Nuclear morphology is a deep learning biomarker of cellular senescence
Indra Heckenbach
1, 2, 3
,
Garik V. Mkrtchyan
1
,
Michael Ben Ezra
1, 4
,
Daniela Bakula
1
,
Jakob Sture Madsen
1
,
Malte Hasle Nielsen
5
,
Denise Oró
5
,
Brenna Osborne
1
,
Anthony J Covarrubias
6, 7
,
M. Laura Idda
8, 9
,
Myriam Gorospe
8
,
Laust Mortensen
4, 10
,
Eric Verdin
2
,
Rudi Westendorp
4, 10
,
Morten Scheibye-Knudsen
1, 3
3
Tracked.bio, Copenhagen, Denmark
|
4
Methods and Analysis, Statistics Denmark, Copenhagen, Denmark
|
5
Gubra, Hørsholm, Denmark
|
9
Istituto di Ricerca Genetica e Biomedica, Consiglio Nazionale delle Ricerche, Sassari, Italy
|
Publication type: Journal Article
Publication date: 2022-08-15
scimago Q1
wos Q1
SJR: 7.081
CiteScore: 26.1
Impact factor: 19.4
ISSN: 26628465
PubMed ID:
37118134
Pulmonary and Respiratory Medicine
Pediatrics, Perinatology, and Child Health
Abstract
Cellular senescence is an important factor in aging and many age-related diseases, but understanding its role in health is challenging due to the lack of exclusive or universal markers. Using neural networks, we predict senescence from the nuclear morphology of human fibroblasts with up to 95% accuracy, and investigate murine astrocytes, murine neurons, and fibroblasts with premature aging in culture. After generalizing our approach, the predictor recognizes higher rates of senescence in p21-positive and ethynyl-2’-deoxyuridine (EdU)-negative nuclei in tissues and shows an increasing rate of senescent cells with age in H&E-stained murine liver tissue and human dermal biopsies. Evaluating medical records reveals that higher rates of senescent cells correspond to decreased rates of malignant neoplasms and increased rates of osteoporosis, osteoarthritis, hypertension and cerebral infarction. In sum, we show that morphological alterations of the nucleus can serve as a deep learning predictor of senescence that is applicable across tissues and species and is associated with health outcomes in humans. Senescent cells are typically identified by a combination of senescence-associated markers, and the phenotype is heterogeneous. Here, using deep neural networks, Heckenbach et al. show that nuclear morphology can be used to predict cellular senescence in images of tissues and cell cultures.
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157
Total citations:
157
Citations from 2024:
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(80.89%)
Cite this
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GOST
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Heckenbach I. et al. Nuclear morphology is a deep learning biomarker of cellular senescence // Nature Aging. 2022. Vol. 2. No. 8. pp. 742-755.
GOST all authors (up to 50)
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Heckenbach I., Mkrtchyan G. V., Ezra M. B., Bakula D., Madsen J. S., Nielsen M. H., Oró D., Osborne B., Covarrubias A. J., Idda M. L., Gorospe M., Mortensen L., Verdin E., Westendorp R., Scheibye-Knudsen M. Nuclear morphology is a deep learning biomarker of cellular senescence // Nature Aging. 2022. Vol. 2. No. 8. pp. 742-755.
Cite this
RIS
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TY - JOUR
DO - 10.1038/s43587-022-00263-3
UR - https://doi.org/10.1038/s43587-022-00263-3
TI - Nuclear morphology is a deep learning biomarker of cellular senescence
T2 - Nature Aging
AU - Heckenbach, Indra
AU - Mkrtchyan, Garik V.
AU - Ezra, Michael Ben
AU - Bakula, Daniela
AU - Madsen, Jakob Sture
AU - Nielsen, Malte Hasle
AU - Oró, Denise
AU - Osborne, Brenna
AU - Covarrubias, Anthony J
AU - Idda, M. Laura
AU - Gorospe, Myriam
AU - Mortensen, Laust
AU - Verdin, Eric
AU - Westendorp, Rudi
AU - Scheibye-Knudsen, Morten
PY - 2022
DA - 2022/08/15
PB - Springer Nature
SP - 742-755
IS - 8
VL - 2
PMID - 37118134
SN - 2662-8465
ER -
Cite this
BibTex (up to 50 authors)
Copy
@article{2022_Heckenbach,
author = {Indra Heckenbach and Garik V. Mkrtchyan and Michael Ben Ezra and Daniela Bakula and Jakob Sture Madsen and Malte Hasle Nielsen and Denise Oró and Brenna Osborne and Anthony J Covarrubias and M. Laura Idda and Myriam Gorospe and Laust Mortensen and Eric Verdin and Rudi Westendorp and Morten Scheibye-Knudsen},
title = {Nuclear morphology is a deep learning biomarker of cellular senescence},
journal = {Nature Aging},
year = {2022},
volume = {2},
publisher = {Springer Nature},
month = {aug},
url = {https://doi.org/10.1038/s43587-022-00263-3},
number = {8},
pages = {742--755},
doi = {10.1038/s43587-022-00263-3}
}
Cite this
MLA
Copy
Heckenbach, Indra, et al. “Nuclear morphology is a deep learning biomarker of cellular senescence.” Nature Aging, vol. 2, no. 8, Aug. 2022, pp. 742-755. https://doi.org/10.1038/s43587-022-00263-3.