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dc.contributor.authorRockenschaub, Patrick
dc.contributor.authorGill, Martin J
dc.contributor.authorMcNulty, Dave
dc.contributor.authorCarroll, Orlagh
dc.contributor.authorFreemantle, Nick
dc.contributor.authorShallcross, Laura
dc.date.accessioned2023-10-27T10:06:51Z
dc.date.available2023-10-27T10:06:51Z
dc.date.issued2023-06-13
dc.identifier.citationRockenschaub P, Gill MJ, McNulty D, Carroll O, Freemantle N, Shallcross L. Can the application of machine learning to electronic health records guide antibiotic prescribing decisions for suspected urinary tract infection in the Emergency Department? PLOS Digit Health. 2023 Jun 13;2(6):e0000261. doi: 10.1371/journal.pdig.0000261. PMID: 37310941; PMCID: PMC10263340.en_US
dc.identifier.eissn2767-3170
dc.identifier.doi10.1371/journal.pdig.0000261
dc.identifier.pmid37310941
dc.identifier.urihttp://hdl.handle.net/20.500.14200/2712
dc.description.abstractUrinary tract infections (UTIs) are a major cause of emergency hospital admissions, but it remains challenging to diagnose them reliably. Application of machine learning (ML) to routine patient data could support clinical decision-making. We developed a ML model predicting bacteriuria in the ED and evaluated its performance in key patient groups to determine scope for its future use to improve UTI diagnosis and thus guide antibiotic prescribing decisions in clinical practice. We used retrospective electronic health records from a large UK hospital (2011-2019). Non-pregnant adults who attended the ED and had a urine sample cultured were eligible for inclusion. The primary outcome was predominant bacterial growth ≥104 cfu/mL in urine. Predictors included demography, medical history, ED diagnoses, blood tests, and urine flow cytometry. Linear and tree-based models were trained via repeated cross-validation, re-calibrated, and validated on data from 2018/19. Changes in performance were investigated by age, sex, ethnicity, and suspected ED diagnosis, and compared to clinical judgement. Among 12,680 included samples, 4,677 (36.9%) showed bacterial growth. Relying primarily on flow cytometry parameters, our best model achieved an area under the ROC curve (AUC) of 0.813 (95% CI 0.792-0.834) in the test data, and achieved both higher sensitivity and specificity compared to proxies of clinician's judgement. Performance remained stable for white and non-white patients but was lower during a period of laboratory procedure change in 2015, in patients ≥65 years (AUC 0.783, 95% CI 0.752-0.815), and in men (AUC 0.758, 95% CI 0.717-0.798). Performance was also slightly reduced in patients with recorded suspicion of UTI (AUC 0.797, 95% CI 0.765-0.828). Our results suggest scope for use of ML to inform antibiotic prescribing decisions by improving diagnosis of suspected UTI in the ED, but performance varied with patient characteristics. Clinical utility of predictive models for UTI is therefore likely to differ for important patient subgroups including women <65 years, women ≥65 years, and men. Tailored models and decision thresholds may be required that account for differences in achievable performance, background incidence, and risks of infectious complications in these groups.en_US
dc.language.isoenen_US
dc.publisherPublic Library of Scienceen_US
dc.relation.urlhttps://journals.plos.org/digitalhealth/en_US
dc.rightsCopyright: © 2023 Rockenschaub et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
dc.subjectEmergency medicineen_US
dc.subjectHealth services. Managementen_US
dc.titleCan the application of machine learning to electronic health records guide antibiotic prescribing decisions for suspected urinary tract infection in the Emergency Department?en_US
dc.typeArticle
dc.source.journaltitlePLOS Digital Health
dc.source.volume2
dc.source.issue6
dc.source.beginpagee0000261
dc.source.endpage
dc.source.countryUnited States
rioxxterms.versionNAen_US
dc.contributor.trustauthorGill, Martin J
dc.contributor.trustauthorMcNulty, Dave
dc.contributor.departmentClinical Microbiologyen_US
dc.contributor.departmentResearch & Developmenten_US
dc.contributor.roleAdditional Professional Scientific and Technical Fielden_US
dc.contributor.roleMedical and Dentalen_US
oa.grant.openaccessnaen_US


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