Source Reconstructed MEG Data for Adaptive Circuit Dynamics Across Human Cortex During Evidence Accumulation in Changing Environments
收藏Figshare2021-04-30 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Source_Reconstructed_MEG_Data_for_Adaptive_Circuit_Dynamics_Across_Human_Cortex_During_Evidence_Accumulation_in_Changing_Environments/14170432/1
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This dataset contains source reconstructed MEG data for: Murphy PR, Wilming N, Hernandez Bocanegra DC, Prat Ortega G & Donner TH (2021). Adaptive circuit dynamics across human cortex during evidence accumulation in changing environments. <em>Nature Neuroscience</em>. Online ahead of print.<br><br> Each "*source_reconstructions*" .zip contains files for trial onset-aligned epochs (full-length trials composed of 12 evidence samples only), separately for low (1-35 Hz in steps of 1 Hz; "LF") and high (36-160 Hz in steps of 4 Hz; "HF") frequency TFR decompositions. Furthermore, each session is spread over a number of files that contain 100 trials each. Files from one epoch type can be safely concatenated in pandas.<br>Individual files can be read by using `pandas.read_hdf`. This will return a table that contains individual ROIs as columns and a multi-index that labels each data point. Specifically, the index contains a trial identifier ('trial'), a time identifier ('time', seconds relative to trial onset), an identifier for the TFR settings ('est_key') and a frequency identifier ('est_val'). See https://github.com/DonnerLab/2021_Murphy_Adaptive-Circuit-Dynamics-Across-Human-Cortex/tree/main/source_reconstruct/pymeg for code that makes and further processes datasets of this form. They are made with lcmv_peter.py and an example of further processing is sr_agg_parallel.py (in this case, aggregation of reconstructed over vertices within specified ROIs).<br>Each “*sr_behav.zip” contains behavioural (‘choices’), task (sample locations: ‘stimIn’; change-point positions: ‘pswitch’; generative distributions at end of each trial: ‘fdist’; and generative distributions per sample position: ‘distseq’) and minimal eye-tracking data (‘pupil’, ‘Xgaze’, ‘Ygaze’, all from only 0.57 s following sample onset) from the same trials in the source reconstructed datasets. Use the ‘trialID’ variable in combination with the ‘trial’ identifier in the source reconstructed datasets to align trials.<br>
创建时间:
2021-03-09



