Deep learning methods have significantly improved medical image analysis, particularly in detecting COVID-19 chest X-rays. Nonetheless, these methodologies frequently inhibit some drawbacks, such as limited interpretability, extensive computational resources, and the need for extensive datasets. To tackle these issues, we introduced two novel algorithms: the Dynamic Co-Occurrence Grey Level Matrix (DC-GLM) and the Contextual Adaptation Multiscale Gabor Network (CAMSGNeT). Ground-glass opacity, consolidation, and fibrosis are key indicators of COVID-19 that are effectively captured by DC-GLM, which is designed to adaptively respond to diverse texture sizes and orientations. It emphasizes coarse texture patterns, adeptly catching significant structural alterations in the texture of chest X-rays, enhancing diagnostic precision by documenting the spatial correlations among pixel intensities and facilitating the detection of both significant and minor irregularities. To enhance coarse feature extraction, we introduced CAMSGNeT, which emphasizes fine features via Contextual Adaptive Diffusion. In contrast to conventional multiscale Gabor filtering, CAMSGNeT improves feature extraction by modifying the diffusion process according to both gradients and local texture complexity. The Contextual Adaptation Diffusion approach adjusts the diffusion coefficient by incorporating both gradient and local variance, enabling intricate texture areas to preserve finer details while smoothing regions are diffused to decrease noise. Air bronchograms and crazy-paving patterns are maintained by this adaptive method, which enhances edge identification and texture characteristics while preserving essential tiny details. Finally, a simple optimized sequential neural network analyzes these refined features, resulting in enhanced classification accuracy. Feature importance analysis improves the model's interpretability by revealing the contributions of individual features to its decisions. Our methodology outperforms numerous state-of-the-art models, achieving 98.27% and 100% accuracy on two datasets, providing a more interpretable, precise, and resource-efficient solution for COVID-19 detection.
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http://dx.doi.org/10.1016/j.compbiomed.2025.109659 | DOI Listing |
Rev Argent Microbiol
January 2025
Virology Unit, Centro de Educación Médica e Investigaciones Clínicas (CEMIC) University Hospital, Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Buenos Aires, Argentina; Virology Laboratory, CEMIC University Hospital, Argentina. Electronic address:
Acute respiratory infection (ARI) is one of the principal causes of morbidity worldwide, with respiratory viruses being common etiological agents. Among them, endemic human coronaviruses (hCoVs) including CoV-229E, CoV-OC43, CoV-NL63, and CoV-HKU1 can cause mild ARI but are usually not evaluated in the clinical setting. The aim of this work was to determine the prevalence of all respiratory pathogens, with the focus placed on endemic hCoVs in the pre-pandemic period.
View Article and Find Full Text PDFChest
January 2025
Clinical Epidemiology Program, Ottawa Hospital Research Institute, Ottawa, ON, Canada; Division of Critical Care, Department of Medicine, University of Ottawa, Ottawa, ON, Canada; Institut du Savoir Montfort, Hôpital Montfort, Ottawa, ON, Canada.
Background: Survivorship after coronavirus disease 2019 (COVID-19) critical illness may be associated with important long-term sequelae, but little is known regarding mental health outcomes.
Research Question: What is the association between COVID-19 critical illness and new post-discharge mental health diagnoses.
Study Design: AND METHODS: We conducted a population-based cohort study in Ontario, Canada (January 1, 2020-March 31, 2022).
Comput Biol Med
January 2025
University of Rwanda, Rwanda. Electronic address:
Deep learning methods have significantly improved medical image analysis, particularly in detecting COVID-19 chest X-rays. Nonetheless, these methodologies frequently inhibit some drawbacks, such as limited interpretability, extensive computational resources, and the need for extensive datasets. To tackle these issues, we introduced two novel algorithms: the Dynamic Co-Occurrence Grey Level Matrix (DC-GLM) and the Contextual Adaptation Multiscale Gabor Network (CAMSGNeT).
View Article and Find Full Text PDFSoft comput
July 2024
eVIDA Lab, The University of Deusto, Avda/Universidades 24, Bilbao, 48007 Spain.
[This retracts the article DOI: 10.1007/s00500-020-05424-3.].
View Article and Find Full Text PDFPLOS Digit Health
January 2025
FIND, Geneva, Switzerland.
AI based software, including computer aided detection software for chest radiographs (CXR-CAD), was developed during the pandemic to improve COVID-19 case finding and triage. In high burden TB countries, the use of highly portable CXR and computer aided detection software has been adopted more broadly to improve the screening and triage of individuals for TB, but there is little evidence in these settings regarding COVID-19 CAD performance. We performed a multicenter, retrospective cross-over study evaluating CXRs from individuals at risk for COVID-19.
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