Machine Learning Improves Upon Clinicians' Prediction of End Stage Kidney Disease

dc.contributor.authorChuah Aaron
dc.contributor.authorWalters Giles
dc.contributor.authorChristiadi Daniel
dc.contributor.authorKarpe Krishna
dc.contributor.authorKennard Alice
dc.contributor.authorSinger Richard
dc.contributor.authorTalaulikar Girish
dc.contributor.authorGe Wenbo
dc.contributor.authorSuominen Hanna
dc.contributor.authorAndrews T Daniel
dc.contributor.authorJiang Simon
dc.contributor.organizationfi=tietotekniikan laitos|en=Department of Computing|
dc.contributor.organization-code1.2.246.10.2458963.20.85312822902
dc.converis.publication-id175327468
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/175327468
dc.date.accessioned2022-10-28T13:12:29Z
dc.date.available2022-10-28T13:12:29Z
dc.description.abstract<p>Background and Objectives<br></p><p>Chronic kidney disease progression to ESKD is associated with a marked increase in mortality and morbidity. Its progression is highly variable and difficult to predict. <br></p><p>Methods<br></p><p>This is an observational, retrospective, single-centre study. The cohort was patients attending hospital and nephrology clinic at The Canberra Hospital from September 1996 to March 2018. Demographic data, vital signs, kidney function test, proteinuria, and serum glucose were extracted. The model was trained on the featurised time series data with XGBoost. Its performance was compared against six nephrologists and the Kidney Failure Risk Equation (KFRE). <br></p><p>Results<br></p><p>A total of 12,371 patients were included, with 2,388 were found to have an adequate density (three eGFR data points in the first 2 years) for subsequent analysis. Patients were divided into 80%/20% ratio for training and testing datasets.ML model had superior performance than nephrologist in predicting ESKD within 2 years with 93.9% accuracy, 60% sensitivity, 97.7% specificity, 75% positive predictive value. The ML model was superior in all performance metrics to the KFRE 4- and 8-variable models.eGFR and glucose were found to be highly contributing to the ESKD prediction performance. <br></p><p>Conclusions<br></p><p>The computational predictions had higher accuracy, specificity and positive predictive value, which indicates the potential integration into clinical workflows for decision support.</p>
dc.identifier.jour-issn2296-858X
dc.identifier.olddbid180480
dc.identifier.oldhandle10024/163574
dc.identifier.urihttps://www.utupub.fi/handle/11111/38509
dc.identifier.urlhttps://doi.org/10.3389/fmed.2022.837232
dc.identifier.urnURN:NBN:fi-fe2022081154485
dc.language.isoen
dc.okm.affiliatedauthorSuominen, Hanna
dc.okm.discipline113 Computer and information sciencesen_GB
dc.okm.discipline113 Tietojenkäsittely ja informaatiotieteetfi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisherFRONTIERS MEDIA SA
dc.publisher.countrySwitzerlanden_GB
dc.publisher.countrySveitsifi_FI
dc.publisher.country-codeCH
dc.relation.articlenumber837232
dc.relation.doi10.3389/fmed.2022.837232
dc.relation.ispartofjournalFrontiers in Medicine
dc.relation.volume9
dc.source.identifierhttps://www.utupub.fi/handle/10024/163574
dc.titleMachine Learning Improves Upon Clinicians' Prediction of End Stage Kidney Disease
dc.year.issued2022

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