COVID-19 detection using chest computed tomography scans on Ecuadorian patients who live in the highland region.

 

Authors
Jacho Hernández, Kelding Jahemar; Martínez Moposita, Danny Mauricio
Format
Article
Status
publishedVersion
Description

The early detection of COVID-19 is one of the current challenges in developing effective diagnosis and treatment mechanisms for patients who are at a high risk for community contagion. Computed Tomography (CT) is an essential support for detecting the infection pattern that causes this disease. CT scans provide relevant information on the morphological appearance of the infected parenchymal tissue, known as ground-glass opacities. Artificial Intelligence (AI) can assist in the quick evaluation of CT scans to differentiate COVID-19 findings in suggestive clinical cases. In this context, AI in the form of, Convolutional Neural Networks (CNN), has achieved successful results in the analysis and classification of medical images. A deep CNN architecture is proposed in this study to diagnose COVID-19 based on the classification of Chest Computed Tomography (CCT) images. In this study 8,624 CCTs of Ecuadorian patients affected by COVID-19 in the first quarter of 2021, were examined. The initial review of CCTs was performed by medical experts to discriminate the CCTs against other chronic lung diseases not associated with COVID-19. The CCTs were pre-processed by techniques such as morphological segmentation, erosion, dilation, and adjustment. After training the model reached an overall F1-score of 97%.
ESPEL

Publication Year
2021
Language
eng
Topic
TOMOGRAFÍA COMPUTARIZADA DE TÓRAX
REDES NEURONALES CONVOLUCIONALES
COVID-19
APRENDIZAJE PROFUNDO. 5. SEGMENTACIÓN PULMONAR
Repository
Repositorio Universidad de las Fuerzas Armadas
Get full text
http://repositorio.espe.edu.ec/handle/21000/27324
Rights
openAccess
License