Please use this identifier to cite or link to this item: https://hdl.handle.net/2445/177092
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dc.contributor.authorDimopoulos, Alexandros C.-
dc.contributor.authorNikolaidou, Mara-
dc.contributor.authorCaballero, Francisco Félix-
dc.contributor.authorEngchuan, Worrawat-
dc.contributor.authorSánchez Niubò, Albert-
dc.contributor.authorArndt, Holger-
dc.contributor.authorAyuso Mateos, José Luis-
dc.contributor.authorHaro Abad, Josep Maria-
dc.contributor.authorChatterji, Somnath-
dc.contributor.authorGeorgousopoulou, Ekavi N.-
dc.contributor.authorPitsavos, Christos-
dc.contributor.authorPanagiotakos, Demosthenes B.-
dc.date.accessioned2021-05-06T21:07:23Z-
dc.date.available2021-05-06T21:07:23Z-
dc.date.issued2018-12-29-
dc.identifier.issn1471-2288-
dc.identifier.urihttps://hdl.handle.net/2445/177092-
dc.description.abstractBACKGROUND: The use of Cardiovascular Disease (CVD) risk estimation scores in primary prevention has long been established. However, their performance still remains a matter of concern. The aim of this study was to explore the potential of using ML methodologies on CVD prediction, especially compared to established risk tool, the HellenicSCORE. METHODS: Data from the ATTICA prospective study (n = 2020 adults), enrolled during 2001-02 and followed-up in 2011-12 were used. Three different machine-learning classifiers (k-NN, random forest, and decision tree) were trained and evaluated against 10-year CVD incidence, in comparison with the HellenicSCORE tool (a calibration of the ESC SCORE). Training datasets, consisting from 16 variables to only 5 variables, were chosen, with or without bootstrapping, in an attempt to achieve the best overall performance for the machine learning classifiers. RESULTS: Depending on the classifier and the training dataset the outcome varied in efficiency but was comparable between the two methodological approaches. In particular, the HellenicSCORE showed accuracy 85%, specificity 20%, sensitivity 97%, positive predictive value 87%, and negative predictive value 58%, whereas for the machine learning methodologies, accuracy ranged from 65 to 84%, specificity from 46 to 56%, sensitivity from 67 to 89%, positive predictive value from 89 to 91%, and negative predictive value from 24 to 45%; random forest gave the best results, while the k-NN gave the poorest results. CONCLUSIONS: The alternative approach of machine learning classification produced results comparable to that of risk prediction scores and, thus, it can be used as a method of CVD prediction, taking into consideration the advantages that machine learning methodologies may offer.-
dc.format.extent11 p.-
dc.format.mimetypeapplication/pdf-
dc.language.isoeng-
dc.publisherBioMed Central-
dc.relation.isformatofReproducció del document publicat a: https://doi.org/10.1186/s12874-018-0644-1-
dc.relation.ispartofBMC Medical Research Methodology, 2018, vol. 18, num. 1, p. 179-
dc.relation.urihttps://doi.org/10.1186/s12874-018-0644-1-
dc.rightscc-by (c) Dimopoulos, Alexandros C. et al., 2018-
dc.rights.urihttp://creativecommons.org/licenses/by/3.0/es-
dc.sourceArticles publicats en revistes (Medicina)-
dc.subject.classificationMalalties cardiovasculars-
dc.subject.classificationAprenentatge automàtic-
dc.subject.otherCardiovascular diseases-
dc.subject.otherMachine learning-
dc.titleMachine learning methodologies versus cardiovascular risk scores, in predicting disease risk-
dc.typeinfo:eu-repo/semantics/article-
dc.typeinfo:eu-repo/semantics/publishedVersion-
dc.identifier.idgrec686837-
dc.date.updated2021-05-06T21:07:24Z-
dc.relation.projectIDinfo:eu-repo/grantAgreement/EC/H2020/635316/EU//ATHLOS-
dc.rights.accessRightsinfo:eu-repo/semantics/openAccess-
dc.identifier.pmid30594138-
Appears in Collections:Articles publicats en revistes (Medicina)

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