生物
计算生物学
单核吞噬细胞系统
髓样
代谢网络
鉴定(生物学)
吞噬细胞
免疫系统
细胞生物学
免疫学
生态学
作者
Anastasiia Gainullina,Denis A. Mogilenko,Li‐Hao Huang,Helena Todorov,Vipin Narang,Ki-Wook Kim,Lim Sheau Yng,Andrew Kent,Baosen Jia,Kumba Seddu,Karen Krchma,Jun Wu,Karine Crozat,Elena Tomasello,Regine J. Dress,Peter See,Charlotte L. Scott,Sophie L. Gibbings,Geetika Bajpai,Jigar V. Desai
出处
期刊:Cell Reports
[Cell Press]
日期:2023-01-27
卷期号:42 (2): 112046-112046
被引量:24
标识
DOI:10.1016/j.celrep.2023.112046
摘要
The diversity of mononuclear phagocyte (MNP) subpopulations across tissues is one of the key physiological characteristics of the immune system. Here, we focus on understanding the metabolic variability of MNPs through metabolic network analysis applied to three large-scale transcriptional datasets: we introduce (1) an ImmGen MNP open-source dataset of 337 samples across 26 tissues; (2) a myeloid subset of ImmGen Phase I dataset (202 MNP samples); and (3) a myeloid mouse single-cell RNA sequencing (scRNA-seq) dataset (51,364 cells) assembled based on Tabula Muris Senis. To analyze such large-scale datasets, we develop a network-based computational approach, genes and metabolites (GAM) clustering, for unbiased identification of the key metabolic subnetworks based on transcriptional profiles. We define 9 metabolic subnetworks that encapsulate the metabolic differences within MNP from 38 different tissues. Obtained modules reveal that cholesterol synthesis appears particularly active within the migratory dendritic cells, while glutathione synthesis is essential for cysteinyl leukotriene production by peritoneal and lung macrophages.
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