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Learning Explicit Single-Cell Dynamics Using ODE Representations

3 October 2025
Jan-Philipp von Bassewitz
Adeel Pervez
Marco Fumero
Matthew Robinson
Theofanis Karaletsos
Francesco Locatello
    PINNAI4CE
ArXiv (abs)PDFHTML
Main:11 Pages
6 Figures
Bibliography:7 Pages
8 Tables
Appendix:8 Pages
Abstract

Modeling the dynamics of cellular differentiation is fundamental to advancing the understanding and treatment of diseases associated with this process, such as cancer. With the rapid growth of single-cell datasets, this has also become a particularly promising and active domain for machine learning. Current state-of-the-art models, however, rely on computationally expensive optimal transport preprocessing and multi-stage training, while also not discovering explicit gene interactions. To address these challenges we propose Cell-Mechanistic Neural Networks (Cell-MNN), an encoder-decoder architecture whose latent representation is a locally linearized ODE governing the dynamics of cellular evolution from stem to tissue cells. Cell-MNN is fully end-to-end (besides a standard PCA pre-processing) and its ODE representation explicitly learns biologically consistent and interpretable gene interactions. Empirically, we show that Cell-MNN achieves competitive performance on single-cell benchmarks, surpasses state-of-the-art baselines in scaling to larger datasets and joint training across multiple datasets, while also learning interpretable gene interactions that we validate against the TRRUST database of gene interactions.

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