Login / Signup

Hybrid model for early identification post-Covid-19 sequelae.

Evandro Carvalho de AndradeLuana Ibiapina C C PinheiroPlácido Rogerio PinheiroLuciano Comin NunesMirian Calíope Dantas PinheiroMaria Lúcia Duarte PereiraWilson Correia de AbreuRaimir Holanda FilhoMarum Simão FilhoPedro Gabriel C D PinheiroRafael Espíndola Comin Nunes
Published in: Journal of ambient intelligence and humanized computing (2023)
Artificial Intelligence techniques based on Machine Learning algorithms, Neural Networks and Naïve Bayes can optimise the diagnostic process of the SARS-CoV-2 or Covid-19. The most significant help of these techniques is analysing data recorded by health professionals when treating patients with this disease. Health professionals' more specific focus is due to the reduction in the number of observable signs and symptoms, ranging from an acute respiratory condition to severe pneumonia, showing an efficient form of attribute engineering. It is important to note that the clinical diagnosis can vary from asymptomatic to extremely harsh conditions. About 80% of patients with Covid-19 may be asymptomatic or have few symptoms. Approximately 20% of the detected cases require hospital care because they have difficulty breathing, of which about 5% may require ventilatory support in the Intensive Care Unit. Also, the present study proposes a hybrid approach model, structured in the composition of Artificial Intelligence techniques, using Machine Learning algorithms, associated with multicriteria methods of decision support based on the Verbal Decision Analysis methodology, aiming at the discovery of knowledge, as well as exploring the predictive power of specific data in this study, to optimise the diagnostic models of Covid-19. Thus, the model will provide greater accuracy to the diagnosis sought through clinical observation.
Keyphrases