| Literature DB >> 29887338 |
Alex H Williams1, Tony Hyun Kim2, Forea Wang3, Saurabh Vyas4, Stephen I Ryu5, Krishna V Shenoy6, Mark Schnitzer7, Tamara G Kolda8, Surya Ganguli9.
Abstract
Perceptions, thoughts, and actions unfold over millisecond timescales, while learned behaviors can require many days to mature. While recent experimental advances enable large-scale and long-term neural recordings with high temporal fidelity, it remains a formidable challenge to extract unbiased and interpretable descriptions of how rapid single-trial circuit dynamics change slowly over many trials to mediate learning. We demonstrate a simple tensor component analysis (TCA) can meet this challenge by extracting three interconnected, low-dimensional descriptions of neural data: neuron factors, reflecting cell assemblies; temporal factors, reflecting rapid circuit dynamics mediating perceptions, thoughts, and actions within each trial; and trial factors, describing both long-term learning and trial-to-trial changes in cognitive state. We demonstrate the broad applicability of TCA by revealing insights into diverse datasets derived from artificial neural networks, large-scale calcium imaging of rodent prefrontal cortex during maze navigation, and multielectrode recordings of macaque motor cortex during brain machine interface learning.Entities:
Keywords: brain machine interfaces; dimensionality reduction; gain modulation; large-scale recordings; learning; motor control; navigation; neural data analysis; recurrent neural networks; single-trial analysis
Mesh:
Year: 2018 PMID: 29887338 PMCID: PMC6907734 DOI: 10.1016/j.neuron.2018.05.015
Source DB: PubMed Journal: Neuron ISSN: 0896-6273 Impact factor: 17.173