Publication:
An empirical study on KDIGO-defined acute kidney injury prediction in the intensive care unit.

cris.virtualsource.author-orcida6a2b886-fba7-4e6b-ba25-70d0901bbf31
datacite.rightsopen.access
dc.contributor.authorLyu, Xinrui
dc.contributor.authorFan, Bowen
dc.contributor.authorHüser, Matthias
dc.contributor.authorHartout, Philip
dc.contributor.authorGumbsch, Thomas
dc.contributor.authorFaltys, Martin
dc.contributor.authorMerz, Tobias M
dc.contributor.authorRätsch, Gunnar
dc.contributor.authorBorgwardt, Karsten
dc.date.accessioned2024-10-26T18:23:13Z
dc.date.available2024-10-26T18:23:13Z
dc.date.issued2024-06-28
dc.description.abstractMOTIVATION Acute kidney injury (AKI) is a syndrome that affects a large fraction of all critically ill patients, and early diagnosis to receive adequate treatment is as imperative as it is challenging to make early. Consequently, machine learning approaches have been developed to predict AKI ahead of time. However, the prevalence of AKI is often underestimated in state-of-the-art approaches, as they rely on an AKI event annotation solely based on creatinine, ignoring urine output. UNLABELLED We construct and evaluate early warning systems for AKI in a multi-disciplinary ICU setting, using the complete KDIGO definition of AKI. We propose several variants of gradient-boosted decision tree (GBDT)-based models, including a novel time-stacking based approach. A state-of-the-art LSTM-based model previously proposed for AKI prediction is used as a comparison, which was not specifically evaluated in ICU settings yet. RESULTS We find that optimal performance is achieved by using GBDT with the time-based stacking technique (AUPRC = 65.7%, compared with the LSTM-based model's AUPRC = 62.6%), which is motivated by the high relevance of time since ICU admission for this task. Both models show mildly reduced performance in the limited training data setting, perform fairly across different subcohorts, and exhibit no issues in gender transfer. UNLABELLED Following the official KDIGO definition substantially increases the number of annotated AKI events. In our study GBDTs outperform LSTM models for AKI prediction. Generally, we find that both model types are robust in a variety of challenging settings arising for ICU data. AVAILABILITY AND IMPLEMENTATION The code to reproduce the findings of our manuscript can be found at: https://github.com/ratschlab/AKI-EWS.
dc.description.numberOfPages10
dc.description.sponsorshipUniversitätsklinik für Intensivmedizin
dc.identifier.doi10.48350/198296
dc.identifier.pmid38940165
dc.identifier.publisherDOI10.1093/bioinformatics/btae212
dc.identifier.urihttps://boris-portal.unibe.ch/handle/20.500.12422/178567
dc.language.isoen
dc.publisherOxford University Press
dc.relation.ispartofBioinformatics
dc.relation.issn1367-4811
dc.relation.organizationDCD5A442BADDE17DE0405C82790C4DE2
dc.subject.ddc600 - Technology::610 - Medicine & health
dc.titleAn empirical study on KDIGO-defined acute kidney injury prediction in the intensive care unit.
dc.typearticle
dspace.entity.typePublication
dspace.file.typetext
oaire.citation.endPagei256
oaire.citation.issueSuppl. 1
oaire.citation.startPagei247
oaire.citation.volume40
oairecerif.author.affiliationUniversitätsklinik für Intensivmedizin
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unibe.date.licenseChanged2024-06-28 15:09:16
unibe.description.ispublishedpub
unibe.eprints.legacyId198296
unibe.refereedtrue
unibe.subtype.articlejournal

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