LapDDPM: A Conditional Graph Diffusion Model for scRNA-seq Generation with Spectral Adversarial Perturbations
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
Generating high-fidelity and biologically plausible synthetic single-cell RNA
sequencing (scRNA-seq) data, especially with conditional control, is
challenging due to its high dimensionality, sparsity, and complex biological
variations. Existing generative models often struggle to capture these unique
characteristics and ensure robustness to structural noise in cellular networks.
We introduce LapDDPM, a novel conditional Graph Diffusion Probabilistic Model
for robust and high-fidelity scRNA-seq generation. LapDDPM uniquely integrates
graph-based representations with a score-based diffusion model, enhanced by a
novel spectral adversarial perturbation mechanism on graph edge weights. Our
contributions are threefold: we leverage Laplacian Positional Encodings (LPEs)
to enrich the latent space with crucial cellular relationship information; we
develop a conditional score-based diffusion model for effective learning and
generation from complex scRNA-seq distributions; and we employ a unique
spectral adversarial training scheme on graph edge weights, boosting robustness
against structural variations. Extensive experiments on diverse scRNA-seq
datasets demonstrate LapDDPM's superior performance, achieving high fidelity
and generating biologically-plausible, cell-type-specific samples. LapDDPM sets
a new benchmark for conditional scRNA-seq data generation, offering a robust
tool for various downstream biological applications.