Inferring Active Neural Circuits Using Diffusion Scores
Savik Kinger, Johannes Bertram, Luciano Dyballa, Eviatar Yemini, Steven W. Zucker

TL;DR
This paper introduces SBTG, a novel method leveraging denoising score models to infer lag-specific neural circuit interactions from population activity data, validated on C. elegans imaging.
Contribution
It presents a new approach that estimates Jacobians of neural dynamics without parametric assumptions, improving circuit inference accuracy.
Findings
Recovered lag-specific circuit structure in C. elegans data
Enhanced alignment with known connectomes
Identified cell-type-specific temporal organization
Abstract
In biological systems, neural circuits compute through directed, short-latency interactions whose effects unfold across multiple time scales and behavioral contexts. We address the problem of inferring these local, lag-specific interactions from sampled neural population activity under varying stimuli, without assuming a parametric form for the underlying dynamics. Our approach leverages denoising score models by estimating joint-window scores over consecutive activity snapshots (i.e., brain states) and converting these scores into calibrated, directed edge tests via cross-block score products. The key insight is that these products recover the Jacobian of the transition map between brain states under nonlinear dynamics. To cleanly separate lag-specific effects, we introduce minimal multi-block windows that condition on intermediate time points, avoiding the omitted-lag bias inherent in…
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