Pixel precise unsupervised detection of viral particle proliferation in cellular imaging data
Birgitta Dresp-Langley, John M. Wandeto

TL;DR
This study presents a pixel-precise, unsupervised method using Self-Organizing Maps to automatically classify cellular images based on viral proliferation stages, outperforming manual RGB-based methods.
Contribution
The paper introduces a novel, fast, and reliable unsupervised classification approach using SOM and quantization error for analyzing viral proliferation in cellular images.
Findings
SOM-QE accurately classifies viral proliferation stages
Method outperforms human RGB mean classification
Pixel-level precision enables detailed infection analysis
Abstract
Cellular and molecular imaging techniques and models have been developed to characterize single stages of viral proliferation after focal infection of cells in vitro. The fast and automatic classification of cell imaging data may prove helpful prior to any further comparison of representative experimental data to mathematical models of viral propagation in host cells. Here, we use computer generated images drawn from a reproduction of an imaging model from a previously published study of experimentally obtained cell imaging data representing progressive viral particle proliferation in host cell monolayers. Inspired by experimental time-based imaging data, here in this study viral particle increase in time is simulated by a one-by-one increase, across images, in black or gray single pixels representing dead or partially infected cells, and hypothetical remission by a one-by-one increase…
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Taxonomy
MethodsSelf-Organizing Map
