A real-world intelligent system for the diagnosis and triage of COVID-19 in the emergency department
Metadata
Show full item recordEditorial
Mre Press
Materia
COVID-19 Diagnosis artificial intelligence; Emergency care Epidemiology SARSCoV- 2
Date
2023-05-08Referencia bibliográfica
Miguel Lastra Leidinger, Francisco Aragón Royón, Oier Etxeberria, Luis Balderas, Antonio Jesús Láinez Ramos-bossini, Genaro López Milena, Liz Alfonso, Rosario Moreno, Antonio Arauzo, José M. Benítez. A real-world intelligent system for the diagnosis and triage of COVID-19 in the emergency department. Signa Vitae. 2023. 19(3);91-102.[http://doi.org/10.22514/sv.2022.070]
Sponsorship
COVID-19’ project (CV20-29480); Consejería de Transformación Económica, Industria, Conocimiento y Universidades; Junta de Andalucía, and the FEDER funds.Abstract
The Coronavirus Disease 2019 (COVID-19) pandemic has had an unprecedented impact
on healthcare systems, prompting the need to improve the triaging of patients in the
Emergency Department (ED). This could be achieved by automatic analysis of chest
X-rays (CXR) using Artificial Intelligence (AI). We conducted a research project to
generate and thoroughly document the development process of an intelligent system
for COVID-19 diagnosis. This work aims at explaining the problem formulation, data
collection and pre-processing, use of base convolutional neural networks to approach our
diagnostic problem, the process of network building and how our model was validated
to reach the final diagnostic system. Using publicly available datasets and a locally
obtained dataset with more than 100,000 potentially eligible CXR images, we developed
an intelligent diagnostic system that achieves an average performance of 93% success.
Then, we implemented a web-based interface that will allow its use in real-world
medical practice, with an average response time of less than 1 second. There were
some limitations in the application of the diagnostic system to our local dataset which
precluded obtaining high diagnostic performance. Although not all these limitations are
straightforward, the most relevant ones are discussed, along with potential solutions.
Further research is warranted to overcome the limitations of state-of-the-art AI systems
used for the imaging diagnosis of COVID-19 in the ED