Heterogeneous virus classification using a functional deep learning model based on transmission electron microscopy images (Preprint)
Niloy Sikder, Md. Al-Masrur Khan, Anupam Kumar Bairagi, Mehedi Masud,, Jun Jiat Tiang, Abdullah-Al Nahid

TL;DR
This paper introduces a deep learning model that classifies 14 virus types from TEM images with high accuracy, aiding rapid and reliable virus detection.
Contribution
It presents a novel deep learning approach combined with noise reduction techniques for accurate virus classification from TEM images.
Findings
Achieved up to 97.44% accuracy in virus classification
Effective noise reduction improves image quality for better classification
Demonstrated reliability and speed of the proposed method
Abstract
Viruses are submicroscopic agents that can infect all kinds of lifeforms and use their hosts' living cells to replicate themselves. Despite having some of the simplest genetic structures among all living beings, viruses are highly adaptable, resilient, and given the right conditions, are capable of causing unforeseen complications in their hosts' bodies. Due to their multiple transmission pathways, high contagion rate, and lethality, viruses are the biggest biological threat faced by animal and plant species. It is often challenging to promptly detect the presence of a virus in a possible host's body and accurately determine its type using manual examination techniques; however, it can be done using computer-based automatic diagnosis methods. Most notably, the analysis of Transmission Electron Microscopy (TEM) images has been proven to be quite successful in instant virus…
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Taxonomy
TopicsCell Image Analysis Techniques
