English

Lingshu-Cell: A generative cellular world model for transcriptome modeling toward virtual cells

Quantitative Methods 2026-03-31 v1 Artificial Intelligence Genomics

Abstract

Modeling cellular states and predicting their responses to perturbations are central challenges in computational biology and the development of virtual cells. Existing foundation models for single-cell transcriptomics provide powerful static representations, but they do not explicitly model the distribution of cellular states for generative simulation. Here, we introduce Lingshu-Cell, a masked discrete diffusion model that learns transcriptomic state distributions and supports conditional simulation under perturbation. By operating directly in a discrete token space that is compatible with the sparse, non-sequential nature of single-cell transcriptomic data, Lingshu-Cell captures complex transcriptome-wide expression dependencies across approximately 18,000 genes without relying on prior gene selection, such as filtering by high variability or ranking by expression level. Across diverse tissues and species, Lingshu-Cell accurately reproduces transcriptomic distributions, marker-gene expression patterns and cell-subtype proportions, demonstrating its ability to capture complex cellular heterogeneity. Moreover, by jointly embedding cell type or donor identity with perturbation, Lingshu-Cell can predict whole-transcriptome expression changes for novel combinations of identity and perturbation. It achieves leading performance on the Virtual Cell Challenge H1 genetic perturbation benchmark and in predicting cytokine-induced responses in human PBMCs. Together, these results establish Lingshu-Cell as a flexible cellular world model for in silico simulation of cell states and perturbation responses, laying the foundation for a new paradigm in biological discovery and perturbation screening.

Keywords

Cite

@article{arxiv.2603.25240,
  title  = {Lingshu-Cell: A generative cellular world model for transcriptome modeling toward virtual cells},
  author = {Han Zhang and Guo-Hua Yuan and Chaohao Yuan and Tingyang Xu and Tian Bian and Hong Cheng and Wenbing Huang and Deli Zhao and Yu Rong},
  journal= {arXiv preprint arXiv:2603.25240},
  year   = {2026}
}
R2 v1 2026-07-01T11:38:55.652Z