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急性肾损伤后晚期慢性肾病预测模型的推导与外部验证

Derivation and External Validation of Prediction Models for Advanced Chronic Kidney Disease Following Acute Kidney Injury.

作者信息

James Matthew T, Pannu Neesh, Hemmelgarn Brenda R, Austin Peter C, Tan Zhi, McArthur Eric, Manns Braden J, Tonelli Marcello, Wald Ron, Quinn Robert R, Ravani Pietro, Garg Amit X

机构信息

Department of Medicine, Cumming School of Medicine, University of Calgary, Alberta, Canada.

Department of Community Health Sciences, Cumming School of Medicine, University of Calgary, Alberta, Canada.

出版信息

JAMA. 2017 Nov 14;318(18):1787-1797. doi: 10.1001/jama.2017.16326.

Abstract

IMPORTANCE

Some patients will develop chronic kidney disease after a hospitalization with acute kidney injury; however, no risk-prediction tools have been developed to identify high-risk patients requiring follow-up.

OBJECTIVE

To derive and validate predictive models for progression of acute kidney injury to advanced chronic kidney disease.

DESIGN, SETTING, AND PARTICIPANTS: Data from 2 population-based cohorts of patients with a prehospitalization estimated glomerular filtration rate (eGFR) of more than 45 mL/min/1.73 m2 and who had survived hospitalization with acute kidney injury (defined by a serum creatinine increase during hospitalization > 0.3 mg/dL or > 50% of their prehospitalization baseline), were used to derive and validate multivariable prediction models. The risk models were derived from 9973 patients hospitalized in Alberta, Canada (April 2004-March 2014, with follow-up to March 2015). The risk models were externally validated with data from a cohort of 2761 patients hospitalized in Ontario, Canada (June 2004-March 2012, with follow-up to March 2013).

EXPOSURES

Demographic, laboratory, and comorbidity variables measured prior to discharge.

MAIN OUTCOMES AND MEASURES

Advanced chronic kidney disease was defined by a sustained reduction in eGFR less than 30 mL/min/1.73 m2 for at least 3 months during the year after discharge. All participants were followed up for up to 1 year.

RESULTS

The participants (mean [SD] age, 66 [15] years in the derivation and internal validation cohorts and 69 [11] years in the external validation cohort; 40%-43% women per cohort) had a mean (SD) baseline serum creatinine level of 1.0 (0.2) mg/dL and more than 20% had stage 2 or 3 acute kidney injury. Advanced chronic kidney disease developed in 408 (2.7%) of 9973 patients in the derivation cohort and 62 (2.2%) of 2761 patients in the external validation cohort. In the derivation cohort, 6 variables were independently associated with the outcome: older age, female sex, higher baseline serum creatinine value, albuminuria, greater severity of acute kidney injury, and higher serum creatinine value at discharge. In the external validation cohort, a multivariable model including these 6 variables had a C statistic of 0.81 (95% CI, 0.75-0.86) and improved discrimination and reclassification compared with reduced models that included age, sex, and discharge serum creatinine value alone (integrated discrimination improvement, 2.6%; 95% CI, 1.1%-4.0%; categorical net reclassification index, 13.5%; 95% CI, 1.9%-25.1%) or included age, sex, and acute kidney injury stage alone (integrated discrimination improvement, 8.0%; 95% CI, 5.1%-11.0%; categorical net reclassification index, 79.9%; 95% CI, 60.9%-98.9%).

CONCLUSIONS AND RELEVANCE

A multivariable model using routine laboratory data was able to predict advanced chronic kidney disease following hospitalization with acute kidney injury. The utility of this model in clinical care requires further research.

摘要

重要性

一些患者在急性肾损伤住院后会发展为慢性肾病;然而,尚未开发出风险预测工具来识别需要随访的高危患者。

目的

推导并验证急性肾损伤进展为晚期慢性肾病的预测模型。

设计、设置和参与者:来自2个基于人群队列的数据,这些队列中的患者住院前估计肾小球滤过率(eGFR)超过45 mL/min/1.73 m²,且急性肾损伤住院存活(定义为住院期间血清肌酐升高>0.3 mg/dL或超过住院前基线的50%),用于推导和验证多变量预测模型。风险模型来自加拿大艾伯塔省9973例住院患者(2004年4月至2014年3月,随访至2015年3月)。风险模型通过来自加拿大安大略省2761例住院患者队列的数据进行外部验证(2004年6月至2012年3月,随访至2013年3月)。

暴露因素

出院前测量的人口统计学、实验室和合并症变量。

主要结局和测量指标

晚期慢性肾病定义为出院后一年内eGFR持续降低至低于30 mL/min/1.73 m²至少3个月。所有参与者随访长达1年。

结果

推导和内部验证队列中的参与者(平均[标准差]年龄,66[15]岁,外部验证队列中为69[11]岁;每个队列中40%-43%为女性)平均(标准差)基线血清肌酐水平为1.0(0.2)mg/dL,超过20%患有2期或3期急性肾损伤。推导队列中9973例患者中有408例(2.7%)发生晚期慢性肾病,外部验证队列中2761例患者中有62例(2.2%)发生。在推导队列中,6个变量与结局独立相关:年龄较大、女性、基线血清肌酐值较高、蛋白尿、急性肾损伤严重程度较高以及出院时血清肌酐值较高。在外部验证队列中,包含这6个变量的多变量模型的C统计量为0.81(95%CI,0.75-0.86),与仅包含年龄、性别和出院血清肌酐值的简化模型相比,其区分度和重新分类有所改善(综合区分度改善,2.6%;95%CI,1.1%-4.0%;分类净重新分类指数,13.5%;95%CI,1.9%-25.1%),或与仅包含年龄、性别和急性肾损伤分期的简化模型相比(综合区分度改善,8.0%;95%CI,5.1%-11.0%;分类净重新分类指数,79.9%;95%CI,60.9%-98.9%)。

结论和相关性

使用常规实验室数据的多变量模型能够预测急性肾损伤住院后的晚期慢性肾病。该模型在临床护理中的效用需要进一步研究。

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