Β2-Microglobulin Functions As an Endogenous NMDAR Antagonist to Impair Synaptic Function.
Cell(2023)SCI 1区
Shenzhen Research Institute of Xiamen University | Xiamen Univ | Fujian Med Univ | United Diagnostic and Research Center for Clinical Genetics | State Key Laboratory of Cellular Stress Biology | Sanford Burnham Prebys Med Discovery Inst | Center for Brain Sciences
Abstract
Down syndrome (DS) is a neurological disorder with multiple immune-related symptoms; however, crosstalk between the CNS and peripheral immune system remains unexplored. Using parabiosis and plasma infusion, we found that blood-borne factors drive synaptic deficits in DS. Proteomic analysis revealed elevation of β2-microglobulin (B2M), a major histocompatibility complex class I (MHC-I) component, in human DS plasma. Systemic administration of B2M in wild-type mice led to synaptic and memory defects similar to those observed in DS mice. Moreover, genetic ablation of B2m or systemic administration of an anti-B2M antibody counteracts synaptic impairments in DS mice. Mechanistically, we demonstrate that B2M antagonizes NMDA receptor (NMDAR) function through interactions with the GluN1-S2 loop; blocking B2M-NMDAR interactions using competitive peptides restores NMDAR-dependent synaptic function. Our findings identify B2M as an endogenous NMDAR antagonist and reveal a pathophysiological role for circulating B2M in NMDAR dysfunction in DS and related cognitive disorders.
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