Maintenance Notice

Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.

Who will be affected?

Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Sep 5, 2020
Date Accepted: Mar 15, 2021

The final, peer-reviewed published version of this preprint can be found here:

Real-Time Clinical Decision Support Based on Recurrent Neural Networks for In-Hospital Acute Kidney Injury: External Validation and Model Interpretation

Kim K, Yang H, Go S, Son HE, Ryu JY, Yi Y, Kim YC, Jeong JC, Chin HJ, Na KY, Chae DW, Kim S

Real-Time Clinical Decision Support Based on Recurrent Neural Networks for In-Hospital Acute Kidney Injury: External Validation and Model Interpretation

J Med Internet Res 2021;23(4):e24120

DOI: 10.2196/24120

PMID: 33861200

PMCID: 8087972

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Real-time clinical decision supports the prediction and management of in-hospital acute kidney injury with recurrent neural networks

  • Kipyo Kim; 
  • Hyeonsik Yang; 
  • Suryeong Go; 
  • Hyung-Eun Son; 
  • Ji-Young Ryu; 
  • Yongjin Yi; 
  • Yong Chul Kim; 
  • Jong Cheol Jeong; 
  • Ho Jun Chin; 
  • Ki Young Na; 
  • Dong-Wan Chae; 
  • Sejoong Kim

ABSTRACT

Background:

Acute kidney injury(AKI) is commonly encountered in clinical practice and associated with poor patient outcomes and increased healthcare costs. AKI poses significant challenges for clinicians but effective measures for the prediction and prevention of AKI are lacking. Previously published AKI prediction models mostly have simple design without external validation. Furthermore, little is known about how to link the model output and clinical decision supports due to the blackbox nature of the neural network models.

Objective:

We aimed to present an externally validated recurrent neural network (RNN)-based prediction model for in-hospital AKI, and to show the explainability of the model in relation to clinical decision support.

Methods:

Study populations were all patients aged ≥ 18 years and hospitalized more than a week from 2013 to 2017 in two tertiary hospitals in Korea (Seoul National University Bundang Hospital and Seoul National University Hospital). All demographics, laboratory values, vital signs, and clinical conditions were obtained from the EHR of each hospital. A total of 102 variables included in the model. Each variable falls into two categories: static and dynamic variables. We developed two-stage hierarchical prediction models (model 1 and model 2) using RNN algorithms. The outcome variable for Model 1 was the occurrence of AKI within 7 days from the present. Model 2 predicts the future trajectory of Cr values up to 72 hours. Internal validation was performed by 5-fold cross validation using the training set, and then external validation was done using independent test set.

Results:

Of a total of 118,893 patients initially screened, after excluding cases with missing data and estimated glomerular filtration rate <15 ml/min/1.73m2 or end-stage kidney disease, 40,552 patients in training cohort and 4,084 in external validation cohort (test cohort) were used for model development. Model 1 with the observation window of 3 days predicts AKI development with the area under the curve of 0.80 (sensitivity 0.72, specificity 0.89) in external validation. The model 2 predicted the future creatinine values within 3 days with the mean square errors of 0.04-0.06 for patients with higher risks of AKI and 0.05-0.12 for those with lower risks. On the basis of the developed models, we showed the probability of AKI according to the feature values in total patients and each individual with partial dependence plots and individual conditional expectation plots. In addition, we estimated the effects of feature modifications such as nephrotoxic drug discontinuation on the future creatinine levels.

Conclusions:

We developed and externally validated a real-time AKI prediction model using RNN algorithms. Our model could provide real-time assessment of future AKI occurrences and individualized risk factors for AKI in general inpatient cohorts. These suggest approaches to support clinical decisions based on the prediction models for in-hospital AKI.


 Citation

Please cite as:

Kim K, Yang H, Go S, Son HE, Ryu JY, Yi Y, Kim YC, Jeong JC, Chin HJ, Na KY, Chae DW, Kim S

Real-Time Clinical Decision Support Based on Recurrent Neural Networks for In-Hospital Acute Kidney Injury: External Validation and Model Interpretation

J Med Internet Res 2021;23(4):e24120

DOI: 10.2196/24120

PMID: 33861200

PMCID: 8087972

Download PDF


Request queued. Please wait while the file is being generated. It may take some time.

© The authors. All rights reserved. This is a privileged document currently under peer-review/community review (or an accepted/rejected manuscript). Authors have provided JMIR Publications with an exclusive license to publish this preprint on it's website for review and ahead-of-print citation purposes only. While the final peer-reviewed paper may be licensed under a cc-by license on publication, at this stage authors and publisher expressively prohibit redistribution of this draft paper other than for review purposes.