eLife (Jun 2021)

Temporally delayed linear modelling (TDLM) measures replay in both animals and humans

  • Yunzhe Liu,
  • Raymond J Dolan,
  • Cameron Higgins,
  • Hector Penagos,
  • Mark W Woolrich,
  • H Freyja Ólafsdóttir,
  • Caswell Barry,
  • Zeb Kurth-Nelson,
  • Timothy E Behrens

DOI
https://doi.org/10.7554/eLife.66917
Journal volume & issue
Vol. 10

Abstract

Read online

There are rich structures in off-task neural activity which are hypothesized to reflect fundamental computations across a broad spectrum of cognitive functions. Here, we develop an analysis toolkit – temporal delayed linear modelling (TDLM) – for analysing such activity. TDLM is a domain-general method for finding neural sequences that respect a pre-specified transition graph. It combines nonlinear classification and linear temporal modelling to test for statistical regularities in sequences of task-related reactivations. TDLM is developed on the non-invasive neuroimaging data and is designed to take care of confounds and maximize sequence detection ability. Notably, as a linear framework, TDLM can be easily extended, without loss of generality, to capture rodent replay in electrophysiology, including in continuous spaces, as well as addressing second-order inference questions, for example, its temporal and spatial varying pattern. We hope TDLM will advance a deeper understanding of neural computation and promote a richer convergence between animal and human neuroscience.

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