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Developing an ensemble machine learning model for early prediction of sepsis-associated acute kidney injury

Luming Zhang, Zichen Wang, Zhenyu Zhou, Shaojin Li, Tao Huang, Haiyan Yin, Jun Lyu

2022iScience43 citationsDOIOpen Access PDF

Abstract

Sepsis-associated acute kidney injury (S-AKI) is very common and early prediction is beneficial. This study aiming to develop an accurate ensemble model to predict the risk of S-AKI based on easily available clinical information. Patients with sepsis from the United States (US) database Medical Information Mart for Intensive Care-IV were used as a modeling cohort to predict the occurrence of AKI by combining Support Vector Machine, Random Forest, Neural Network, and Extreme Gradient Boost as four first-level learners via stacking algorithm. The external validation databases were the eICU Collaborative Research Database from US and Critical Care Database comprising infection patients at Zigong Fourth People's Hospital from China, whose AUROC values for the ensemble model 48-12 h before the onset of AKI were 0.774-0.788 and 0.756-0.813, respectively. In this study, an ensemble model for early prediction of S-AKI onset was developed and it demonstrated good performance in multicenter external datasets.

Topics & Concepts

Acute kidney injurySepsisRandom forestEnsemble forecastingMedicineIntensive care medicineEnsemble learningSupport vector machineCohortArtificial intelligenceComputer scienceMachine learningEmergency medicineInternal medicineSepsis Diagnosis and TreatmentAcute Kidney Injury ResearchCardiac Arrest and Resuscitation
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