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Diagnosing hospital bacteraemia in the framework of predictive, preventive and personalised medicine using electronic health records and machine learning classifiers

dc.contributor.authorGarnica Alcázar, Antonio Óscar
dc.contributor.authorGómez, Diego
dc.contributor.authorRamos, Víctor
dc.contributor.authorHidalgo González, José Ignacio
dc.contributor.authorRuiz Giardín, José Manuel
dc.date.accessioned2023-06-16T14:19:52Z
dc.date.available2023-06-16T14:19:52Z
dc.date.issued2021-08-31
dc.descriptionCRUE-CSIC (Acuerdos Transformativos 2021)
dc.description.abstractBackground The bacteraemia prediction is relevant because sepsis is one of the most important causes of morbidity and mortality. Bacteraemia prognosis primarily depends on a rapid diagnosis. The bacteraemia prediction would shorten up to 6 days the diagnosis, and, in conjunction with individual patient variables, should be considered to start the early administration of personalised antibiotic treatment and medical services, the election of specific diagnostic techniques and the determination of additional treatments, such as surgery, that would prevent subsequent complications. Machine learning techniques could help physicians make these informed decisions by predicting bacteraemia using the data already available in electronic hospital records. Objective This study presents the application of machine learning techniques to these records to predict the blood culture’s outcome, which would reduce the lag in starting a personalised antibiotic treatment and the medical costs associated with erroneous treatments due to conservative assumptions about blood culture outcomes. Methods Six supervised classifiers were created using three machine learning techniques, Support Vector Machine, Random Forest and K-Nearest Neighbours, on the electronic health records of hospital patients. The best approach to handle missing data was chosen and, for each machine learning technique, two classification models were created: the first uses the features known at the time of blood extraction, whereas the second uses four extra features revealed during the blood culture. Results The six classifiers were trained and tested using a dataset of 4357 patients with 117 features per patient. The models obtain predictions that, for the best case, are up to a state-of-the-art accuracy of 85.9%, a sensitivity of 87.4% and an AUC of 0.93. Conclusions Our results provide cutting-edge metrics of interest in predictive medical models with values that exceed the medical practice threshold and previous results in the literature using classical modelling techniques in specific types of bacteraemia. Additionally, the consistency of results is reasserted because the three classifiers’ importance ranking shows similar features that coincide with those that physicians use in their manual heuristics. Therefore, the efficacy of these machine learning techniques confirms their viability to assist in the aims of predictive and personalised medicine once the disease presents bacteraemia-compatible symptoms and to assist in improving the healthcare economy.
dc.description.departmentDepto. de Arquitectura de Computadores y Automática
dc.description.facultyFac. de Informática
dc.description.refereedTRUE
dc.description.sponsorshipMinisterio de Ciencia, Innovación y Universidades (MCIU)
dc.description.sponsorshipComunidad de Madrid/FEDER
dc.description.sponsorshipFundacion Eugenio Rodríguez Pascual 2019
dc.description.statuspub
dc.eprint.idhttps://eprints.ucm.es/id/eprint/70440
dc.identifier.doi10.1007/s13167-021-00252-3
dc.identifier.issn1878-5077
dc.identifier.officialurlhttps://doi.org/10.1007/s13167-021-00252-3
dc.identifier.relatedurlhttps://link.springer.com/article/10.1007/s13167-021-00252-3
dc.identifier.urihttps://hdl.handle.net/20.500.14352/4708
dc.issue.number3
dc.journal.titleEPMA Journal
dc.language.isoeng
dc.page.final381
dc.page.initial365
dc.publisherSpringer Nature
dc.relation.projectIDRTI2018-095180-B-I00
dc.relation.projectIDGenObIA-CM (B2017/BMD3773) and Micro-Stress- MAP-CM (Y2018/NMT4668)
dc.rightsAtribución 3.0 España
dc.rights.accessRightsopen access
dc.rights.urihttps://creativecommons.org/licenses/by/3.0/es/
dc.subject.keywordPredictive
dc.subject.keywordPreventive and personalised medicine (PPPM/3PM)
dc.subject.keywordMachine learning
dc.subject.keywordModelling
dc.subject.keywordBacteraemia diagnosis
dc.subject.keywordBacteraemia prediction
dc.subject.keywordBlood culture’s outcome prediction
dc.subject.keywordIndividualised electronic patient record analysis
dc.subject.keywordPersonalised antibiotic treatment
dc.subject.keywordSupport vector machine
dc.subject.keywordRandom forest
dc.subject.keywordK-Nearest neighbours
dc.subject.keywordHealthcare economy
dc.subject.keywordHealth policy
dc.subject.keywordCOVID-19
dc.subject.ucmBioinformática
dc.subject.ucmEstadística
dc.subject.ucmInformática médica y telemedicina
dc.subject.unesco1209 Estadística
dc.titleDiagnosing hospital bacteraemia in the framework of predictive, preventive and personalised medicine using electronic health records and machine learning classifiers
dc.typejournal article
dc.volume.number12
dspace.entity.typePublication
relation.isAuthorOfPublication33d1dfc8-7bd7-4f4d-ac77-e9c369e8d82e
relation.isAuthorOfPublicatione3accd55-c194-4f24-8d42-556cb77f57cd
relation.isAuthorOfPublication.latestForDiscoverye3accd55-c194-4f24-8d42-556cb77f57cd

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