转录组
生物
血管生成
基因
表型
计算生物学
基因表达
新生血管
遗传学
细胞生物学
作者
Kateřina Rohlenová,Jermaine Goveia,Melissa García‐Caballero,Abhishek Subramanian,Joanna Kalucka,Lucas Treps,Kim D. Falkenberg,Laura de Rooij,Yingfeng Zheng,Lin Lin,Liliana Sokol,Laure-Anne Teuwen,Vincent Geldhof,Federico Taverna,Andreas Pircher,Lena‐Christin Conradi,Shawez Khan,Steve Stegen,Dena Panovska,Frederik De Smet
出处
期刊:Cell Metabolism
[Cell Press]
日期:2020-04-01
卷期号:31 (4): 862-877.e14
被引量:321
标识
DOI:10.1016/j.cmet.2020.03.009
摘要
Summary
Endothelial cell (EC) metabolism is an emerging target for anti-angiogenic therapy in tumor angiogenesis and choroidal neovascularization (CNV), but little is known about individual EC metabolic transcriptomes. By single-cell RNA sequencing 28,337 murine choroidal ECs (CECs) and sprouting CNV-ECs, we constructed a taxonomy to characterize their heterogeneity. Comparison with murine lung tumor ECs (TECs) revealed congruent marker gene expression by distinct EC phenotypes across tissues and diseases, suggesting similar angiogenic mechanisms. Trajectory inference predicted that differentiation of venous to angiogenic ECs was accompanied by metabolic transcriptome plasticity. ECs displayed metabolic transcriptome heterogeneity during cell-cycle progression and in quiescence. Hypothesizing that conserved genes are important, we used an integrated analysis, based on congruent transcriptome analysis, CEC-tailored genome-scale metabolic modeling, and gene expression meta-analysis in cross-species datasets, followed by in vitro and in vivo validation, to identify SQLE and ALDH18A1 as previously unknown metabolic angiogenic targets.
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