EffiCOVID-net: A highly efficient convolutional neural network for COVID-19 diagnosis using chest X-ray imaging

dc.contributor.authorKumar, S.
dc.contributor.authorBhowmik, B.
dc.date.accessioned2026-02-03T13:19:37Z
dc.date.issued2025
dc.description.abstractThe global COVID-19 pandemic has drastically affected daily life, emphasizing the urgent need for early and accurate detection to provide adequate medical treatment, especially with limited antiviral options. Chest X-ray imaging has proven crucial for distinguishing COVID-19 from other respiratory conditions, providing an essential diagnostic tool. Deep learning (DL)-based models have proven highly effective in image diagnostics in recent years. Many of these models are computationally intensive and prone to overfitting, especially when trained on limited datasets. Additionally, conventional models often fail to capture multi-scale features, reducing diagnostic accuracy. This paper proposed a highly efficient convolutional neural network (CNN) called EffiCOVID-Net, incorporating diverse feature learning units. The proposed model consists of a bunch of EffiCOVID blocks that incorporate several layers of convolution containing (3×3) filters and recurrent connections to extract complex features while preserving spatial integrity. The performance of EffiCOVID-Net is rigorously evaluated using standard performance metrics on two publicly available COVID-19 chest X-ray datasets. Experimental results demonstrate that EffiCOVID-Net outperforms existing models, achieving 98.68% accuracy on the COVID-19 radiography dataset (D<inf>1</inf>), 98.55% on the curated chest X-ray dataset (D<inf>2</inf>), and 98.87% on the mixed dataset (D<inf>Mix</inf>) in multi-class classification (COVID-19 vs. Normal vs. Pneumonia). For binary classification (COVID-19 vs. Normal), the model attains 99.06%, 99.78%, and 99.07% accuracy, respectively. Integrating Grad-CAM-based visualizations further enhances interpretability by highlighting critical regions influencing model predictions. EffiCOVID-Net's lightweight architecture ensures low computational overhead, making it suitable for deployment in resource-constrained clinical settings. A comparative analysis with existing methods highlights its superior accuracy, efficiency, and robustness performance. However, while the model enhances diagnostic workflows, it is best utilized as an assistive tool rather than a standalone diagnostic method. © 2025 Elsevier Inc.
dc.identifier.citationMethods, 2025, 240, , pp. 81-100
dc.identifier.issn10462023
dc.identifier.urihttps://doi.org/10.1016/j.ymeth.2025.04.008
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/20170
dc.publisherAcademic Press Inc.
dc.subjectArticle
dc.subjectartificial intelligence
dc.subjectclassification
dc.subjectcontrolled study
dc.subjectconvolutional neural network
dc.subjectcoronavirus disease 2019
dc.subjectCOVID-19 pneumonia
dc.subjectdata interpretation
dc.subjectdata visualization
dc.subjectdeep learning
dc.subjectdiagnostic accuracy
dc.subjectdiagnostic test accuracy study
dc.subjectEffiCOVID-net
dc.subjectfeature extraction
dc.subjecthuman
dc.subjectimage classification
dc.subjectinformation processing
dc.subjectnonhuman
dc.subjectprediction
dc.subjectpredictive model
dc.subjectreceiver operating characteristic
dc.subjectsensitivity and specificity
dc.subjectthorax radiography
dc.subjectartificial neural network
dc.subjectdiagnosis
dc.subjectdiagnostic imaging
dc.subjectlung
dc.subjectprocedures
dc.subjectSevere acute respiratory syndrome coronavirus 2
dc.subjectConvolutional Neural Networks
dc.subjectCOVID-19
dc.subjectDeep Learning
dc.subjectHumans
dc.subjectLung
dc.subjectNeural Networks, Computer
dc.subjectRadiography, Thoracic
dc.subjectSARS-CoV-2
dc.titleEffiCOVID-net: A highly efficient convolutional neural network for COVID-19 diagnosis using chest X-ray imaging

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