2024
DOI: 10.1186/s13059-024-03226-6
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PMF-GRN: a variational inference approach to single-cell gene regulatory network inference using probabilistic matrix factorization

Claudia Skok Gibbs,
Omar Mahmood,
Richard Bonneau
et al.

Abstract: Inferring gene regulatory networks (GRNs) from single-cell data is challenging due to heuristic limitations. Existing methods also lack estimates of uncertainty. Here we present Probabilistic Matrix Factorization for Gene Regulatory Network Inference (PMF-GRN). Using single-cell expression data, PMF-GRN infers latent factors capturing transcription factor activity and regulatory relationships. Using variational inference allows hyperparameter search for principled model selection and direct comparison to other… Show more

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