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Título: Improving a Deep Learning Model to Accurately Diagnose LVNC
Fecha de publicación: 12-dic-2023
Fecha de defensa / creación: 30-oct-2023
Editorial: Federico Guerra
Cita bibliográfica: Journal of Clinical Medicine, volumen 12, número 24, año 2023
Materias relacionadas: CDU::0 - Generalidades.::00 - Ciencia y conocimiento. Investigación. Cultura. Humanidades.::004 - Ciencia y tecnología de los ordenadores. Informática.
Palabras clave: left ventricular non-compaction diagnosis
cardiomyopathies
convolutional neural networks
MRI Image segmentation
Resumen: Accurate diagnosis of Left Ventricular Noncompaction Cardiomyopathy (LVNC) is critical for proper patient treatment but remains challenging. This work improves LVNC detection by improving left ventricle segmentation in cardiac MR images. Trabeculated left ventricle indicates LVNC, but automatic segmentation is difficult. We present techniques to improve segmentation and evaluate their impact on LVNC diagnosis. Three main methods are introduced: (1) using full 800 × 800 MR images rather than 512 × 512; (2) a clustering algorithm to eliminate neural network hallucinations; (3) advanced network architectures including Attention U-Net, MSA-UNet, and U-Net++.Experiments utilize cardiac MR datasets from three different hospitals. U-Net++ achieves the best segmentation performance using 800 × 800 images, and it improves the mean segmentation Dice score by 0.02 over the baseline U-Net, the clustering algorithm improves the mean Dice score by 0.06 on the images it affected, and the U-Net++ provides an additional 0.02 mean Dice score over the baseline U-Net. For LVNC diagnosis, U-Net++ achieves 0.896 accuracy, 0.907 precision, and 0.912 F1-score outperforming the baseline U-Net. Proposed techniques enhance LVNC detection, but differences between hospitals reveal problems in improving generalization. This work provides validated methods for precise LVNC diagnosis.
Autor/es principal/es: Baron Yusti, Jaime Rafael
Bernabé García, Gregorio
González Férez, Pilar
García Carrasco, José Manuel
Casas, Guillem
González-Carrillo, Josefa
Facultad/Departamentos/Servicios: Facultades, Departamentos, Servicios y Escuelas::Departamentos de la UMU::Ingeniería y Tecnología de Computadores
Versión del editor: https://www.mdpi.com/2077-0383/12/24/7633/pdf?version=1702432108
URI: http://hdl.handle.net/10201/138134
DOI: https://doi.org/10.3390/jcm12247633
Tipo de documento: info:eu-repo/semantics/article
Número páginas / Extensión: 15
Derechos: info:eu-repo/semantics/openAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional
Descripción: ©2023. This manuscript version is made available under the CC-BY 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/ This document is the Published Manuscript version of a Published Work that appeared in final form in Journal of Clinical Medicine. To access the final edited and published work see https://doi.org/10.3390/jcm12247633
Aparece en las colecciones:Artículos: Ingeniería y Tecnología de Computadores

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