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dc.contributor.authorSampedro-Gómez, Jesús
dc.contributor.authorDorado Díaz, Pedro Ignacio 
dc.contributor.authorVicente-Palacios, Víctor
dc.contributor.authorSánchez-Puente, Antonio
dc.contributor.authorJiménez-Navarro, Manuel
dc.contributor.authorSan Roman, J Alberto
dc.contributor.authorGalindo Villardón, Purificación 
dc.contributor.authorSanchez, Pedro L
dc.contributor.authorFernández-Avilés, Francisco
dc.date.accessioned2025-01-20T09:09:47Z
dc.date.available2025-01-20T09:09:47Z
dc.date.issued2020-10
dc.identifier.citationJesús Sampedro-Gómez, P. Ignacio Dorado-Díaz, Víctor Vicente-Palacios, Antonio Sánchez-Puente, Manuel Jiménez-Navarro, J. Alberto San Roman, Purificación Galindo-Villardón, Pedro L. Sanchez, Francisco Fernández-Avilés, Machine Learning to Predict Stent Restenosis Based on Daily Demographic, Clinical, and Angiographic Characteristics, Canadian Journal of Cardiology, Volume 36, Issue 10, 2020, Pages 1624-1632, ISSN 0828-282X, https://doi.org/10.1016/j.cjca.2020.01.027. (https://www.sciencedirect.com/science/article/pii/S0828282X20300726)es_ES
dc.identifier.issn0828-282X
dc.identifier.urihttp://hdl.handle.net/10366/161957
dc.description.abstract[EN]Machine learning (ML) has arrived in medicine to deliver individually adapted medical care. This study sought to use ML to discriminate stent restenosis (SR) compared with existing predictive scores of SR. To develop an easily applicable model, we performed our predictions without any additional variables other than those obtained in daily practice. The dataset, obtained from the Grupo de Análisis de la Cardiopatía Isquémica Aguda (GRACIA)-3 trial, consisted of 263 patients with demographic, clinical, and angiographic characteristics; 23 (9%) of them presented with SR at 12 months after stent implantation. A methodology to work with small imbalanced datasets, based in cross-validation and the precision/recall (PR) plots, was used, and state-of-the-art ML classifiers were trained. Our best performing model (0.46, area under the PR curve [AUC-PR]) was developed with an extremely randomized trees classifier, which showed better performance than chance alone (0.09 AUC-PR, corresponding to the 9% of patients presenting SR in our dataset) and 3 existing scores; Prevention of Restenosis With Tranilast and its Outcomes (PRESTO)-1 (0.31 AUC-PR), PRESTO-2 (0.27 AUC-PR), and Evaluation of Drug-Eluting Stents and Ischemic Events (EVENT) (0.18 AUC-PR). The most important variables ranked according to their contribution to the predictions were diabetes, ≥2 vessel-coronary disease, post-percutaneous coronary intervention thrombolysis in myocardial infarction (PCI TIMI)-flow, abnormal platelets, post-PCI thrombus, and abnormal cholesterol. To counteract the lack of external validation for our study, we deployed our ML algorithm in an open source calculator, in which the model would stratify patients of high and low risk as an example tool to determine generalizability of prediction models from small imbalanced sample size. Applied immediately after stent implantation, a ML model better differentiates those patients who will present with SR over current discriminators.es_ES
dc.description.sponsorshipSpanish Cardiovascular Network (CIBERCV) Fondo de Investigacion Sanitaria Institute of Health Carlos III (Spanish Ministry of Science, Innovation and Universities)es_ES
dc.language.isoenges_ES
dc.publisherElservieres_ES
dc.subjectMachine Learninges_ES
dc.subjectCardiologíaes_ES
dc.subjectCardiologyes_ES
dc.subjectArtificial intelligencees_ES
dc.subjectRestenosises_ES
dc.subjectStentes_ES
dc.subject.meshPrognosis *
dc.subject.meshCoronary Angiography *
dc.subject.meshRisk Assessment *
dc.subject.meshCoronary Restenosis *
dc.subject.meshRisk Factors *
dc.subject.meshHumans *
dc.subject.meshCoronary Artery Disease *
dc.subject.meshDemography *
dc.subject.meshMiddle Aged *
dc.subject.meshDrug-Eluting Stents *
dc.subject.meshPercutaneous Coronary Intervention *
dc.titleMachine Learning to Predict Stent Restenosis Based on Daily Demographic, Clinical, and Angiographic Characteristics.es_ES
dc.typeinfo:eu-repo/semantics/articlees_ES
dc.relation.publishversionhttps://doi.org/10.1016/j.cjca.2020.01.027es_ES
dc.identifier.doi10.1016/j.cjca.2020.01.027
dc.relation.projectIDFIS: PI040308, PI040235, PI040361, PI042035, PI042686, PI040166, PI040276, PI040306, PI040309, PI040350, PI040478, and PI0402037es_ES
dc.rights.accessRightsinfo:eu-repo/semantics/openAccesses_ES
dc.identifier.pmid32311312
dc.identifier.essn1916-7075
dc.journal.titleThe Canadian journal of cardiologyes_ES
dc.volume.number36es_ES
dc.issue.number10es_ES
dc.page.initial1624es_ES
dc.page.final1632es_ES
dc.type.hasVersioninfo:eu-repo/semantics/publishedVersiones_ES
dc.subject.decsangiografía coronaria *
dc.subject.decspronóstico *
dc.subject.decsenfermedad arterial coronaria *
dc.subject.decsevaluación de riesgos *
dc.subject.decsdemografía *
dc.subject.decshumanos *
dc.subject.decsstents liberadores de fármacos *
dc.subject.decscirugía coronaria percutánea *
dc.subject.decsmediana edad *
dc.subject.decsreestenosis coronaria *
dc.subject.decsfactores de riesgo *


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