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Machine Learning Model for Risk Prediction of Community-Acquired Acute Kidney Injury Hospitalization From Electronic Health Records: Development and Validation Study

机译:电子卫生记录社区急性肾脏损伤住院风险预测机器学习模型:开发与验证研究

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摘要

BackgroundCommunity-acquired acute kidney injury (CA-AKI)-associated hospitalizations impose significant health care needs and contribute to in-hospital mortality. However, most risk prediction models developed to date have focused on AKI in a specific group of patients during hospitalization, and there is limited knowledge on the baseline risk in the general population for preventing CA-AKI-associated hospitalization. ObjectiveTo gain further insight into risk exploration, the aim of this study was to develop, validate, and establish a scoring system to facilitate health professionals in enabling early recognition and intervention of CA-AKI to prevent permanent kidney damage using different machine-learning techniques. MethodsA nested case-control study design was employed using electronic health records derived from a group of Chang Gung Memorial Hospitals in Taiwan from 2010 to 2017 to identify 234,867 adults with at least two measures of serum creatinine at hospital admission. Patients were classified into a derivation cohort (2010-2016) and a temporal validation cohort (2017). Patients with the first episode of CA-AKI at hospital admission were classified into the case group and those without CA-AKI were classified in the control group. A total of 47 potential candidate variables, including age, gender, prior use of nephrotoxic medications, Charlson comorbid conditions, commonly measured laboratory results, and recent use of health services, were tested to develop a CA-AKI hospitalization risk model. Permutation-based selection with both the extreme gradient boost (XGBoost) and least absolute shrinkage and selection operator (LASSO) algorithms was performed to determine the top 10 important features for scoring function development. ResultsThe discriminative ability of the risk model was assessed by the area under the receiver operating characteristic curve (AUC), and the predictive CA-AKI risk model derived by the logistic regression algorithm achieved an AUC of 0.767 (95% CI 0.764-0.770) on derivation and 0.761 on validation for any stage of AKI, with positive and negative predictive values of 19.2% and 96.1%, respectively. The risk model for prediction of CA-AKI stages 2 and 3 had an AUC value of 0.818 for the validation cohort with positive and negative predictive values of 13.3% and 98.4%, respectively. These metrics were evaluated at a cut-off value of 7.993, which was determined as the threshold to discriminate the risk of AKI. ConclusionsA machine learning–generated risk score model can identify patients at risk of developing CA-AKI-related hospitalization through a routine care data-driven approach. The validated multivariate risk assessment tool could help clinicians to stratify patients in primary care, and to provide monitoring and early intervention for preventing AKI while improving the quality of AKI care in the general population.
机译:背景广告所获得的急性肾脏损伤(CA-AKI) - 分配住院治疗致力于医疗保健需求,并有助于入院死亡率。然而,到目前为止发育的大多数风险预测模型都集中在住院期间特定患者中的AKI,并且了解预防CA-AKI相关住院的一般人群的基线风险有限。 ObjectiveTo进一步了解风险探索,本研究的目的是制定,验证,建立一个评分系统,以促进卫生专业人员在实现CA-AKI的早期认可和干预,以防止使用不同的机器学习技术的永久性肾脏损害。 Methods嵌套案例控制研究采用了来自2010年至2017年台湾一群张涌纪念医院的电子健康记录,识别234,867名成人,至少有两种患有医院入院的血清肌酐。患者被分为衍生队(2010-2016)和时间验证队(2017年)。患有医院入院的CA-AKI第一集的患者被分类为案例组,没有CA-AKI的患者在对照组中分类。共有47个潜在的候选变量,包括年龄,性别,肾毒性药物的年前使用,Charlson合并条件,通常测量的实验室结果以及最近使用卫生服务,以开发CA-AKI住院风险模型。通过极端梯度提升(XGBoost)和最低绝对收缩和选择运算符(套索)算法(套索)算法的置换选择以确定评分功能开发的前10个重要特征。通过接收器操作特征曲线(AUC)下的区域评估风险模型的判别能力,并且通过逻辑回归算法导出的预测性CA-AKI风险模型达到了0.767的AUC(95%CI 0.764-0.770)衍生和0.761关于AKI任何阶段的验证,积极和负面预测值分别为19.2%和96.1%。用于预测CA-AKI阶段2和3的风险模型对于验证队列的验证队列的AUC值分别为0.818,阳性和阴性预测值分别为13.3%和98.4%。在7993的截止值下评估这些指标,该值被确定为鉴别AKI风险的阈值。结论机器学习生成的风险评分模型可以通过常规护理数据驱动方法识别有可能开发CA-AKI相关住院的风险的患者。经过验证的多变量风险评估工具可以帮助临床医生在初级保健中分析患者,并提供监测和早期干预,以防止AKI,同时提高普通人口的症状症状的质量。

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