• español
  • English
  • français
  • Deutsch
  • português (Brasil)
  • italiano
  • Contacto
  • Sugerencias
    • español
    • English
    • français
    • Deutsch
    • português (Brasil)
    • italiano
    • español
    • English
    • français
    • Deutsch
    • português (Brasil)
    • italiano
    JavaScript is disabled for your browser. Some features of this site may not work without it.
    Gredos. Repositorio documental de la Universidad de SalamancaUniversidad de Salamanca
    Consorcio BUCLE Recolector

    Listar

    Todo GredosComunidades y ColeccionesPor fecha de publicaciónAutoresMateriasTítulosEsta colecciónPor fecha de publicaciónAutoresMateriasTítulos

    Mi cuenta

    AccederRegistro

    Estadísticas

    Ver Estadísticas de uso
    Estadísticas totales de uso y lectura

    ENLACES Y ACCESOS

    Derechos de autorPolíticasGuías de autoarchivoFAQAdhesión USAL a la Declaración de BerlínProtocolo de depósito, modificación y retirada de documentos y datosSolicitud de depósito, modificación y retirada de documentos y datos

    COMPARTIR

    Ver ítem 
    •   Gredos Principal
    • Repositorio Científico
    • Departamentos
    • Ciencias Experimentales
    • Departamento Estadística
    • DES. Artículos del Departamento de Estadística
    • Ver ítem
    •   Gredos Principal
    • Repositorio Científico
    • Departamentos
    • Ciencias Experimentales
    • Departamento Estadística
    • DES. Artículos del Departamento de Estadística
    • Ver ítem

    Compartir

    Exportar

    RISMendeleyRefworksZotero
    • edm
    • marc
    • xoai
    • qdc
    • ore
    • ese
    • dim
    • uketd_dc
    • oai_dc
    • etdms
    • rdf
    • mods
    • mets
    • didl
    • premis

    Citas

    Título
    Machine Learning to Predict Stent Restenosis Based on Daily Demographic, Clinical, and Angiographic Characteristics.
    Autor(es)
    Sampedro-Gómez, Jesús
    Dorado Díaz, Pedro IgnacioAutoridad USAL ORCID
    Vicente-Palacios, Víctor
    Sánchez-Puente, Antonio
    Jiménez-Navarro, Manuel
    San Roman, J Alberto
    Galindo Villardón, PurificaciónAutoridad USAL ORCID
    Sanchez, Pedro L
    Fernández-Avilés, Francisco
    Palabras clave
    Machine Learning
    Cardiología
    Cardiology
    Artificial intelligence
    Restenosis
    Stent
    Fecha de publicación
    2020-10
    Editor
    Elservier
    Citación
    Jesús 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)
    Resumen
    [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.
    URI
    https://hdl.handle.net/10366/161957
    ISSN
    0828-282X
    DOI
    10.1016/j.cjca.2020.01.027
    Versión del editor
    https://doi.org/10.1016/j.cjca.2020.01.027
    Aparece en las colecciones
    • DES. Artículos del Departamento de Estadística [141]
    Mostrar el registro completo del ítem
    Ficheros en el ítem
    Nombre:
    pidd_Machine_Learning_to_Predict_Stent_Restenosis_Based_on_Daily_Demographic,_Clinical,_and_Angiographic_Characteristics.pdf
    Tamaño:
    1.275Mb
    Formato:
    Adobe PDF
    Descripción:
    Machine_Learning_to_Predict_Stent_Restenosis_Based_on_Daily_Demographic,_Clinical,_and_Angiographic_Characteristics
    Thumbnail
    Visualizar/Abrir
     
    Universidad de Salamanca
    AVISO LEGAL Y POLÍTICA DE PRIVACIDAD
    2024 © UNIVERSIDAD DE SALAMANCA
     
    Universidad de Salamanca
    AVISO LEGAL Y POLÍTICA DE PRIVACIDAD
    2024 © UNIVERSIDAD DE SALAMANCA