代谢型谷氨酸受体5
神经科学
小胶质细胞
谷氨酸受体
转基因小鼠
突触
代谢型谷氨酸受体
生物
β淀粉样蛋白
细胞生物学
转基因
医学
受体
病理
生物化学
免疫学
炎症
疾病
基因
作者
Joshua Spurrier,LaShae Nicholson,Xiaotian T. Fang,Austin Stoner,Takuya Toyonaga,Daniel Holden,Timothy R. Siegert,Will Laird,Mary Alice Allnutt,Marius Chiasseu,A. Harrison Brody,Hideyuki Takahashi,Sarah Helena Nies,Azucena Pérez‐Cañamás,Pragalath Sadasivam,Supum Lee,Songye Li,Le Zhang,Yiyun Huang,Richard E. Carson,Zhengxin Cai,Stephen M. Strittmatter
出处
期刊:Science Translational Medicine
[American Association for the Advancement of Science (AAAS)]
日期:2022-06-01
卷期号:14 (647)
被引量:51
标识
DOI:10.1126/scitranslmed.abi8593
摘要
Microglia-mediated synaptic loss contributes to the development of cognitive impairments in Alzheimer's disease (AD). However, the basis for this immune-mediated attack on synapses remains to be elucidated. Treatment with the metabotropic glutamate receptor 5 (mGluR5) silent allosteric modulator (SAM), BMS-984923, prevents β-amyloid oligomer-induced aberrant synaptic signaling while preserving physiological glutamate response. Here, we show that oral BMS-984923 effectively occupies brain mGluR5 sites visualized by [18F]FPEB positron emission tomography (PET) at doses shown to be safe in rodents and nonhuman primates. In aged mouse models of AD (APPswe/PS1ΔE9 overexpressing transgenic and AppNL-G-F/hMapt double knock-in), SAM treatment fully restored synaptic density as measured by [18F]SynVesT-1 PET for SV2A and by histology, and the therapeutic benefit persisted after drug washout. Phospho-TAU accumulation in double knock-in mice was also reduced by SAM treatment. Single-nuclei transcriptomics demonstrated that SAM treatment in both models normalized expression patterns to a far greater extent in neurons than glia. Last, treatment prevented synaptic localization of the complement component C1Q and synaptic engulfment in AD mice. Thus, selective modulation of mGluR5 reversed neuronal gene expression changes to protect synapses from damage by microglial mediators in rodents.
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