COVID-19 Infection Analysis Framework using Novel Boosted CNNs and Radiological Images
Saddam Hussain Khan (Department of Computer Systems Engineering,, University of Engineering, Applied Science, Swat, Pakistan)

TL;DR
This paper introduces a novel two-stage deep learning framework using boosted CNNs and radiological images to accurately detect and segment COVID-19 infections, enhancing diagnostic efficiency and aiding in disease control.
Contribution
The paper presents a new two-stage analysis framework with a novel CNN architecture (STM-BRNet) and a segmentation model (SA-CB-BRSeg) that improve COVID-19 detection and segmentation accuracy.
Findings
Achieved 98.01% accuracy in infection detection
Attained 96.396% Dice Similarity in segmentation
Significantly outperformed existing systems in performance
Abstract
COVID-19 is a new pathogen that first appeared in the human population at the end of 2019, and it can lead to novel variants of pneumonia after infection. COVID-19 is a rapidly spreading infectious disease that infects humans faster. Therefore, efficient diagnostic systems may accurately identify infected patients and thus help control their spread. In this regard, a new two-stage analysis framework is developed to analyze minute irregularities of COVID-19 infection. A novel detection Convolutional Neural Network (CNN), STM-BRNet, is developed that incorporates the Split-Transform-Merge (STM) block and channel boosting (CB) to identify COVID-19 infected CT slices in the first stage. Each STM block extracts boundary and region-smoothing-specific features for COVID-19 infection detection. Moreover, the various boosted channels are obtained by introducing the new CB and Transfer Learning…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
