RATIONALE & OBJECTIVE: Acute kidney injury (AKI) is diagnosed based on changes in serum creatinine concentration, a late marker of this syndrome. Algorithms that predict elevated risk for AKI are of great interest, but no studies have incorporated such an algorithm into the electronic health record to assist with clinical care. We describe the experience of implementing such an algorithm. STUDY DESIGN: Prospective observational cohort study. SETTING & PARTICIPANTS: 2,856 hospitalized adults in a single urban tertiary-care hospital with an algorithm-predicted risk for AKI in the next 24 hours>15%. Alerts were also used to target a convenience sample of 100 patients for measurement of 16 urine and 6 blood biomarkers. EXPOSURE: Clinical characteristics at the time of pre-AKI alert. OUTCOME: AKI within 24 hours of pre-AKI alert (AKI(24)). ANALYTICAL APPROACH: Descriptive statistics and univariable associations. RESULTS: At enrollment, mean predicted probability of AKI(24) was 19.1%; 18.9% of patients went on to develop AKI(24). Outcomes were generally poor among this population, with 29% inpatient mortality among those who developed AKI(24) and 14% among those who did not (P<0.001). Systolic blood pressure<100mm Hg (28% of patients with AKI(24) vs 18% without), heart rate>100 beats/min (32% of patients with AKI(24) vs 24% without), and oxygen saturation<92% (15% of patients with AKI(24) vs 6% without) were all more common among those who developed AKI(24). Of all biomarkers measured, only hyaline casts on urine microscopy (72% of patients with AKI(24) vs 25% without) and fractional excretion of urea nitrogen (20% [IQR, 12%-36%] among patients with AKI(24) vs 34% [IQR, 25%-44%] without) differed between those who did and did not develop AKI(24). LIMITATIONS: Single-center study, reliance on serum creatinine level for AKI diagnosis, small number of patients undergoing biomarker evaluation. CONCLUSIONS: A real-time AKI risk model was successfully integrated into the EHR.
Real-Time Prediction of Acute Kidney Injury in Hospitalized Adults: Implementation and Proof of Concept.
住院成人急性肾损伤的实时预测:实施和概念验证
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作者:Ugwuowo Ugochukwu, Yamamoto Yu, Arora Tanima, Saran Ishan, Partridge Caitlin, Biswas Aditya, Martin Melissa, Moledina Dennis G, Greenberg Jason H, Simonov Michael, Mansour Sherry G, Vela Ricardo, Testani Jeffrey M, Rao Veena, Rentfro Keith, Obeid Wassim, Parikh Chirag R, Wilson F Perry
| 期刊: | American Journal of Kidney Diseases | 影响因子: | 8.200 |
| 时间: | 2020 | 起止号: | 2020 Dec;76(6):806-814.e1 |
| doi: | 10.1053/j.ajkd.2020.05.003 | 研究方向: | 毒理研究 |
| 疾病类型: | 肾损伤 | ||
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