Paper List
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A Unified Variational Principle for Branching Transport Networks: Wave Impedance, Viscous Flow, and Tissue Metabolism
This paper solves the core problem of predicting the empirically observed branching exponent (α≈2.7) in mammalian arterial trees, which neither Murray...
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Household Bubbling Strategies for Epidemic Control and Social Connectivity
This paper addresses the core challenge of designing household merging (social bubble) strategies that effectively control epidemic risk while maximiz...
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Empowering Chemical Structures with Biological Insights for Scalable Phenotypic Virtual Screening
This paper addresses the core challenge of bridging the gap between scalable chemical structure screening and biologically informative but resource-in...
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A mechanical bifurcation constrains the evolution of cell sheet folding in the family Volvocaceae
This paper addresses the core problem of why there is an evolutionary gap in species with intermediate cell numbers (e.g., 256 cells) in Volvocaceae, ...
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Bayesian Inference in Epidemic Modelling: A Beginner’s Guide Illustrated with the SIR Model
This guide addresses the core challenge of estimating uncertain epidemiological parameters (like transmission and recovery rates) from noisy, real-wor...
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Geometric framework for biological evolution
This paper addresses the fundamental challenge of developing a coordinate-independent, geometric description of evolutionary dynamics that bridges gen...
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A multiscale discrete-to-continuum framework for structured population models
This paper addresses the core challenge of systematically deriving uniformly valid continuum approximations from discrete structured population models...
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Whole slide and microscopy image analysis with QuPath and OMERO
使QuPath能够直接分析存储在OMERO服务器中的图像而无需下载整个数据集,克服了大规模研究的本地存储限制。
Uncovering statistical structure in large-scale neural activity with Restricted Boltzmann Machines
Université Paris-Saclay, CNRS, INRIA, LISN, Gif-sur-Yvette, France | Universidad Complutense de Madrid, Spain | Princeton University, USA | City University of New York, USA
30秒速读
IN SHORT: This paper addresses the core challenge of modeling large-scale neural population activity (1500-2000 neurons) with interpretable higher-order interactions, overcoming limitations of traditional pairwise maximum-entropy models.
核心创新
- Methodology Demonstrates that Restricted Boltzmann Machines can be trained on thousands of simultaneously recorded neurons using efficient MCMC sampling, achieving accurate reproduction of both pairwise and higher-order correlations.
- Methodology Provides a principled mapping from RBM parameters to explicit multi-body interaction spin models, enabling direct extraction of effective synaptic networks including higher-order couplings.
- Biology Reveals anatomically structured effective interactions: stronger intra-area couplings within visual cortical regions and weaker, more diffuse cross-area couplings, correlating with functional engagement during visual tasks.
主要结论
- RBMs accurately reproduce empirical statistics of neural recordings, matching pairwise correlations, higher-order correlations, and global population activity distributions with high fidelity.
- The inferred effective couplings show clear anatomical organization: intra-visual cortical interactions are stronger and more coherent than cross-area couplings, consistent with functional specialization.
- Despite being trained on static snapshots, RBM-generated samples via MCMC simulations accurately capture global neural relaxation dynamics, suggesting the model encodes temporal structure implicitly.
摘要: Large-scale electrophysiological recordings now allow simultaneous monitoring of thousands of neurons across multiple brain regions, revealing structured variability in neural population activity. Understanding how these collective patterns emerge from microscopic neural interactions requires models that are scalable, predictive, and interpretable. Statistical physics provides principled frameworks to address this complexity, including maximum-entropy models that offer transparent descriptions of collective neural activity in small populations, but remain largely limited to pairwise interactions and modest system sizes. Here, we use Restricted Boltzmann Machines (RBMs) to model the activity of ∼1500–2000 simultaneously recorded neurons from the Allen Institute Visual Behavior Neuropixels dataset, spanning multiple cortical and subcortical regions of the mouse brain. RBMs are energy-based models that extend the maximum-entropy framework through latent variables, enabling the capture of higher-order dependencies while allowing explicit extraction of effective synaptic networks, including interactions beyond pairwise. Recent advances in efficient Markov Chain sampling and training enable accurate learning of these models at this scale. We show that RBMs reproduce the complex statistics of neural recordings with high accuracy. Generated samples match empirical pairwise and higher-order correlations, as well as global statistics such as the distribution of population activity. Beyond accurate data reconstruction, the inferred parameters provide direct access to effective interactions between neurons, revealing dominant coordination patterns in population activity. These couplings exhibit clear anatomical structure: neurons within visual cortical areas form coherent blocks of stronger interactions, consistent with shared engagement during visually driven behavior, whereas cross-area couplings are weaker and more diffuse. Furthermore, despite not being trained to reproduce temporal dependencies, Markov Chain Monte Carlo simulations of the model accurately reproduce the global neural relaxation dynamics. These results establish RBMs as scalable tools to extract interpretable statistical structure from large-scale neural recordings, linking collective neural activity to the organization of brain regions and task-related behavior.