Astrocytic ApoE Reprograms Neuronal Cholesterol Metabolism and Histone-Acetylation-mediated Memory
Neuron(2021)
Univ Sci & Technol China | Univ Penn | Harvard Med Sch
Abstract
Astrocytes metabolically interact with neighboring neurons by providing multiple substances to neurons. How astrocytes regulate neural functions via altering the neuronal metabolic state remains elusive. Here, we demonstrate that astrocytic ApoE vectors a variety of microRNAs (miRNAs), and these miRNAs specifically silence genes involved in neuronal cholesterol biosynthesis, ultimately accounting for accumulation of the pathway-initiating substrate acetyl-CoA. Consequently, histone acetylation is promoted, and transcription is activated in neurons. Functionally, we demonstrate that ApoE-mediated neuronal histone acetylation leads to increased H3K27ac enrichment in the promoters of multiple neuronal immediate early genes and subsequently to enhanced memory consolidation in mice. Importantly, human ApoE4 vectors lower levels of miRNAs than ApoE3 and therefore is less capable of metabolic and epigenetic regulation in neurons. Collectively, our findings define an astrocytic ApoE-mediated neuronal epigenetic mechanism as a novel means through which astrocytes modulate brain connectivity and function.
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Key words
ApoE,cholesterol metabolism,acetyl-CoA,histone acetylation,memory consolidation,miRNA
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