Development and Validation of a Personalized Model With Transfer Learning for Acute Kidney Injury Risk Estimation Using Electronic Health Records

被引:19
|
作者
Liu, Kang [1 ]
Zhang, Xiangzhou [1 ]
Chen, Weiqi [1 ]
Yu, Alan S. L. [3 ,4 ]
Kellum, John A. [5 ]
Matheny, Michael E. [6 ,7 ,8 ,9 ]
Simpson, Steven Q. [10 ]
Hu, Yong [1 ]
Liu, Mei [2 ]
机构
[1] Jinan Univ, Big Data Decis Inst, Guangzhou, Guangdong, Peoples R China
[2] Univ Kansas, Dept Internal Med, Div Med Informat, Med Ctr, 3901Rainbow Blvd, Kansas City, KS 66160 USA
[3] Univ Kansas, Sch Med, Med Ctr, Div Nephrol & Hypertens, Kansas City, KS 66160 USA
[4] Univ Kansas, Sch Med, Med Ctr, Jared Grantham Kidney Inst, Kansas City, KS 66160 USA
[5] Univ Pittsburgh, Dept Crit Care Med, Sch Med, Ctr Crit Care Nephrol, Pittsburgh, PA USA
[6] Vanderbilt Univ, Dept Biomed Informat, Sch Med, Nashville, TN USA
[7] Vanderbilt Univ, Dept Med, Sch Med, Nashville, TN USA
[8] Vanderbilt Univ, Dept Biostat, Sch Med, Nashville, TN USA
[9] Vet Affairs Tennessee Valley Healthcare Syst, Geriatr Res Educ & Clin Care Ctr, Nashville, TN USA
[10] Univ Kansas, Dept Internal Med, Med Ctr, Div Pulm Crit Care & Sleep Med, Kansas City, KS 66160 USA
基金
中国国家自然科学基金;
关键词
CARDIAC-SURGERY; PREDICTION MODEL; SERUM-CALCIUM; CARE; ADMISSION; AKI;
D O I
10.1001/jamanetworkopen.2022.19776
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IMPORTANCE Acute kidney injury (AKI) is a heterogeneous syndrome prevalent among hospitalized patients. Personalized risk estimation and risk factor identification may allow effective intervention and improved outcomes. OBJECTIVE To develop and validate personalized AKI risk estimation models using electronic health records (EHRs), examine whether personalized models were beneficial in comparison with global and subgroup models, and assess the heterogeneity of risk factors and their outcomes in different subpopulations. DESIGN, SETTING, AND PARTICIPANTS This diagnostic study analyzed EHR data from 1tertiary care hospital and used machine learning and logistic regression to develop and validate global, subgroup, and personalized risk estimation models. Transfer learning was implemented to enhance the personalized model. Predictor outcomes across subpopulations were analyzed, and metaregression was used to explore predictor interactions. Adults who were hospitalized for 2 or more days from November 1, 2007, to December 31, 2016, were included in the analysis. Patients with moderate or severe kidney dysfunction at admission were excluded. Data were analyzed between August 28, 2019, and May 8, 2022. EXPOSURES Clinical and laboratory variables in the EHR. MAIN OUTCOMES AND MEASURES The main outcome was AKI of any severity, and AKI was defined using the Kidney Disease: Improving Global Outcomes serum creatinine criteria. Performance of the models was measured with area under the receiver operating characteristic curve (AUROC), area under the precision-recall curve, and calibration. RESULTS The study cohort comprised 76 957 inpatient encounters. Patients had a mean (SD) age of 55.5 (17.4) years and included 42159 men (54.8%). The personalized model with transfer learning outperformed the global model for AKI estimation in terms of AUROC among general inpatients (0.78 [95% CI, 0.77-0.79] vs 0.76 [95% CI, 0.75-0.76]; P < .001) and across the high-risk subgroups (0.79 [95% CI, 0.78-0.80] vs 0.75 [95% CI, 0.74-0.77]; P < .001) and low-risk subgroups (0.74 [95% CI, 0.73-0.75] vs 0.71 [95% CI, 0.70-0.72]; P < .001). The AUROC improvement reached 0.13 for the high-risk subgroups, such as those undergoing liver transplant and cardiac surgery. Moreover, the personalized model with transfer learning performed better than or comparably with the best published models in well-studied AKI subgroups. Predictor outcomes varied significantly between patients, and interaction analysis uncovered modifiers of the predictor outcomes. CONCLUSIONS AND RELEVANCE Results of this study demonstrated that a personalized modeling with transfer learning is an improved AKI risk estimation approach that can be used across diverse patient subgroups. Risk factor heterogeneity and interactions at the individual level highlighted the need for agile, personalized care.
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页数:20
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