Author
Listed:
- Kelly Jin
(Allen Institute for Brain Science)
- Zizhen Yao
(Allen Institute for Brain Science)
- Cindy T. J. Velthoven
(Allen Institute for Brain Science)
- Eitan S. Kaplan
(Allen Institute for Brain Science)
- Katie Glattfelder
(Allen Institute for Brain Science)
- Samuel T. Barlow
(Allen Institute for Brain Science)
- Gabriella Boyer
(Allen Institute for Brain Science)
- Daniel Carey
(Allen Institute for Brain Science)
- Tamara Casper
(Allen Institute for Brain Science)
- Anish Bhaswanth Chakka
(Allen Institute for Brain Science)
- Rushil Chakrabarty
(Allen Institute for Brain Science)
- Michael Clark
(Allen Institute for Brain Science)
- Max Departee
(Allen Institute for Brain Science)
- Marie Desierto
(Allen Institute for Brain Science)
- Amanda Gary
(Allen Institute for Brain Science)
- Jessica Gloe
(Allen Institute for Brain Science)
- Jeff Goldy
(Allen Institute for Brain Science)
- Nathan Guilford
(Allen Institute for Brain Science)
- Junitta Guzman
(Allen Institute for Brain Science)
- Daniel Hirschstein
(Allen Institute for Brain Science)
- Changkyu Lee
(Allen Institute for Brain Science)
- Elizabeth Liang
(Allen Institute for Brain Science)
- Trangthanh Pham
(Allen Institute for Brain Science)
- Melissa Reding
(Allen Institute for Brain Science)
- Kara Ronellenfitch
(Allen Institute for Brain Science)
- Augustin Ruiz
(Allen Institute for Brain Science)
- Josh Sevigny
(Allen Institute for Brain Science)
- Nadiya Shapovalova
(Allen Institute for Brain Science)
- Lyudmila Shulga
(Allen Institute for Brain Science)
- Josef Sulc
(Allen Institute for Brain Science)
- Amy Torkelson
(Allen Institute for Brain Science)
- Herman Tung
(Allen Institute for Brain Science)
- Boaz Levi
(Allen Institute for Brain Science)
- Susan M. Sunkin
(Allen Institute for Brain Science)
- Nick Dee
(Allen Institute for Brain Science)
- Luke Esposito
(Allen Institute for Brain Science)
- Kimberly A. Smith
(Allen Institute for Brain Science)
- Bosiljka Tasic
(Allen Institute for Brain Science)
- Hongkui Zeng
(Allen Institute for Brain Science)
Abstract
Biological ageing can be defined as a gradual loss of homeostasis across various aspects of molecular and cellular function1,2. Mammalian brains consist of thousands of cell types3, which may be differentially susceptible or resilient to ageing. Here we present a comprehensive single-cell RNA sequencing dataset containing roughly 1.2 million high-quality single-cell transcriptomes of brain cells from young adult and aged mice of both sexes, from regions spanning the forebrain, midbrain and hindbrain. High-resolution clustering of all cells results in 847 cell clusters and reveals at least 14 age-biased clusters that are mostly glial types. At the broader cell subclass and supertype levels, we find age-associated gene expression signatures and provide a list of 2,449 unique differentially expressed genes (age-DE genes) for many neuronal and non-neuronal cell types. Whereas most age-DE genes are unique to specific cell types, we observe common signatures with ageing across cell types, including a decrease in expression of genes related to neuronal structure and function in many neuron types, major astrocyte types and mature oligodendrocytes, and an increase in expression of genes related to immune function, antigen presentation, inflammation, and cell motility in immune cell types and some vascular cell types. Finally, we observe that some of the cell types that demonstrate the greatest sensitivity to ageing are concentrated around the third ventricle in the hypothalamus, including tanycytes, ependymal cells, and certain neuron types in the arcuate nucleus, dorsomedial nucleus and paraventricular nucleus that express genes canonically related to energy homeostasis. Many of these types demonstrate both a decrease in neuronal function and an increase in immune response. These findings suggest that the third ventricle in the hypothalamus may be a hub for ageing in the mouse brain. Overall, this study systematically delineates a dynamic landscape of cell-type-specific transcriptomic changes in the brain associated with normal ageing that will serve as a foundation for the investigation of functional changes in ageing and the interaction of ageing and disease.
Suggested Citation
Kelly Jin & Zizhen Yao & Cindy T. J. Velthoven & Eitan S. Kaplan & Katie Glattfelder & Samuel T. Barlow & Gabriella Boyer & Daniel Carey & Tamara Casper & Anish Bhaswanth Chakka & Rushil Chakrabarty &, 2025.
"Brain-wide cell-type-specific transcriptomic signatures of healthy ageing in mice,"
Nature, Nature, vol. 638(8049), pages 182-196, February.
Handle:
RePEc:nat:nature:v:638:y:2025:i:8049:d:10.1038_s41586-024-08350-8
DOI: 10.1038/s41586-024-08350-8
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