Pixel Wised Lesion Prediction on COVID-19 CT Imagery: A Comparative Analysis of Automated Image Segmentation Architectures
Sarmad Khan, Arslan Shaukat, Umer Asgher, Basim Azam

TL;DR
This study evaluates various deep learning architectures with pre-trained backbones for COVID-19 lesion segmentation in CT images, providing a comprehensive performance analysis across multiple datasets.
Contribution
It offers a standardized methodology for comparing segmentation architectures and benchmarks their performance on COVID-19 CT datasets.
Findings
Maximum F1-Score of 98% for binary segmentation.
Multi-class segmentation F1-Scores of 75% and 77%.
Deep learning architectures achieve accurate and efficient segmentation.
Abstract
In recent years, there has been a notable increase in the level of attention that is given to algorithms based on deep learning in the context of medical image segmentation. Nevertheless, the reliability of the field has been hindered due to the absence of a standardized methodology for performance analysis and the utilization of different datasets in previous research. The primary objective of the research is to comprehensively evaluate contemporary segmentation frameworks combined with state-of-the-art pre-trained backbones in order to accurately predict COVID-19 lesions in CT images. Moreover, this evaluation can serve as a point of reference for the segmentation of images in various other imaging scenarios. In order to accomplish this, we integrate four distinct deep learning architectures, namely Unet, PSPNet, Linknet, and FPN, with six pre-trained encoders, including VGG 19,…
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