Scientific Reports (May 2024)

Unveiling gene regulatory networks during cellular state transitions without linkage across time points

  • Ruosi Wan,
  • Yuhao Zhang,
  • Yongli Peng,
  • Feng Tian,
  • Ge Gao,
  • Fuchou Tang,
  • Jinzhu Jia,
  • Hao Ge

DOI
https://doi.org/10.1038/s41598-024-62850-1
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 13

Abstract

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Abstract Time-stamped cross-sectional data, which lack linkage across time points, are commonly generated in single-cell transcriptional profiling. Many previous methods for inferring gene regulatory networks (GRNs) driving cell-state transitions relied on constructing single-cell temporal ordering. Introducing COSLIR (COvariance restricted Sparse LInear Regression), we presented a direct approach to reconstructing GRNs that govern cell-state transitions, utilizing only the first and second moments of samples between two consecutive time points. Simulations validated COSLIR’s perfect accuracy in the oracle case and demonstrated its robust performance in real-world scenarios. When applied to single-cell RT-PCR and RNAseq datasets in developmental biology, COSLIR competed favorably with existing methods. Notably, its running time remained nearly independent of the number of cells. Therefore, COSLIR emerges as a promising addition to GRN reconstruction methods under cell-state transitions, bypassing the single-cell temporal ordering to enhance accuracy and efficiency in single-cell transcriptional profiling.