Brain Large-scale manifolds (Gradients) in a Motor Reinforcement Learning task.
We had 46 subjects in functional MRI during a Motor Reinforcement Learning.
Stored as different files in RL_dataset_Mar2022/
.
Seven subjects are remove due to behavioural issues. It's marked in ./data/participants.tsv
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Also, subject SH1 excluded for not having subcortical data. Total of 8.
Cortical atlas is stored in ./data/Schaefer2018_1000Parcels_7Networks_order
.
Cortical by Dan Gale. Subcortical/Cerebellum by Corson Areshenkoff.
Time-periods during the task as follows. Each epoch is set to be 216 time-trials of each ~ 2 seconds. Other time-trials dismissed.
rest
Subject is not doing the task. 297 trs. First 3 trs dismissed.baseline
Subject is doing the task but no reward is given. 219 trs. First 3 trs dismissed.learning
Subject starts getting rewards. 619 trs. Divided into early and late sections to differentiate learned period.early
When subject starts knowing how the task has changed. First 3 trs dismissed => 3:219 trs.late
When some subjects got it right. The last 216 trs.
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Correlation matrix by Nilearn
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Gradient analysis by Brainspace
measure
Any value for a brain region. For example, value for gradient 2 on for 7Networks_LH_Vis_3.eccentricity
Euclidian distance to the center of PCA space. Sum of top 3 or 4 gradient components squared.
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Behavioural analysis. Based on task scores.
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Pairwise t-tests
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Repeated-measures ANOVA by pingouin
After including subcortical regions in gradient analysis, number of significant regions decreased from 57 to 50. No significant regions found in subcortex.
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False discovery rate (FDR) correction by Benjamini-Hochberg method
Seed connectivity of Regions of interest. Comparing shifts in functional connectivity pattern.
- Connectivity matrix
- Gradients
- Statistics
- Seed connectivity
- Behavioural