Tracking unlabeled cancer cells imaged with low resolution in wide migration chambers via U-NET class-1 probability (pseudofluorescence).
Brightfield microscopy
Cell migration
Cell tracking
Journal
Journal of biological engineering
ISSN: 1754-1611
Titre abrégé: J Biol Eng
Pays: England
ID NLM: 101306640
Informations de publication
Date de publication:
24 Jan 2023
24 Jan 2023
Historique:
received:
09
08
2022
accepted:
27
12
2022
entrez:
24
1
2023
pubmed:
25
1
2023
medline:
25
1
2023
Statut:
epublish
Résumé
Cell migration is a pivotal biological process, whose dysregulation is found in many diseases including inflammation and cancer. Advances in microscopy technologies allow now to study cell migration in vitro, within engineered microenvironments that resemble in vivo conditions. However, to capture an entire 3D migration chamber for extended periods of time and with high temporal resolution, images are generally acquired with low resolution, which poses a challenge for data analysis. Indeed, cell detection and tracking are hampered due to the large pixel size (i.e., cell diameter down to 2 pixels), the possible low signal-to-noise ratio, and distortions in the cell shape due to changes in the z-axis position. Although fluorescent staining can be used to facilitate cell detection, it may alter cell behavior and it may suffer from fluorescence loss over time (photobleaching).Here we describe a protocol that employs an established deep learning method (U-NET), to specifically convert transmitted light (TL) signal from unlabeled cells imaged with low resolution to a fluorescent-like signal (class 1 probability). We demonstrate its application to study cancer cell migration, obtaining a significant improvement in tracking accuracy, while not suffering from photobleaching. This is reflected in the possibility of tracking cells for three-fold longer periods of time. To facilitate the application of the protocol we provide WID-U, an open-source plugin for FIJI and Imaris imaging software, the training dataset used in this paper, and the code to train the network for custom experimental settings.
Identifiants
pubmed: 36694208
doi: 10.1186/s13036-022-00321-9
pii: 10.1186/s13036-022-00321-9
pmc: PMC9872392
doi:
Types de publication
Journal Article
Langues
eng
Pagination
5Informations de copyright
© 2023. The Author(s).
Références
Oncotarget. 2017 Jun 29;8(49):85068-85084
pubmed: 29156704
Nat Rev Mol Cell Biol. 2021 Aug;22(8):529-547
pubmed: 33990789
Nat Rev Immunol. 2009 Nov;9(11):789-98
pubmed: 19834485
PLoS Comput Biol. 2020 Apr 13;16(4):e1007673
pubmed: 32282792
Nat Methods. 2017 Dec;14(12):1141-1152
pubmed: 29083403
Cell. 2008 Feb 8;132(3):463-73
pubmed: 18267076
Nat Methods. 2022 Jul;19(7):829-832
pubmed: 35654950
Methods. 2017 Feb 15;115:80-90
pubmed: 27713081
F1000Res. 2020 Oct 28;9:1279
pubmed: 33224481
Nat Rev Mol Cell Biol. 2019 Dec;20(12):738-752
pubmed: 31582855
Nat Immunol. 2008 Sep;9(9):949-52
pubmed: 18711431
Dev Immunol. 2000;7(2-4):103-16
pubmed: 11097205
Nat Methods. 2019 Dec;16(12):1226-1232
pubmed: 31570887
Nat Rev Mol Cell Biol. 2016 Feb;17(2):97-109
pubmed: 26726037
Methods Mol Biol. 2011;769:149-65
pubmed: 21748675
Nat Immunol. 2005 Dec;6(12):1182-90
pubmed: 16369557
Elife. 2021 Mar 30;10:
pubmed: 33781383
Am J Pathol. 2021 Oct;191(10):1693-1701
pubmed: 34129842
Nat Methods. 2021 Jan;18(1):100-106
pubmed: 33318659
Cancers (Basel). 2020 Aug 05;12(8):
pubmed: 32764365
Nat Methods. 2019 Jan;16(1):67-70
pubmed: 30559429
Plant Phenomics. 2021 Apr 9;2021:9835961
pubmed: 34250505
Sci Data. 2018 Jul 17;5:180129
pubmed: 30015806