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A fuzzy-enhanced deep learning approach for early detection of Covid-19 pneumonia from portable chest X-ray images

Authors :
Cosimo Ieracitano
Nadia Mammone
Mario Versaci
Giuseppe Varone
Abder-Rahman Ali
Antonio Armentano
Grazia Calabrese
Anna Ferrarelli
Lorena Turano
Carmela Tebala
Zain Hussain
Zakariya Sheikh
Aziz Sheikh
Giuseppe Sceni
Amir Hussain
Francesco Carlo Morabito
Source :
Neurocomputing
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

The Covid-19 pandemic is the defining global health crisis of our time. Chest X-Rays (CXR) have been an important imaging modality for assisting in the diagnosis and management of hospitalised Covid-19 patients. However, their interpretation is time intensive for radiologists. Accurate computer aided systems can facilitate early diagnosis of Covid-19 and effective triaging. In this paper, we propose a fuzzy logic based deep learning (DL) approach to differentiate between CXR images of patients with Covid-19 pneumonia and with interstitial pneumonias not related to Covid-19. The developed model here, referred to as CovNNet, is used to extract some relevant features from CXR images, combined with fuzzy images generated by a fuzzy edge detection algorithm. Experimental results show that using a combination of CXR and fuzzy features, within a deep learning approach by developing a deep network inputed to a Multilayer Perceptron (MLP), results in a higher classification performance (accuracy rate up to 81%), compared to benchmark deep learning approaches. The approach has been validated through additional datasets which are continously generated due to the spread of the virus and would help triage patients in acute settings. A permutation analysis is carried out, and a simple occlusion methodology for explaining decisions is also proposed. The proposed pipeline can be easily embedded into present clinical decision support systems.

Details

ISSN :
09252312
Volume :
481
Database :
OpenAIRE
Journal :
Neurocomputing
Accession number :
edsair.doi.dedup.....7130e7fb0c1cd4c8c99fcfbda7a3c15b