Liver in infections: a single-cell and spatial transcriptomics perspective

被引:0
作者
Ju Zou
Jie Li
Xiao Zhong
Daolin Tang
Xuegong Fan
Ruochan Chen
机构
[1] Central South University,Hunan Key Laboratory of Viral Hepatitis, Xiangya Hospital
[2] Central South University,Department of Infectious Diseases, Xiangya Hospital
[3] UT Southwestern Medical Center,Department of Surgery
来源
Journal of Biomedical Science | / 30卷
关键词
Liver; Infections; Single-cell technologies; Spatial transcriptome;
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学科分类号
摘要
The liver is an immune organ that plays a vital role in the detection, capture, and clearance of pathogens and foreign antigens that invade the human body. During acute and chronic infections, the liver transforms from a tolerant to an active immune state. The defence mechanism of the liver mainly depends on a complicated network of intrahepatic and translocated immune cells and non-immune cells. Therefore, a comprehensive liver cell atlas in both healthy and diseased states is needed for new therapeutic target development and disease intervention improvement. With the development of high-throughput single-cell technology, we can now decipher heterogeneity, differentiation, and intercellular communication at the single-cell level in sophisticated organs and complicated diseases. In this concise review, we aimed to summarise the advancement of emerging high-throughput single-cell technologies and re-define our understanding of liver function towards infections, including hepatitis B virus, hepatitis C virus, Plasmodium, schistosomiasis, endotoxemia, and corona virus disease 2019 (COVID-19). We also unravel previously unknown pathogenic pathways and disease mechanisms for the development of new therapeutic targets. As high-throughput single-cell technologies mature, their integration into spatial transcriptomics, multiomics, and clinical data analysis will aid in patient stratification and in developing effective treatment plans for patients with or without liver injury due to infectious diseases.
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