MIOFlow 2.0: A unified framework for inferring cellular stochastic dynamics from single cell and spatial transcriptomics data
Xingzhi Sun, Jo\~ao Felipe Rocha, Brett Phelan, Dhananjay Bhaskar, Guillaume Huguet, Yanlei Zhang, Alexander Tong, Ke Xu, Oluwadamilola Fasina, Mark Gerstein, Natalia Ivanova, Christine L. Chaffer, Guy Wolf, Smita Krishnaswamy

TL;DR
MIOFlow 2.0 is a comprehensive framework that infers probabilistic cellular trajectories from single-cell and spatial transcriptomics data by integrating manifold learning, optimal transport, and neural differential equations.
Contribution
It introduces a novel method combining stochastic modeling, population dynamics, and spatial context to improve trajectory inference over existing deterministic approaches.
Findings
Outperforms existing models in trajectory accuracy.
Reveals hidden signaling niches influencing cell fate.
Validated on synthetic and real biological datasets.
Abstract
Understanding cellular trajectories via time-resolved single-cell transcriptomics is vital for studying development, regeneration, and disease. A key challenge is inferring continuous trajectories from discrete snapshots. Biological complexity stems from stochastic cell fate decisions, temporal proliferation changes, and spatial environmental influences. Current methods often use deterministic interpolations treating cells in isolation, failing to capture the probabilistic branching, population shifts, and niche-dependent signaling driving real biological processes. We introduce Manifold Interpolating Optimal-Transport Flow (MIOFlow) 2.0. This framework learns biologically informed cellular trajectories by integrating manifold learning, optimal transport, and neural differential equations. It models three core processes: (1) stochasticity and branching via Neural Stochastic…
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