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开发并验证一种自动算法,以识别发生药物性急性肾损伤风险较高的患者。

Development and validation of an automated algorithm for identifying patients at higher risk for drug-induced acute kidney injury.

机构信息

Department of Pharmacotherapy, College of Pharmacy University of Utah, Salt Lake City, UT.

Department of Pharmacy, UF Health Shands Hospital, Gainesville, FL.

出版信息

Am J Health Syst Pharm. 2019 May 2;76(10):654-666. doi: 10.1093/ajhp/zxz043.

DOI:10.1093/ajhp/zxz043
PMID:31361856
Abstract

PURPOSE

Using information from institutional electronic health records, we aimed to develop dynamic predictive models to identify patients at high risk of acute kidney injury (AKI) among those who received a nephrotoxic medication during their hospital stay.

METHODS

Candidate predictors were measured for each of the first 5 hospital days where a patient received a nephrotoxic medication (risk model days) to predict an AKI, using logistic regression with reduced backward variables elimination in 100 bootstrap samples. An AKI event was defined as an increase of serum creatinine ≥ 200% of a baseline SCr within 5 days after a risk model day. Final models were internally validated by replication in 100 bootstrap samples and a risk score for each patient was calculated from the validated model. As performance measures, the area under the receiver operation characteristic curves (AUC) and the number of AKI events among patients who had high risk scores were estimated.

RESULTS

The study population included 62,561 admissions followed by 1,212 AKI events (1.9 events/100 admissions). We constructed 5 risk models corresponding to the first 5 hospital days where patients were exposed to at least one nephrotoxic medication. Validated AUCs of the 5 models ranged from 0.78 to 0.81. Depending on risk model day, admissions ranked in the 90th percentile of the risk score captured between 43% to 49% of all AKI events.

CONCLUSION

A dynamic prediction model was built successfully for inpatient AKI with excellent discriminative validity and good calibration, allowing clinicians to focus on a select high-risk population that captures the majority of AKI events.

摘要

目的

利用机构电子健康记录中的信息,我们旨在开发动态预测模型,以识别在住院期间接受肾毒性药物治疗的患者中发生急性肾损伤(AKI)的高危患者。

方法

对于每位患者接受肾毒性药物的前 5 个住院日内的每一天(风险模型日),我们使用逻辑回归并结合 100 个 bootstrap 样本的逐步向后变量消除方法,测量候选预测因子,以预测 AKI。AKI 事件定义为风险模型日后 5 天内血清肌酐(SCr)增加≥基线 SCr 的 200%。最终模型通过在 100 个 bootstrap 样本中进行复制进行内部验证,并从验证后的模型中计算每位患者的风险评分。作为性能指标,计算了接受者操作特征曲线下的面积(AUC)和高危评分患者中的 AKI 事件数量。

结果

研究人群包括 62561 次入院和 1212 次 AKI 事件(每 100 次入院发生 1.9 次 AKI)。我们构建了 5 个对应于患者至少接受一种肾毒性药物的前 5 个住院日的风险模型。5 个模型的验证 AUC 范围为 0.78 至 0.81。根据风险模型日,风险评分排名第 90 百分位数的入院患者捕获了所有 AKI 事件的 43%至 49%。

结论

成功建立了用于住院 AKI 的动态预测模型,具有出色的判别有效性和良好的校准度,使临床医生能够专注于捕捉大多数 AKI 事件的特定高危人群。

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