Erasmus University Rotterdam (EUR)
Browse
ARCHIVE
timing_files_MID.zip (3.6 MB)
.ZIP
prepro_funcs_MID.zip (6 GB)
.ZIP
prepro_funcs_DID.zip (7.62 GB)
ARCHIVE
timingfiles_DID.zip (4.55 MB)
DOCUMENT
TaskDesign_fMRI_figshare.docx (92.75 kB)
DOCUMENT
Background_on_TaskDesign_figshare.docx (85.54 kB)
DOCUMENT
Readme_Figshare.docx (13.11 kB)
1/0
7 files

Tasks for the Evaluation of the Reward Signature

dataset
posted on 2023-02-22, 13:22 authored by Sebastian SpeerSebastian Speer, Maarten BoksemMaarten Boksem, Ale SmidtsAle Smidts

 The processing of reinforcers and punishers is crucial to adapt to an ever-changing environment and its dysregulation is prevalent in mental health and substance use disorders. While many human brain measures related to reward have been based on activity in individual brain regions, recent studies indicate that many affective and motivational processes are encoded in distributed systems that span multiple regions. Consequently, decoding these processes using individual regions yields small effect sizes and limited reliability, whereas predictive models based on distributed patterns yield larger effect sizes and excellent reliability. To create such a predictive model for the processes of rewards and losses, termed the Brain Reward Signature (BRS), we trained a model to predict the signed magnitude of monetary rewards on the Monetary Incentive Delay task (MID; N = 39) and achieved a highly significant decoding performance (92% for decoding rewards versus losses). We subsequently demonstrate the generalizability of our signature on another version of the MID in a different sample (92% decoding accuracy; N = 12) and on a gambling task from a large sample (73% decoding accuracy, N = 1084). We further provided preliminary data to characterize the specificity of the signature by illustrating that the signature map generates estimates that significantly differ between rewarding and negative feedback (92% decoding accuracy) but do not differ for conditions that differ in disgust rather than reward in a novel Disgust-Delay Task (N = 39). Finally, we show that passively viewing positive and negatively valenced facial expressions loads positively on our signature, in line with previous studies on morbid curiosity. We thus created a BRS that can accurately predict brain responses to rewards and losses in active decision making tasks, and that possibly relates to information seeking in passive observational tasks.


This is a repository for the Monetary-Incentive Delay Task and the Disgust Delay task. The uploaded data contains the preprocessed functional fMRI data and onset timing files that are needed to reproduce the analysis and results reported in the paper.


This is the link to the pre-print:

https://www.biorxiv.org/content/10.1101/2022.06.16.496388v1.abstract



History

Usage metrics

    Rotterdam School of Management

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC