AI Insight
This study introduces Multiplicative Interaction Channels (MICs), a novel computational framework that extends existing communication subspace methods to capture how a third variable β such as behavioral state or a third neural population β modulates interactions between two neural populations. MICs are derived as a bilinear perturbation of reduced-rank regression and parameterize modulation as a low-rank tensor, identifying triplets of source, target, and modulator activity patterns where the modulator gates the source-target interaction. Applied to calcium imaging data from prefrontal axons and visual cortex interneurons in mice, the method revealed that behavioral state asymmetrically reconfigures which prefrontal projection patterns interact with a stable set of interneuron activity patterns.
Why it matters
Understanding how behavioral states or external signals modulate communication between brain regions at cellular resolution is fundamental to deciphering circuit-level mechanisms underlying cognition, attention, and sensory processing. MICs provide a scalable, mathematically principled tool that could be applied broadly across neuroscience to study top-down modulation, neuromodulation, and inter-areal coordination in health and disease.
β οΈ Preprint β Noch nicht peer-reviewed
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Identifying subpopulations of neurons that interact with each other from simultaneous recordings of populations of many neurons is key for understanding across-brain communication with cellular resolution. Recent work identified communication subspaces, which capture additive interactions between pairs of high-dimensional neural populations through a small number of source and target activity patterns. However, no current method captures how a third, potentially multivariate variable – such as behavioral state or the activity of a third population – modulates these interactions. Here we extend the communication subspace framework by parameterizing modulation as a low-rank tensor. This identifies multiplicative interaction channels (MICs), defined as triplets of source, target, and modulator activity patterns, in which the modulator pattern gates the source-target interaction. We derive MICs as a bilinear perturbation of reduced-rank regression. We develop a hierarchical fitting pipeline and provide a closed-form decomposition that quantifies whether modulation reshapes the modulator-averaged baseline interaction, recruits private dimensions of one population, or opens new interactions. In simulations, MICs reliably recover the presence and geometry of ground-truth modulation even in the high-dimensional, low-sample regime. Applying MICs to simultaneous calcium imaging of prefrontal axons and interneurons in the visual cortex revealed that behavioral state asymmetrically modulates top-down interactions, reconfiguring the patterns of prefrontal projections that interact with a stable set of visual interneuron activity patterns. By providing an efficient and compact characterization of modulatory interactions, MICs enable asking new questions about how potentially high-dimensional variables shape interactions between neural populations.
Source: Decomposing the modulation of interactions between neuronal populations