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    Por favor, use este identificador para citar o enlazar este ítem:https://uvadoc.uva.es/handle/10324/62524

    Título
    An explainable deep-learning architecture for pediatric sleep apnea identification from overnight airflow and oximetry signals
    Autor
    Jimenez García, JorgeAutoridad UVA Orcid
    García Gadañón, MaríaAutoridad UVA Orcid
    Gutierrez Tobal, Gonzalo CésarAutoridad UVA Orcid
    Kheirandish Gozal, Leila
    Vaquerizo Villar, FernandoAutoridad UVA Orcid
    Álvarez González, DanielAutoridad UVA Orcid
    Campo Matias, Félix delAutoridad UVA Orcid
    Gozal, David
    Hornero Sánchez, RobertoAutoridad UVA Orcid
    Año del Documento
    2024
    Editorial
    Elsevier
    Descripción
    Producción Científica
    Documento Fuente
    Biomedical Signal Processing and Control, 2024, vol. 87, Part B, 105490
    Abstract
    Deep-learning algorithms have been proposed to analyze overnight airflow (AF) and oximetry (SpO2) signals to simplify the diagnosis of pediatric obstructive sleep apnea (OSA), but current algorithms are hardly interpretable. Explainable artificial intelligence (XAI) algorithms can clarify the models-derived predictions on these signals, enhancing their diagnostic trustworthiness. Here, we assess an explainable architecture that combines convolutional and recurrent neural networks (CNN + RNN) to detect pediatric OSA and its severity. AF and SpO2 were obtained from the Childhood Adenotonsillectomy Trial (CHAT) public database (n = 1,638) and a proprietary database (n = 974). These signals were arranged in 30-min segments and processed by the CNN + RNN architecture to derive the number of apneic events per segment. The apnea-hypopnea index (AHI) was computed from the CNN + RNN-derived estimates and grouped into four OSA severity levels. The Gradient-weighted Class Activation Mapping (Grad-CAM) XAI algorithm was used to identify and interpret novel OSA-related patterns of interest. The AHI regression reached very high agreement (intraclass correlation coefficient > 0.9), while OSA severity classification achieved 4-class accuracies 74.51% and 62.31%, and 4-class Cohen’s Kappa 0.6231 and 0.4495, in CHAT and the private datasets, respectively. All diagnostic accuracies on increasing AHI cutoffs (1, 5 and 10 events/h) surpassed 84%. The Grad-CAM heatmaps revealed that the model focuses on sudden AF cessations and SpO2 drops to detect apneas and hypopneas with desaturations, and often discards patterns of hypopneas linked to arousals. Therefore, an interpretable CNN + RNN model to analyze AF and SpO2 can be helpful as a diagnostic alternative in symptomatic children at risk of OSA.
    Materias (normalizadas)
    Pediatría
    Biomedical engineering
    Materias Unesco
    32 Ciencias Médicas
    Palabras Clave
    Obstructive sleep apnea
    Children
    Airflow
    Apnea obstructiva del sueño
    Niños
    Flujo de aire
    ISSN
    1746-8094
    Revisión por pares
    SI
    DOI
    10.1016/j.bspc.2023.105490
    Patrocinador
    Ministerio de Ciencia e Innovación /AEI/10.13039/501100011033/ FEDER (grants PID2020-115468RB-I00 and PDC2021-120775-I00)
    CIBER -Consorcio Centro de Investigación Biomédica en Red- (CB19/01/00012), Instituto de Salud Carlos III
    National Institutes of Health (HL083075, HL083129, UL1-RR-024134, UL1 RR024989)
    National Heart, Lung, and Blood Institute (R24 HL114473, 75N92019R002)
    Ministerio de Ciencia e Innovación - Agencia Estatal de Investigación- “Ramón y Cajal” grant (RYC2019-028566-I)
    Version del Editor
    https://www.sciencedirect.com/science/article/pii/S1746809423009230?via%3Dihub
    Propietario de los Derechos
    © 2023 The Authors
    Idioma
    eng
    URI
    https://uvadoc.uva.es/handle/10324/62524
    Tipo de versión
    info:eu-repo/semantics/publishedVersion
    Derechos
    openAccess
    Aparece en las colecciones
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