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Characterizing immune variation and diagnostic indicators of preeclampsia by single-cell RNA sequencing and machine learning

Zhou, Wenwen; Chen, Yixuan; Zheng, Yuhui; Bai, Yong; Yin, Jianhua; Wu, Xiao-Xia; Hong, Mei; Liang, Langchao; Zhang, Jing; Gao, Ya; Sun, Ning; Li, Jiankang; Zhang, Yiwei; Wu, Linlin*; Jin, Xin*; Niu, Jianmin*
Science Citation Index Expanded
华南农业大学; 南方医科大学; 中山大学; 中国科学院研究生院; 深圳华大基因研究院; 1

摘要

Preeclampsia is a multifactorial and heterogeneous complication of pregnancy. Here, we utilize single-cell RNA sequencing to dissect the involvement of circulating immune cells in preeclampsia. Our findings reveal downregulation of immune response in lymphocyte subsets in preeclampsia, such as reduction in natural killer cells and cytotoxic genes expression, and expansion of regulatory T cells. But the activation of naive T cell and monocyte subsets, as well as increased MHC-II-mediated pathway in antigen-presenting cells were still observed in preeclampsia. Notably, we identified key monocyte subsets in preeclampsia, with significantly increased expression of angiogenesis pathways and pro-inflammatory S100 family genes in VCAN+ monocytes and IFN+ non-classical monocytes. Furthermore, four cell-type-specific machine-learning models have been developed to identify potential diagnostic indicators of preeclampsia. Collectively, our study demonstrates transcriptomic alternations of circulating immune cells and identifies immune components that could be involved in pathophysiology of preeclampsia. @@@ A study profiled transcriptomic characteristic of circulating immune cells in preeclampsia pregnancy by scRNA-seq, then develop cell-type-specific models to identify potential diagnostic indicators of preeclampsia by machine learning.

关键词

REGULATORY T-CELLS PERIPHERAL-BLOOD EARLY-PREGNANCY NK CELLS INFLAMMATION EXPRESSION PROTEINS INSIGHT