Classification of radiological patterns of tuberculosis with a Convolutional neural network in x-ray images

In this paper we propose the classification of radiological patterns with the presence of tuberculosis in X-ray images, it was observed that two to six patterns (consolidation, fibrosis, opacity, opacity, pleural, nodules and cavitations) are present in the radiographs of the patients. It is importa...

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Detalles Bibliográficos
Autores: Trueba Espinosa, Adrian|||0000-0001-9149-9537, Sanchez -Arrazola, Jessica|||0000-0001-5746-3493, Cervantes, Jair|||0000-0003-2012-8151, Garcia-Lamont, Farid|||0000-0002-9739-3802, Ruiz Castilla, José Sergio|||0000-0001-7821-4912, Kantipudi, Karthik|||0000-0002-6423-1647
Tipo de recurso: artículo
Fecha de publicación:2024
País:España
Institución:Universitat Autònoma de Barcelona
Repositorio:Dipòsit Digital de Documents de la UAB
Idioma:inglés
OAI Identifier:oai:ddd.uab.cat:298715
Acceso en línea:https://ddd.uab.cat/record/298715
https://dx.doi.org/urn:doi:10.5565/rev/elcvia.1561
Access Level:acceso abierto
Palabra clave:Tuberculosis patterns
Convolutional neural networks
Chest x-rays
Descripción
Sumario:In this paper we propose the classification of radiological patterns with the presence of tuberculosis in X-ray images, it was observed that two to six patterns (consolidation, fibrosis, opacity, opacity, pleural, nodules and cavitations) are present in the radiographs of the patients. It is important to mention that species specialists consider the type of TB pattern in order to provide appropriate treatment. It should be noted that not all medical centres have specialists who can immediately interpret radiological patterns. Considering the above, the aim is to classify patterns by means of a convolutional neural network to help make a more accurate diagnosis on X-rays, so that doctors can recommend immediate treatment and thus avoid infecting more people. For the classification of tuberculosis patterns, a proprietary convolutional neural network (CNN) was proposed and compared against the VGG16, InceptionV3 and ResNet-50 architectures, which were selected based on the results of other radiograph classification research [1]-[3] . The results obtained for the Macro-averange AUC-SVM metric for the proposed architecture and InceptionV3 were 0.80, and for VGG16 it was 0.75, and for the ResNet-50 network it was 0.79. The proposed architecture has better classification results, as does InceptionV3.