血管生成
电池类型
生物
内皮干细胞
细胞生物学
下调和上调
串扰
内皮
癌症研究
细胞
神经科学
基因
遗传学
体外
光学
物理
作者
Ying Li,Romuald Girard,Abhinav Srinath,Diana Vera Cruz,Cezary Ciszewski,Chang Chen,Rhonda Lightle,Sharbel Romanos,Je Yeong Sone,Thomas Moore,Dorothy DeBiasse,Agnieszka Stadnik,Justine J. Lee,Robert Shenkar,Janne Koskimäki,Miguel Alejandro Lopez‐Ramirez,Douglas A. Marchuk,Mark H. Ginsberg,Mark L. Kahn,Changbin Shi,Issam A. Awad
标识
DOI:10.1186/s12964-023-01301-2
摘要
Abstract Cerebral cavernous malformation (CCM) is a hemorrhagic neurovascular disease with no currently available therapeutics. Prior evidence suggests that different cell types may play a role in CCM pathogenesis. The contribution of each cell type to the dysfunctional cellular crosstalk remains unclear. Herein, RNA-seq was performed on fluorescence-activated cell sorted endothelial cells (ECs), pericytes, and neuroglia from CCM lesions and non-lesional brain tissue controls. Differentially Expressed Gene (DEG), pathway and Ligand-Receptor (LR) analyses were performed to characterize the dysfunctional genes of respective cell types within CCMs. Common DEGs among all three cell types were related to inflammation and endothelial-to-mesenchymal transition (EndMT). DEG and pathway analyses supported a role of lesional ECs in dysregulated angiogenesis and increased permeability. VEGFA was particularly upregulated in pericytes. Further pathway and LR analyses identified vascular endothelial growth factor A/ vascular endothelial growth factor receptor 2 signaling in lesional ECs and pericytes that would result in increased angiogenesis. Moreover, lesional pericytes and neuroglia predominantly showed DEGs and pathways mediating the immune response. Further analyses of cell specific gene alterations in CCM endorsed potential contribution to EndMT, coagulation, and a hypoxic microenvironment. Taken together, these findings motivate mechanistic hypotheses regarding non-endothelial contributions to lesion pathobiology and may lead to novel therapeutic targets.
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