https://rmib.rmib.com.mx/index.php/rmib/issue/feed Revista Mexicana de Ingenieria Biomedica 2025-09-19T00:00:00+00:00 Prof. Dora-Luz Flores rib.somib@gmail.com Open Journal Systems <center> <p><strong>MISSION</strong></p> <p align="left"><em>La Revista Mexicana de Ingeniería Biomédica</em> (The Mexican Journal of Biomedical Engineering, RMIB, for its Spanish acronym) is a publication oriented to the dissemination of papers of the Mexican and international scientific community whose lines of research are aligned to the improvement of the quality of life through engineering techniques.</p> <p align="left">The papers that are considered for being published in the RMIB must be original, unpublished, and first rate, and they can cover the areas of Medical Instrumentation, Biomedical Signals, Medical Information Technology, Biomaterials, Clinical Engineering, Physiological Models, and Medical Imaging as well as lines of research related to various branches of engineering applied to the health sciences.</p> <p align="left">The RMIB is an electronic publication continuously released since 2020, structured into three volumes (January, May, September) by the Mexican Society of Biomedical Engineering, founded since 1979. It publishes articles in spanish and english and is aimed at academics, researchers and professionals interested in the subspecialties of Biomedical Engineering.</p> <p><strong>INDEXES</strong></p> <p><em>La Revista Mexicana de Ingeniería Biomédica</em> is a quarterly publication, and it is found in the following indexes:</p> <p><img src="https://www.rmib.mx/public/site/images/administrador/índices_y_repositorios_(1100_×_1000 px).jpg" /></p> </center> https://rmib.rmib.com.mx/index.php/rmib/article/view/1526 Classification of Small Bowel Lesions in Video Capsule Endoscopy Images Using Enhanced Deep Learning Model 2025-03-13T00:05:38+00:00 Erik Orlando Cuevas Rodriguez eo_cuevazr@uap.uaz.edu.mx Carlos Eric Galván Tejada ericgalvan@uaz.edu.mx Rafael Magallanes Quintanar Tiquis@uaz.edu.mx Jorge Issac Galván Tejada gatejo@uaz.edu.mx José María Celaya Padilla jose.celaya@uaz.edu.mx Juan Rubén Delgado Contreras ruben.delgado@uaz.edu.mx <p>Video capsule endoscopy (VCE) is a noninvasive procedure for diagnosing small bowel (SB) lesions. During VCE procedures, the miniature camera captures thousands of images, requiring considerable time and effort from healthcare professionals to examine each image for abnormalities. This study aims to develop and evaluate a modified DenseNet-201 convolutional neural network (CNN) model to assist in the automatic classification of SB lesions in VCE images. A representative dataset of 5,899 images was created by merging two state-of-the-art datasets, including six types of lesions and one class without lesions. A synthetic oversampling approach generated 1,273 synthetic images for the underrepresented class. Synthetic image quality was evaluated using texture metrics. The experiment was conducted on a set of 7,172 images using data partitions of 70 %, 15 %, and 15 % for training, validation, and testing, respectively, with a Monte Carlo cross-validation to verify the consistency of the experimental results. The model achieved an accuracy of 89.78 %, a precision of 89.66 %, a sensitivity of 89.69 %, a specificity of 89.72 %, and an F1 score of 89.67 % in the test set. The modified DenseNet-201 CNN model could be a valuable tool for diagnosing SB conditions and improving patient outcomes.</p> 2025-09-21T00:00:00+00:00 Copyright (c) 2025 Revista Mexicana de Ingenieria Biomedica