Event:
30.11.2020, 17:00 | Bernstein Center for Computational Neuroscience | ||
|
Event Type:
Talk
Speaker: Mark M Churchland Institute: Columbia University, New York Title: Motor Cortex in Theory and Practice |
Location:
via Zoom Großhaderner Str. 2 82152 Martinsried Host: Simon Renner Host Email: renner.simon@campus.lmu.de |
|
Abstract:
A central question in motor physiology has been whether motor cortex activity resembles muscle activity, and if not, why not? Over fifty years, extensive observations have failed to provide a concise answer, and the topic remains much debated. To provide a different perspective, we employed a novel behavioral paradigm that affords extensive comparison between time-evolving neural and muscle activity. Single motor-cortex neurons displayed many muscle-like properties, but the structure of population activity was not muscle-like. Unlike muscle activity, neural activity was structured to avoid ’trajectory tangling’: moments where similar activity patterns led to dissimilar future patterns. Avoidance of trajectory tangling was present across tasks and species. Network models revealed a potential reason for this consistent feature: low tangling confers noise robustness. Remarkably, we were able to predict motor cortex activity from muscle activity alone, by leveraging the hypothesis that muscle-like commands are embedded in additional structure that yields low tangling. Our results argue that motor cortex embeds descending commands in additional structure that ensure low tangling, and thus noise-robustness. The dominant structure in motor cortex may thus serve not a representational function (encoding specific variables) but a computational function: ensuring that outgoing commands can be generated reliably. Our results establish the utility of an emerging approach: understanding the structure of neural activity based on properties of population geometry that flow from normative principles such as noise robustness.
The talk will be streamed on Vimeo supported by the Bernstein Network: https://vimeo.com/event/449685/e321ae374c Download Link: https://vimeo.com/event/449685/e321ae374c Registration Link: |