Predicting outcomes of acute kidney injury in critically ill patients using machine learning.

Sci Rep

KU Leuven, Campus KULAK - Department of Public Health and Primary Care, Etienne Sabbelaan 53, 8500, Kortrijk, Belgium.

Published: June 2023

AI Article Synopsis

  • Acute Kidney Injury (AKI) is a rapid decline in kidney function commonly found in critically ill patients, and has strong links to chronic kidney disease (CKD) and increased mortality.
  • Machine learning models were created using patient data to predict outcomes after severe AKI (stage 3), focusing on the likelihood of developing CKD within three to six months and assessing mortality risks with advanced algorithms like random forests and XGBoost.
  • The study included 101 patients, and results indicated that the machine learning models outperformed traditional predictive methods, suggesting they could improve clinical decision-making for AKI patients by identifying those at higher risk for CKD and mortality, especially when supplemented with unlabeled data.

Article Abstract

Acute Kidney Injury (AKI) is a sudden episode of kidney failure that is frequently seen in critically ill patients. AKI has been linked to chronic kidney disease (CKD) and mortality. We developed machine learning-based prediction models to predict outcomes following AKI stage 3 events in the intensive care unit. We conducted a prospective observational study that used the medical records of ICU patients diagnosed with AKI stage 3. A random forest algorithm was used to develop two models that can predict patients who will progress to CKD after three and six months of experiencing AKI stage 3. To predict mortality, two survival prediction models have been presented using random survival forests and survival XGBoost. We evaluated established CKD prediction models using AUCROC, and AUPR curves and compared them with the baseline logistic regression models. The mortality prediction models were evaluated with an external test set, and the C-indices were compared to baseline COXPH. We included 101 critically ill patients who experienced AKI stage 3. To increase the training set for the mortality prediction task, an unlabeled dataset has been added. The RF (AUPR: 0.895 and 0.848) and XGBoost (c-index: 0.8248) models have a better performance than the baseline models in predicting CKD and mortality, respectively Machine learning-based models can assist clinicians in making clinical decisions regarding critically ill patients with severe AKI who are likely to develop CKD following discharge. Additionally, we have shown better performance when unlabeled data are incorporated into the survival analysis task.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10277277PMC
http://dx.doi.org/10.1038/s41598-023-36782-1DOI Listing

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