MARBLE: interpretable representations of neural population dynamics using geometric deep learning.

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Tác giả: Alexis Arnaudon, Mauricio Barahona, Adam Gosztolai, Robert L Peach, Pierre Vandergheynst

Ngôn ngữ: eng

Ký hiệu phân loại: 006.338 *Programs for knowledge-based systems

Thông tin xuất bản: United States : Nature methods , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 702431

The dynamics of neuron populations commonly evolve on low-dimensional manifolds. Thus, we need methods that learn the dynamical processes over neural manifolds to infer interpretable and consistent latent representations. We introduce a representation learning method, MARBLE, which decomposes on-manifold dynamics into local flow fields and maps them into a common latent space using unsupervised geometric deep learning. In simulated nonlinear dynamical systems, recurrent neural networks and experimental single-neuron recordings from primates and rodents, we discover emergent low-dimensional latent representations that parametrize high-dimensional neural dynamics during gain modulation, decision-making and changes in the internal state. These representations are consistent across neural networks and animals, enabling the robust comparison of cognitive computations. Extensive benchmarking demonstrates state-of-the-art within- and across-animal decoding accuracy of MARBLE compared to current representation learning approaches, with minimal user input. Our results suggest that a manifold structure provides a powerful inductive bias to develop decoding algorithms and assimilate data across experiments.
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