Open access · CC-BY
via OpenAlex
Nuclear morphology is a deep learning biomarker of cellular senescence
Indra Heckenbach, Garik V. Mkrtchyan, Michael Ben Ezra, Daniela Bakula, Jakob Sture Madsen, Malte Hasle Nielsen, Denise Oró, Brenna Osborne, Anthony J. Covarrubias, Maria Laura Idda, Myriam Gorospe, Laust Hvas Mortensen, Eric Verdin, Rudi G. J. Westendorp, Morten Scheibye‐Knudsen
Nature Aging · 2022 · ▲ 219 citations
Abstract
Cellular senescence(definition) 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.
◌ CITATION ONLY
Full text is not openly licensed for redistribution here. Read it at the source:
Provenance
- Source
- OpenAlex
- DOI
- 10.1038/s43587-022-00263-3
- Canonical
- link ↗
- Fetched
- 2026-06-12 MST
Cite this
APA
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.H., Verdin, E., Westendorp, R.G.J., & Scheibye‐Knudsen, M. (2022). Nuclear morphology is a deep learning biomarker of cellular senescence. <em>Nature Aging</em>. https://doi.org/10.1038/s43587-022-00263-3
Vancouver
Heckenbach I, Mkrtchyan GV, Ezra MB, Bakula D, Madsen JS, Nielsen MH, et al. Nuclear morphology is a deep learning biomarker of cellular senescence. Nature Aging. 2022. doi:10.1038/s43587-022-00263-3.
BibTeX
@article{indra2022Nuclea,
title = {Nuclear morphology is a deep learning biomarker of cellular senescence},
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 Maria Laura Idda and Myriam Gorospe and Laust Hvas Mortensen and Eric Verdin and Rudi G. J. Westendorp and Morten Scheibye‐Knudsen},
journal = {Nature Aging},
year = {2022},
doi = {10.1038/s43587-022-00263-3},
}
Research neighborhood
References, citing works, and semantically nearest findings. Click a node to open it.
Related findings
BMB Reports 2019
Open access · CC-BY
Cellular senescence in cancer
bioRxiv (Cold Spring Harbor Laboratory) 2021
Preprint · OA
A New Gene Set Identifies Senescent Cells and Predicts Senescence-Associated Pathways Across Tissues
European Journal of Neuroscience 2011
Citation only
Astrocytes in the aging brain express characteristics of senescence-associated secretory phenotype
Nature Communications 2022
Open access · CC-BY
A new gene set identifies senescent cells and predicts senescence-associated pathways across tissues
Nature Communications 2025
Open access · CC-BY
Multiomics and cellular senescence profiling of aging human skeletal muscle uncovers Maraviroc as a senotherapeutic approach for sarcopenia
Hepatology 2025
Preprint · CC-BY