Machine learning approaches for COVID-19 detection from chest X-ray
imaging: A Systematic Review
- URL: http://arxiv.org/abs/2206.05615v1
- Date: Sat, 11 Jun 2022 21:17:42 GMT
- Title: Machine learning approaches for COVID-19 detection from chest X-ray
imaging: A Systematic Review
- Authors: Harold Brayan Arteaga-Arteaga (1), Melissa delaPava (1), Alejandro
Mora-Rubio (1), Mario Alejandro Bravo-Ort\'iz (1), Jesus Alejandro
Alzate-Grisales (1), Daniel Arias-Garz\'on (1), Luis Humberto L\'opez-Murillo
(2), Felipe Buitrago-Carmona (3), Juan Pablo Villa-Pulgar\'in (1), Esteban
Mercado-Ruiz (1), Simon Orozco-Arias (3 and 4), M. Hassaballah (5), Maria de
la Iglesia-Vaya (6), Oscar Cardona-Morales (1), Reinel Tabares-Soto (1) ((1)
Department of Electronics and Automation, Universidad Aut\'onoma de
Manizales, Manizales, Colombia, (2) Department of Chemical Engineering,
Universidad Nacional de Colombia, Manizales, Colombia, (3) Department of
Computer Science, Universidad Aut\'onoma de Manizales, Manizales, Colombia,
(4) Department of Systems and informatics, Universidad de Caldas, Manizales,
Colombia, (5) Faculty of Computers and Information, South Valley University,
Qena, Egypt, (6) Unidad Mixta de Imagen Biom\'edica FISABIO-CIPF, Fundaci\'on
para el Fomento de la Investigaci\'on Sanitario y Biom\'edica de la Comunidad
Valenciana, Valencia, Spain)
- Abstract summary: Machine Learning algorithms have been proposed to design support decision-making systems to assess chest X-ray images.
This paper presents a systematic review of ML applied to COVID-19 detection using chest X-ray images.
- Score: 31.21638091772227
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: There is a necessity to develop affordable, and reliable diagnostic tools,
which allow containing the COVID-19 spreading. Machine Learning (ML) algorithms
have been proposed to design support decision-making systems to assess chest
X-ray images, which have proven to be useful to detect and evaluate disease
progression. Many research articles are published around this subject, which
makes it difficult to identify the best approaches for future work. This paper
presents a systematic review of ML applied to COVID-19 detection using chest
X-ray images, aiming to offer a baseline for researchers in terms of methods,
architectures, databases, and current limitations.
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