Gene function and cell surface protein association analysis based on single-cell multiomics data

Huan Hu(Xiamen University), Zhen Feng(Wenzhou Medical University), Hai Lin(University of Chinese Academy of Sciences), Jinyan Cheng(University of Chinese Academy of Sciences), Jie Lyu(University of Chinese Academy of Sciences), Yaru Zhang(Wenzhou Medical University), Junjie Zhao(Wenzhou University), Fei Xu(Wenzhou University), Tao Lin(Zhejiang Lab), Qi Zhao(University of Science and Technology Liaoning), Jianwei Shuai(Xiamen University)
Computers in Biology and Medicine
March 1, 2023
Cited by 148Open Access
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Abstract

Single-cell transcriptomics provides researchers with a powerful tool to resolve the transcriptome heterogeneity of individual cells. However, this method falls short in revealing cellular heterogeneity at the protein level. Previous single-cell multiomics studies have focused on data integration rather than exploiting the full potential of multiomics data. Here we introduce a new analysis framework, gene function and protein association (GFPA), that mines reliable associations between gene function and cell surface protein from single-cell multimodal data. Applying GFPA to human peripheral blood mononuclear cells (PBMCs), we observe an association of epithelial mesenchymal transition (EMT) with the CD99 protein in CD4 T cells, which is consistent with previous findings. Our results show that GFPA is reliable across multiple cell subtypes and PBMC samples. The GFPA python packages and detailed tutorials are freely available at https://github.com/studentiz/GFPA.


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