Data and code for Crombie et al. "Spiking activity in the visual thalamus is coupled to pupil dynamics across temporal scales"

Davide Crombie eaaff4d5d9 Upload analysis scripts 1 month ago
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README.md

pupil_timescales_dLGN

Data and code for Crombie et al. "Spiking activity in the visual thalamus is coupled to pupil dynamics across temporal scales"

How to

Figures

To generate figures from already processed data, copy the *.pkl data files out of data/original_cooked/ and data/original_raw into data/ and then run the corresponding cells in the figures_*.ipynp Jupyter notebooks. Note that notebook cells should be run in order to avoid variable name conflicts. Figures will by default be stored in the figures/ folder, which also contains sub-folder

Note : Because many of the analyses involve randomization (e.g. comparison to random permutations of the data), the original figures may only be exactly reproduced by using the data files from the original_cooked folder.

Analyses

Data for this project is stored as "pickled" Pandas DataFrame objects. The "raw" data, including pupil_*.pkl, spikes_*.pkl, ball_*.pkl, and trials_*.pkl, are minimally-processed data to be used in further analyses.

To re-generate the processed ("cooked") data, run the corresponding *.py file with the desired arguments. The positional argument e_name specifies the experiment name, and is required for all scripts. It can be one of

  • 'spontaneous' : experiments where the monitor displayed a uniform gray screen
  • 'sparsenoise' : experiments with sparse noise visual stimulation
  • 'dark' : experiments where the display monitor was switched off and other sources of illumination were covered
  • 'natmov' : experiments with repeated trial of a naturalistic video clip
  • 'natmov_opto' : experiments with repeated trials of a naturalistic video clip, trials with optogenetic stimulation of V1 PV neurons are interleaved pseudo-randomly

Note : Spontaneous and sparse noise experiments are generally analyzed together, but the analysis scripts need to be run separately for each experiment type.

Other arguments may include:

Spike type : --spk_type -s

  • 'tonicskp' : tonic spikes, i.e. all spikes that are not part of a burst
  • 'burst' : burst events, i.e. the first spike in a burst
  • 'spk' : all spikes, i.e. any spike regardless of whether it is part of a burst or not

Time ranges : --tranges -t

  • 'run'
  • 'sit'
  • 'nosaccade'
  • 'noopto'
  • 'desync'
  • 'sizematched'