ICLR2026

Learning Explicit Single-Cell Dynamics Using ODE Representations

Jan-Philipp von Bassewitz, Adeel Pervez, Marco Fumero, Matthew R Robinson, Theofanis Karaletsos, Francesco Locatello

被引用 3 次

摘要

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 dynamics models, however, rely on computationally expensive optimal transport preprocessing and multi-stage training, while also not directly learning 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 learns 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. github.com/czi-ai/cell-mnn