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  3. Transformer-based spatial-temporal detection of apoptotic cell death in live-cell imaging.
 

Transformer-based spatial-temporal detection of apoptotic cell death in live-cell imaging.

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BORIS DOI
10.48350/194469
Date of Publication
March 18, 2024
Publication Type
Article
Division/Institute

Institut für Zellbiol...

Author
Pulfer, Alain
Pizzagalli, Diego Ulisse
Gagliardi, Paolo Armando
Institut für Zellbiologie (IZB)
Hinderling, Lucien Simon
Institut für Zellbiologie (IZB)
Lopez, Paul
Zayats, Romaniya
Carrillo-Barberà, Pau
Antonello, Paola
Palomino-Segura, Miguel
Grädel, Benjamin Andreas
Institut für Zellbiologie (IZB)
Nicolai, Mariaclaudia
Giusti, Alessandro
Thelen, Marcus
Gambardella, Luca Maria
Murooka, Thomas T
Pertz, Olivier
Institut für Zellbiologie (IZB)
Krause, Rolf
Gonzalez, Santiago Fernandez
Subject(s)

500 - Science::570 - ...

Series
eLife
ISSN or ISBN (if monograph)
2050-084X
Publisher
eLife Sciences Publications
Language
English
Publisher DOI
10.7554/eLife.90502
PubMed ID
38497754
Uncontrolled Keywords

cell culture computat...

Description
Intravital microscopy has revolutionized live-cell imaging by allowing the study of spatial-temporal cell dynamics in living animals. However, the complexity of the data generated by this technology has limited the development of effective computational tools to identify and quantify cell processes. Amongst them, apoptosis is a crucial form of regulated cell death involved in tissue homeostasis and host defense. Live-cell imaging enabled the study of apoptosis at the cellular level, enhancing our understanding of its spatial-temporal regulation. However, at present, no computational method can deliver robust detection of apoptosis in microscopy timelapses. To overcome this limitation, we developed ADeS, a deep learning-based apoptosis detection system that employs the principle of activity recognition. We trained ADeS on extensive datasets containing more than 10,000 apoptotic instances collected both in vitro and in vivo, achieving a classification accuracy above 98% and outperforming state-of-the-art solutions. ADeS is the first method capable of detecting the location and duration of multiple apoptotic events in full microscopy timelapses, surpassing human performance in the same task. We demonstrated the effectiveness and robustness of ADeS across various imaging modalities, cell types, and staining techniques. Finally, we employed ADeS to quantify cell survival in vitro and tissue damage in mice, demonstrating its potential application in toxicity assays, treatment evaluation, and inflammatory dynamics. Our findings suggest that ADeS is a valuable tool for the accurate detection and quantification of apoptosis in live-cell imaging and, in particular, intravital microscopy data, providing insights into the complex spatial-temporal regulation of this process.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/175654
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elife-90502-v2.pdftextAdobe PDF9.01 MBAttribution (CC BY 4.0)publishedOpen
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