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Abstract Deciphering cell identity genes is pivotal to understanding cell differentiation, development, and many diseases involving cell identity dysregulation. Here, we introduce SCIG, a machine-learning method to uncover cell identity genes in single cells. In alignment with recent reports that cell identity genes are regulated with unique epigenetic signatures, we found cell identity genes exhibit distinctive genetic sequence signatures, e.g., unique enrichment patterns of cis-regulatory elements. Using these genetic sequence signatures, along with gene expression information from single-cell RNA-seq data, enables SCIG to uncover the identity genes of a cell without a need for comparison to other cells. Cell identity gene score defined by SCIG surpassed expression value in network analysis to uncover master transcription factors regulating cell identity. Applying SCIG to the human endothelial cell atlas revealed that the tissue microenvironment is a critical supplement to master transcription factors for cell identity refinement. SCIG is publicly available at https://github.com/kaifuchenlab/SCIG , offering a valuable tool for advancing cell differentiation, development, and regenerative medicine research.
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A. Kulandaisamy
Boston Children's Hospital
Bo Xia
Guangzhou University of Chinese Medicine
Hong Chen
Ganzhou People's Hospital
Boston Children's Hospital
Boston Children's Museum
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Kulandaisamy et al. (Wed,) studied this question.
synapsesocial.com/papers/68e5a94ab6db643587543021 — DOI: https://doi.org/10.1101/2024.08.27.609808