| Literature DB >> 30517852 |
Sile Hu1, Davide Ciliberti2, Andres D Grosmark3, Frédéric Michon4, Daoyun Ji5, Hector Penagos6, György Buzsáki7, Matthew A Wilson6, Fabian Kloosterman8, Zhe Chen9.
Abstract
Uncovering spatial representations from large-scale ensemble spike activity in specific brain circuits provides valuable feedback in closed-loop experiments. We develop a graphics processing unit (GPU)-powered population-decoding system for ultrafast reconstruction of spatial positions from rodents' unsorted spatiotemporal spiking patterns, during run behavior or sleep. In comparison with an optimized quad-core central processing unit (CPU) implementation, our approach achieves an ∼20- to 50-fold increase in speed in eight tested rat hippocampal, cortical, and thalamic ensemble recordings, with real-time decoding speed (approximately fraction of a millisecond per spike) and scalability up to thousands of channels. By accommodating parallel shuffling in real time (computation time <15 ms), our approach enables assessment of the statistical significance of online-decoded "memory replay" candidates during quiet wakefulness or sleep. This open-source software toolkit supports the decoding of spatial correlates or content-triggered experimental manipulation in closed-loop neuroscience experiments.Entities:
Keywords: GPU; memory replay; neural decoding; place codes; population decoding; spatiotemporal patterns
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Year: 2018 PMID: 30517852 PMCID: PMC6314684 DOI: 10.1016/j.celrep.2018.11.033
Source DB: PubMed Journal: Cell Rep Impact factor: 9.423