A single-cell transcriptomic landscape of primate arterial aging

Weiqi Zhang(Capital Medical University), Shu Zhang(Peking University), Pengze Yan(Chinese Academy of Sciences), Jie Ren(Peking University), Moshi Song(Chinese Academy of Sciences), Jingyi Li(Chinese Academy of Sciences), Jinghui Lei(Capital Medical University), Huize Pan(Chinese Academy of Sciences), Si Wang(Chinese Academy of Sciences), Xibo Ma(Institute of Automation), Shuai Ma(Chinese Academy of Sciences), Hongyu Li(Chinese Academy of Sciences), Fei Sun(Chinese Academy of Sciences), Haifeng Wan(Chinese Academy of Sciences), Wei Li(Chinese Academy of Sciences), Piu Chan(Capital Medical University), Qi Zhou(Chinese Academy of Sciences), Guang‐Hui Liu(Institute for Stem Cell Biology and Regenerative Medicine), Fuchou Tang(Peking University), Jing Qu(Chinese Academy of Sciences)
Nature Communications
May 5, 2020
Cited by 168Open Access
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Abstract

Our understanding of how aging affects the cellular and molecular components of the vasculature and contributes to cardiovascular diseases is still limited. Here we report a single-cell transcriptomic survey of aortas and coronary arteries in young and old cynomolgus monkeys. Our data define the molecular signatures of specialized arteries and identify eight markers discriminating aortic and coronary vasculatures. Gene network analyses characterize transcriptional landmarks that regulate vascular senility and position FOXO3A, a longevity-associated transcription factor, as a master regulator gene that is downregulated in six subtypes of monkey vascular cells during aging. Targeted inactivation of FOXO3A in human vascular endothelial cells recapitulates the major phenotypic defects observed in aged monkey arteries, verifying FOXO3A loss as a key driver for arterial endothelial aging. Our study provides a critical resource for understanding the principles underlying primate arterial aging and contributes important clues to future treatment of age-associated vascular disorders.


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