Author:
Farahat Ibrahim Shawky,Sharafeldeen Ahmed,Ghazal Mohammed,Alghamdi Norah Saleh,Mahmoud Ali,Connelly James,van Bogaert Eric,Zia Huma,Tahtouh Tania,Aladrousy Waleed,Tolba Ahmed Elsaid,Elmougy Samir,El-Baz Ayman
Abstract
AbstractThe proposed AI-based diagnostic system aims to predict the respiratory support required for COVID-19 patients by analyzing the correlation between COVID-19 lesions and the level of respiratory support provided to the patients. Computed tomography (CT) imaging will be used to analyze the three levels of respiratory support received by the patient: Level 0 (minimum support), Level 1 (non-invasive support such as soft oxygen), and Level 2 (invasive support such as mechanical ventilation). The system will begin by segmenting the COVID-19 lesions from the CT images and creating an appearance model for each lesion using a 2D, rotation-invariant, Markov–Gibbs random field (MGRF) model. Three MGRF-based models will be created, one for each level of respiratory support. This suggests that the system will be able to differentiate between different levels of severity in COVID-19 patients. The system will decide for each patient using a neural network-based fusion system, which combines the estimates of the Gibbs energy from the three MGRF-based models. The proposed system were assessed using 307 COVID-19-infected patients, achieving an accuracy of $$97.72\%\pm 1.57$$
97.72
%
±
1.57
, a sensitivity of $$97.76\%\pm 4.08$$
97.76
%
±
4.08
, and a specificity of $$98.87\%\pm 2.09$$
98.87
%
±
2.09
, indicating a high level of prediction accuracy.
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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