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DynaMorph: self-supervised learning of morphodynamic states of live cells

A cell’s shape and motion represent fundamental aspects of cell identity and can be highly predictive of function and pathology. However, automated analysis of the morphodynamic states remains challenging for most cell types, especially primary human cells where genetic labeling may not be feasible....

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Autores principales: Wu, Zhenqin, Chhun, Bryant B., Popova, Galina, Guo, Syuan-Ming, Kim, Chang N., Yeh, Li-Hao, Nowakowski, Tomasz, Zou, James, Mehta, Shalin B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The American Society for Cell Biology 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9265147/
https://www.ncbi.nlm.nih.gov/pubmed/35138913
http://dx.doi.org/10.1091/mbc.E21-11-0561
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author Wu, Zhenqin
Chhun, Bryant B.
Popova, Galina
Guo, Syuan-Ming
Kim, Chang N.
Yeh, Li-Hao
Nowakowski, Tomasz
Zou, James
Mehta, Shalin B.
author_facet Wu, Zhenqin
Chhun, Bryant B.
Popova, Galina
Guo, Syuan-Ming
Kim, Chang N.
Yeh, Li-Hao
Nowakowski, Tomasz
Zou, James
Mehta, Shalin B.
author_sort Wu, Zhenqin
collection PubMed
description A cell’s shape and motion represent fundamental aspects of cell identity and can be highly predictive of function and pathology. However, automated analysis of the morphodynamic states remains challenging for most cell types, especially primary human cells where genetic labeling may not be feasible. To enable automated and quantitative analysis of morphodynamic states, we developed DynaMorph—a computational framework that combines quantitative live cell imaging with self-supervised learning. To demonstrate the robustness and utility of this approach, we used DynaMorph to annotate morphodynamic states observed with label-free measurements of optical density and anisotropy of live microglia isolated from human brain tissue. These cells show complex behavior and have varied responses to disease-relevant perturbations. DynaMorph generates quantitative morphodynamic representations that can be used to compare the effects of the perturbations. Using DynaMorph, we identify distinct morphodynamic states of microglia polarization and detect rare transition events between states. The concepts and the methods presented here can facilitate automated discovery of functional states of diverse cellular systems.
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spelling pubmed-92651472022-07-27 DynaMorph: self-supervised learning of morphodynamic states of live cells Wu, Zhenqin Chhun, Bryant B. Popova, Galina Guo, Syuan-Ming Kim, Chang N. Yeh, Li-Hao Nowakowski, Tomasz Zou, James Mehta, Shalin B. Mol Biol Cell Articles A cell’s shape and motion represent fundamental aspects of cell identity and can be highly predictive of function and pathology. However, automated analysis of the morphodynamic states remains challenging for most cell types, especially primary human cells where genetic labeling may not be feasible. To enable automated and quantitative analysis of morphodynamic states, we developed DynaMorph—a computational framework that combines quantitative live cell imaging with self-supervised learning. To demonstrate the robustness and utility of this approach, we used DynaMorph to annotate morphodynamic states observed with label-free measurements of optical density and anisotropy of live microglia isolated from human brain tissue. These cells show complex behavior and have varied responses to disease-relevant perturbations. DynaMorph generates quantitative morphodynamic representations that can be used to compare the effects of the perturbations. Using DynaMorph, we identify distinct morphodynamic states of microglia polarization and detect rare transition events between states. The concepts and the methods presented here can facilitate automated discovery of functional states of diverse cellular systems. The American Society for Cell Biology 2022-05-12 /pmc/articles/PMC9265147/ /pubmed/35138913 http://dx.doi.org/10.1091/mbc.E21-11-0561 Text en © 2022 Wu et al. “ASCB®,” “The American Society for Cell Biology®,” and “Molecular Biology of the Cell®” are registered trademarks of The American Society for Cell Biology. https://creativecommons.org/licenses/by-nc-sa/4.0/This article is distributed by The American Society for Cell Biology under license from the author(s). Two months after publication it is available to the public under an Attribution–Noncommercial-Share Alike 4.0 International Creative Commons License.
spellingShingle Articles
Wu, Zhenqin
Chhun, Bryant B.
Popova, Galina
Guo, Syuan-Ming
Kim, Chang N.
Yeh, Li-Hao
Nowakowski, Tomasz
Zou, James
Mehta, Shalin B.
DynaMorph: self-supervised learning of morphodynamic states of live cells
title DynaMorph: self-supervised learning of morphodynamic states of live cells
title_full DynaMorph: self-supervised learning of morphodynamic states of live cells
title_fullStr DynaMorph: self-supervised learning of morphodynamic states of live cells
title_full_unstemmed DynaMorph: self-supervised learning of morphodynamic states of live cells
title_short DynaMorph: self-supervised learning of morphodynamic states of live cells
title_sort dynamorph: self-supervised learning of morphodynamic states of live cells
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9265147/
https://www.ncbi.nlm.nih.gov/pubmed/35138913
http://dx.doi.org/10.1091/mbc.E21-11-0561
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