ArXiv TLDR

Partitioning Neural Co-Variability

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2605.06995

Skyler Thomas, Brandon J. Zhu, Kathleen E. Cullen, Adam S. Charles

q-bio.QMq-bio.NC

TLDR

Introduces PMNLV, a novel model to partition neural co-variability, revealing shared population gain covariance peaks in primary visual cortex.

Key contributions

  • Presents the Poisson matrix-normal latent variable (PMNLV) model for population-level neural gain covariance.
  • Develops two estimation algorithms: Variational EM (VEM) and Kernel Tournament Method (KTM).
  • Demonstrates PMNLV accurately recovers inter-neuron and temporal covariance factors on simulated data.
  • Reveals shared population co-variability peaks in primary visual cortex and declines in higher visual areas.

Why it matters

This paper introduces a novel model to quantify shared neural co-variability, addressing a critical gap in understanding population dynamics. It reveals that shared variability peaks in primary visual cortex, offering new insights into visual hierarchy function. This framework is a powerful tool for analyzing complex neural network dynamics.

Original Abstract

Trial-to-trial variability of neural responses has been linked to important aspects of neural computation and is essential for understanding how neuronal populations respond. While current overdispersion models treat each neuron's gain as independent of each other, this assumption fails to capture the network statistics of neuronal populations. As no existing model can capture overdispersed structured spiking gain-modulation across a neural population, network-level gain covariance remains largely unstudied. We thus present the Poisson matrix-normal latent variable (PMNLV) model, which extends single-neuron overdispersion to neural populations by placing a matrix-normal prior over the latent gain with a Kronecker-factored covariance. Spike counts are Poisson-distributed with a rate equal to the sum of a per-neuron stimulus tuning term and a matrix-normal gain, passed through a quadratic soft-rectifying link. We derive two complementary estimation algorithms: a variational EM (VEM) with a matrix-normal posterior that recovers dense Kronecker factors without structural assumptions, and a Kernel Tournament Method (KTM) that performs data-driven selection over a biologically motivated kernel dictionary and composite likelihood. On simulated data, both algorithms recover the inter-neuron and temporal covariance factors and accurate tuning curves. Applying VEM to Neuropixel recordings across four cortical regions of mouse visual hierarchy, we replicate a previous finding that single-neuron marginal variability changes little across cortical areas. We then show that shared population co-variability, invisible to scalar summaries e.g., the Fano factor, peaks in primary visual cortex and declines in higher visual areas. The PMNLV framework is applicable to any simultaneously recorded population where structured gain covariance is of scientific interest.

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