小胶质细胞
基因剔除小鼠
神经保护
活性氧
星形胶质细胞
生物
脊髓损伤
NADPH氧化酶
神经炎症
条件基因敲除
细胞生物学
神经胶质
神经毒性
神经科学
脊髓
中枢神经系统
化学
表型
生物化学
免疫学
炎症
受体
有机化学
基因
毒性
作者
Ying Li,Yi Xie,Rui Liu,Ziyue Wang,Peng Chen,Minghuan Wang,Zhiyuan Yu,Wei Wang,Xiang Luo
出处
期刊:Glia
[Wiley]
日期:2023-07-03
卷期号:71 (10): 2418-2436
被引量:10
摘要
Abstract Spinal cord injury (SCI) causes severe functional deficits and neuronal damage, accompanied by intense glial activation. The voltage‐gated proton channel Hv1, selectively expressed on microglia, is associated with SCI progression. However, the effect of Hv1 on the phenotypes and functions of reactive astrocytes after SCI remains unclear. Here, we combined Hv1 knockout (Hv1 −/− ) mice and T10 spinal cord contusion to investigate the effects of microglial Hv1 on SCI pathophysiology and the phenotypes and functions of reactive astrocytes. After SCI, astrocytes proliferated and activated in the peri‐injury area and exhibited an A1‐dominant phenotype. Hv1 knockout reduced neurotoxic A1 astrocytes and shifted the dominant phenotype of reactive astrocytes from A1 to A2, enhancing synaptogenesis promotion, phagocytosis, and neurotrophy of astrocytes. Moreover, synaptic and axonal remodeling as well as motor recovery after SCI benefited from the improved astrocytic functions of Hv1 knockout. Furthermore, exogenous and endogenous reactive oxygen species (ROS) in astrocytes after SCI were reduced by Hv1 knockout. Our in vitro results showed that inhibition of ROS reduced the neurotoxic A1 phenotype in primary astrocytes via the STAT3 pathway. Similar to the effect of Hv1 knockout, the application of the ROS scavenger N ‐acetylcysteine reduced SCI‐induced neurotoxic A1 astrocytes in vivo. Based on the in vivo and vitro results, we elucidated that microglial Hv1 knockout promotes synaptic and axonal remodeling in SCI mice by decreasing neurotoxic A1 astrocytes and increasing neuroprotective A2 astrocytes via the ROS/STAT3 pathway. Therefore, the Hv1 proton channel is a promising target for the treatment of SCI.
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