Toward a human brain extracellular vesicle atlas: Characteristics of extracellular vesicles from different brain regions, including small RNA and protein profiles

Yiyao Huang(Johns Hopkins University), Tanina Arab(Johns Hopkins University), Ashley E. Russell(Pennsylvania State University), Emily R. Mallick(Johns Hopkins University), Rajini Nagaraj(Meso Scale Discovery (United States)), Evan A. Gizzie(Meso Scale Discovery (United States)), Javier Redding‐Ochoa(Johns Hopkins University), Juan C. Troncoso(Johns Hopkins University), Olga Pletniková(Johns Hopkins University), Andrey Turchinovich(German Cancer Research Center), David A. Routenberg(Meso Scale Discovery (United States)), Kenneth W. Witwer(Johns Hopkins University)
Interdisciplinary medicine
August 15, 2023
Cited by 45Open Access
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Abstract

Extracellular vesicles (EVs) are released from different cell types in the central nervous system (CNS) and play roles in regulating physiological and pathological functions. Although brain-derived EVs (bdEVs) have been successfully collected from brain tissue, there is not yet a "bdEV Atlas" of EVs from different brain regions. To address this gap, we separated EVs from eight anatomical brain regions of a single individual and subsequently characterized them by count, size, morphology, and protein and RNA content. The greatest particle yield was from cerebellum, while the fewest particles were recovered from the orbitofrontal, postcentral gyrus, and thalamus regions. EV surface phenotyping indicated that CD81 and CD9 were more abundant than CD63 in all regions. Cell-enriched surface markers varied between brain regions. For example, putative neuronal markers NCAM, CD271, and NRCAM were more abundant in medulla, cerebellum, and occipital regions, respectively. These findings, while restricted to tissues from a single individual, suggest that additional studies are warranted to provide more insight into the links between EV heterogeneity and function in the CNS.


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