4.7 Article

Lightweight deep CNN-based models for early detection of COVID-19 patients from chest X-ray images

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EXPERT SYSTEMS WITH APPLICATIONS
卷 223, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2023.119900

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COVID-19 detection; X-ray imaging; Convolution neural network (CNN); Lightweight deep learning techniques

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Hundreds of millions of people worldwide have been affected by COVID-19, leading to significant damage to health, economy, and welfare. In order to detect infected patients and provide timely care, lightweight CNN-based diagnostic models were developed for automatic and early detection of COVID-19 from chest X-ray images. These models achieved high accuracy rates and reduced computational and memory requirements compared to existing heavyweight models.
Hundreds of millions of people worldwide have recently been infected by the novel Coronavirus disease (COVID-19), causing significant damage to the health, economy, and welfare of the world's population. Moreover, the unprecedented number of patients with COVID-19 has placed a massive burden on healthcare centers, making timely and rapid diagnosis challenging. A crucial step in minimizing the impact of such problems is to auto-matically detect infected patients and place them under special care as quickly as possible. Deep learning al-gorithms, such as Convolutional Neural Networks (CNN), can be used to meet this need. Despite the desired results, most of the existing deep learning-based models were built on millions of parameters (weights), which are not applicable to devices with limited resources. Inspired by such fact, in this research, we developed two new lightweight CNN-based diagnostic models for the automatic and early detection of COVID-19 subjects from chest X-ray images. The first model was built for binary classification (COVID-19 and Normal), whereas the second one was built for multiclass classification (COVID-19, viral pneumonia, or normal). The proposed models were tested on a relatively large dataset of chest X-ray images, and the results showed that the accuracy rates of the 2-and 3-class-based classification models are 98.55% and 96.83%, respectively. The results also revealed that our models achieved competitive performance compared with the existing heavyweight models while signifi-cantly reducing cost and memory requirements for computing resources. With these findings, we can indicate that our models are helpful to clinicians in making insightful diagnoses of COVID-19 and are potentially easily deployable on devices with limited computational power and resources.

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