Welcome to CellMirror’s documentation !
Graphical abstract
Highlights
CellMirror enbales learning a biologically meaningful common feature space
CellMirror contributes to learning interpretable features
CellMirror facilitates detecting finer domains from ST data missed by competing methods
CellMirror is robust to decipher cell populations from ST data by unpaired scRNA-seq data
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Credits
Citation
Xia J, Cui J, Huang Z, Zhang S, Yao F, Zhang Y, Zuo C. CellMirror: Deciphering Cell Populations from Spatial Transcriptomics Data by Interpretable Contrastive Learning. 2023 IEEE International Conference on Medical Artificial Intelligence (MedAI), Beijing, China, 2023, pp. 165-176, doi: 10.1109/MedAI59581.2023.00029.