(6/7) π§ͺ In real electrophysiology data (Neuropixels in mice), MR-LFADS predicts brain-wide effects of circuit perturbations (ALM photoinhibition) that it had never seen during training!
25.09.2025 22:26 β π 0 π 0 π¬ 1 π 0
(5/7) π We evaluate on 37 synthetic multi-region datasets, covering challenging and diverse scenarios. MR-LFADS reliably recovers both communication pathways (βeffectomesβ) and content, outperforming prior methods.
25.09.2025 22:26 β π 0 π 0 π¬ 1 π 0
(4/7)
Communication from data-constrained inferred firing rates, rather than from overly flexible latent factors
Unsupervised inference of unobserved influences
Region-specific nonlinear dynamics modules
Structured KL bottlenecks support disentangling of all above
25.09.2025 22:26 β π 2 π 0 π¬ 1 π 0
(3/7) Our contribution: Multi-Region LFADS (MR-LFADS), a sequential-VAE built on the powerful LFADS framework (Nature Methods, 2018), with 4 key design features that support accurate identification of single-trial communication:
25.09.2025 22:26 β π 0 π 0 π¬ 1 π 0
(2/7) When modeling multi-region neural recordings, we found it difficult yet critically important to disentangle communication between recorded regions, unobserved influences (e.g., unrecorded regions), and local-region neural population dynamics.
25.09.2025 22:26 β π 0 π 0 π¬ 1 π 0
Co-Lead, Google DeepMind Neuroscience Lab
Honorary Lecturer, Sainsbury Wellcome Centre, University College London
kevinjmiller.com
Computational neuroscientist at the FMI.
www.zenkelab.org
Assistant Professor at Gatech CSE. Comp neuro + Machine learning.
Scientist @AllenInstitute for Neural Dynamics interested in the organization of neuronal variability
Neural reverse engineer, scientist at Meta Reality Labs, Adjunct Prof at Stanford.
π³οΈβππ§ π¬π΄ββοΈ Neuroscientist. Associate Director of Data and Outreach at Allen Institute for Neural Dynamics. Focused on how we do Science in the Open. She/her.
comp neuro, neural manifolds, neuroAI, physics of learning
assistant professor @ harvard (physics, center for brain science, kempner institute)
proj leader @ Flatiron Institute
https://sites.google.com/site/sueyeonchung/
Postdoc at MIT in the jazayeri lab. I study how cerebello-thalamocortical interactions support non-motor function.
gabrielstine.com
Theoretical neuroscientist interested in brain-body interactions and evolution of adaptive behavior. Associate Professor at Scripps Research Institute in San Diego.
Picower Professor of Neuroscience @ MIT
Cognitive neuroscience, executive brain functions, consciousness, and bass guitar. You know, the good stuff.
ekmillerlab.mit.edu
Co-founder, Neuroblox
https://www.neuroblox.ai/
Assistant Professor in Computational Neuroscience @ UCLA
dipoppalab.com
Researcher & Educator | Neuroscience, Neurotechnology & Society | AI, Neuromodulation & Psychiatry | Neuromatch & #firstgen
Ph.D. student studying the in vivo identification of cell types and the neural dynamics of decision making in prefrontal cortex. Chand Lab @ BU; NINDS F31 Fellow; prev. UW, Allen Inst., and U. Puget Sound. From Hawaii π΄
Researcher at Google and CIFAR Fellow, working on the intersection of machine learning and neuroscience in MontrΓ©al (academic affiliations: @mcgill.ca and @mila-quebec.bsky.social).
Computational neuroscientist interested in how we learn, and dad to twin boys
Asst prof at Baylor College of Medicine
https://www.henniglab.org/
Research Associate Professor in the Department of Psychology and Senior Data Science Fellow in the eScience Institute, University of Washington | https://arokem.org/ | https://neuroinformatics.uw.edu
Developing brain controlled robotic arms at the University of Chicago.
Part of the Cortical Bionics Research Group and Sensorimotor Bionics.
Post-doc at Mila & U de MontrΓ©al in Guillaume Lajoie & Matt Perich's labs
Focus on neuroscience, RL for motor learning, neural control of movement, NeuroAI.
Neuroscientist at UW studying proprioception and motor control. Promoting the people and work in my lab (www.tuthill.casa). Also pursuing a snow fly side habit (www.snowflyproject.org).