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Matt Golub

@mattgolub.bsky.social

Assistant Professor Paul G. Allen School of Computer Science & Engineering

89 Followers  |  100 Following  |  7 Posts  |  Joined: 24.04.2025  |  1.5914

Latest posts by mattgolub.bsky.social on Bluesky

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Allen School researchers develop machine learning technique to capture the chatter between brain regions - Allen School News Understanding how different parts of the brain communicate is like trying to follow conversations at a crowded party. Neuroscientists face a similar challenge: even when they can record signals from m...

(7/7) We see MR-LFADS as a promising new tool for discovering principles of brain-wide information processing from large-scale neural datasets. Feedback, questions, or ideas are welcome!

And here’s a great blog post overview by Kristine White @uwcse.bsky.social : tinyurl.com/3h9yd6uu

25.09.2025 22:26 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 0    πŸ“Œ 0

(6/7) πŸ§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€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0

(5/7) πŸ” We evaluate on 37 synthetic multi-region datasets, covering challenging and diverse scenarios. MR-LFADS reliably recovers both communication pathways (β€œeffectomes”) and content, outperforming prior methods.

25.09.2025 22:26 β€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 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€” πŸ‘ 2    πŸ” 0    πŸ’¬ 1    πŸ“Œ 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€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 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€” πŸ‘ 0    πŸ” 0    πŸ’¬ 1    πŸ“Œ 0
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Accurate identification of communication between multiple interacting neural populations Neural recording technologies now enable simultaneous recording of population activity across many brain regions, motivating the development of data-driven models of communication between brain region...

(1/n) How can we infer single-trial communication between 🧠 regions? Check out our ICML 2025 paper: β€œAccurate Identification of Communication Between Multiple Interacting Neural Populations,” by Belle Liu and @jsacks.bsky.social in my lab: arxiv.org/abs/2506.19094

25.09.2025 22:26 β€” πŸ‘ 24    πŸ” 8    πŸ’¬ 1    πŸ“Œ 0

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