械通风或血管加压件的源代码源在ICU入院24小时内,肾置换疗法在ICU入院前,急性肾损伤,慢性肾疾病,如基线肌酐价值所定义,以及所定义的肾功能衰竭elixhauser指数。在研究人群的10,983名患者中,1489名患者(13.6%)达到了Make30终点。 Make30的最强独立预测因子是UHC预期死亡率(或2.32 [95%CI 2.06-2.61])和ICU入院的急性肾损伤(或4.98 [95%CI 4.12-6.03])。该模型具有强大的预测性质,包括具有0.903的卷取校正的区域下的引导校正的面积曲线(AUC)的良好辨别性,并且具有高精度的校准精度,其平均误差预测为1.7%。使用来自电子健康记录的数据,可以从ICU入院时间内的24小时内提高Make30复合结果。

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