- Published
- 07 November 2023
- Journal article
Phenotyping the virulence of SARS-CoV-2 variants in hamsters by digital pathology and machine learning
- Authors
-
- Source
- PLoS Pathogens
Abstract
Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has continued to evolve throughout the coronavirus disease-19 (COVID-19) pandemic, giving rise to multiple variants of concern (VOCs) with different biological properties. As the pandemic progresses, it will be essential to test in near real time the potential of any new emerging variant to cause severe disease. BA.1 (Omicron) was shown to be attenuated compared to the previous VOCs like Delta, but it is possible that newly emerging variants may regain a virulent phenotype. Hamsters have been proven to be an exceedingly good model for SARS-CoV-2 pathogenesis. Here, we aimed to develop robust quantitative pipelines to assess the virulence of SARS-CoV-2 variants in hamsters. We used various approaches including RNAseq, RNA in situ hybridization, immunohistochemistry, and digital pathology, including software assisted whole section imaging and downstream automatic analyses enhanced by machine learning, to develop methods to assess and quantify virus-induced pulmonary lesions in an unbiased manner. Initially, we used Delta and Omicron to develop our experimental pipelines. We then assessed the virulence of recent Omicron sub-lineages including BA.5, XBB, BQ.1.18, BA.2, BA.2.75 and EG.5.1. We show that in experimentally infected hamsters, accurate quantification of alveolar epithelial hyperplasia and macrophage infiltrates represent robust markers for assessing the extent of virus-induced pulmonary pathology, and hence virus virulence. In addition, using these pipelines, we could reveal how some Omicron sub-lineages (e.g., BA.2.75 and EG.5.1) have regained virulence compared to the original BA.1. Finally, to maximise the utility of the digital pathology pipelines reported in our study, we developed an online repository containing representative whole organ histopathology sections that can be visualised at variable magnifications (https://covid-atlas.cvr.gla.ac.uk). Overall, this pipeline can provide unbiased and invaluable data for rapidly assessing newly emerging variants and their potential to cause severe disease.
Rights
© 2023 Meehan et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. http://creativecommons.org/licenses/by/4.0/
Cite as
Meehan, G., Herder, V., Allan, J., Huang, X., Kerr, K., Mendonca, D., Ilia, G., Wright, D., Nomikou, K., Gu, Q., Arias, S., Hansmann, F., Hardas, A., Attipa, C., Lorenzo, G., Cowton, V., Upfold, N., Palmalux, N., Brown, J., Barclay, W., da Silva Filipe, A., Furnon, W., Patel, A. & Palmarini, M. 2023, 'Phenotyping the virulence of SARS-CoV-2 variants in hamsters by digital pathology and machine learning', PLoS Pathogens, 19(11), article no: e1011589. https://doi.org/10.1371/journal.ppat.1011589