AUTHOR=Wainstein Marina , Flanagan Emily , Johnson David W. , Shrapnel Sally TITLE=Systematic review of externally validated machine learning models for predicting acute kidney injury in general hospital patients JOURNAL=Frontiers in Nephrology VOLUME=3 YEAR=2023 URL=https://www.frontiersin.org/journals/nephrology/articles/10.3389/fneph.2023.1220214 DOI=10.3389/fneph.2023.1220214 ISSN=2813-0626 ABSTRACT=

Acute kidney injury (AKI) is one of the most common and consequential complications among hospitalized patients. Timely AKI risk prediction may allow simple interventions that can minimize or avoid the harm associated with its development. Given the multifactorial and complex etiology of AKI, machine learning (ML) models may be best placed to process the available health data to generate accurate and timely predictions. Accordingly, we searched the literature for externally validated ML models developed from general hospital populations using the current definition of AKI. Of 889 studies screened, only three were retrieved that fit these criteria. While most models performed well and had a sound methodological approach, the main concerns relate to their development and validation in populations with limited diversity, comparable digital ecosystems, use of a vast number of predictor variables and over-reliance on an easily accessible biomarker of kidney injury. These are potentially critical limitations to their applicability in diverse socioeconomic and cultural settings, prompting a need for simpler, more transportable prediction models which can offer a competitive advantage over the current tools used to predict and diagnose AKI.