scholarly journals Developmental Differences in Probabilistic Reversal Learning: A Computational Modeling Approach

2021 ◽  
Vol 14 ◽  
Author(s):  
Eileen Oberwelland Weiss ◽  
Jana A. Kruppa ◽  
Gereon R. Fink ◽  
Beate Herpertz-Dahlmann ◽  
Kerstin Konrad ◽  
...  

Cognitive flexibility helps us to navigate through our ever-changing environment and has often been examined by reversal learning paradigms. Performance in reversal learning can be modeled using computational modeling which allows for the specification of biologically plausible models to infer psychological mechanisms. Although such models are increasingly used in cognitive neuroscience, developmental approaches are still scarce. Additionally, though most reversal learning paradigms have a comparable design regarding timing and feedback contingencies, the type of feedback differs substantially between studies. The present study used hierarchical Gaussian filter modeling to investigate cognitive flexibility in reversal learning in children and adolescents and the effect of various feedback types. The results demonstrate that children make more overall errors and regressive errors (when a previously learned response rule is chosen instead of the new correct response after the initial shift to the new correct target), but less perseverative errors (when a previously learned response set continues to be used despite a reversal) adolescents. Analyses of the extracted model parameters of the winning model revealed that children seem to use new and conflicting information less readily than adolescents to update their stimulus-reward associations. Furthermore, more subclinical rigidity in everyday life (parent-ratings) is related to less explorative choice behavior during the probabilistic reversal learning task. Taken together, this study provides first-time data on the development of the underlying processes of cognitive flexibility using computational modeling.

Author(s):  
Lauren M. Schmitt ◽  
John A. Sweeney ◽  
Craig A. Erickson ◽  
Rebecca Shaffer

AbstractCognitive flexibility deficits are a hallmark feature of autism spectrum disorder (ASD), but few evidence-based behavioral interventions have successfully addressed this treatment target. Outcome measurement selection may help account for previous findings. The probabilistic reversal learning task (PRL) is a measure of cognitive flexibility previously validated for use in ASD, but its use as an outcome measure has not yet been assessed. The current study examined the feasibility, reproducibility, and sensitivity of PRL in a within-subjects trial of Regulating Together, a group-based intervention targeting emotion regulation. We demonstrated the PRL is highly feasible, showed test–retest reproducibility, and is sensitive to detect change following the intervention. Our findings demonstrate the PRL task may be a useful outcome measure of cognitive flexibility in future intervention trials in ASD.


2021 ◽  
Author(s):  
Maria Waltmann ◽  
Florian Schlagenhauf ◽  
Lorenz Deserno

Task-based measures that capture neurocognitive processes can help bridge the gap between brain and behavior. To transfer tasks to clinical application, reliability is a crucial benchmark because it poses an upper bound to potential correlations with other variables (e.g., symptom or brain data). However, the reliability of many task-readouts is low. In this study, we scrutinized the re-test reliability of a probabilistic reversal learning task (PRLT) that is frequently used to characterize cognitive flexibility in psychiatric populations. We analyzed data from N=40 healthy subjects, who completed the PRLT twice. We focused on how individual metrics are derived, i.e., whether data was partially pooled across participants and whether priors were used to inform estimates. We compared the reliability of the resulting indices across sessions, as well as the internal consistency of a selection of indices. We find good to excellent reliability for behavioral indices as derived from mixed-effects models that include data from both sessions. The internal consistency was good to excellent. For indices derived from computational modelling, we find excellent reliability when using hierarchical estimation with empirical priors and including data from both sessions. Our results indicate that the PRLT is well equipped to measure individual differences of cognitive flexibility in reinforcement learning. However, this depends heavily on hierarchical modelling of the longitudinal data (whether sessions are modelled separately or jointly), on estimation methods, and the combination of parameters included in computational models. We discuss implications for the applicability of PRLT indices in psychiatric research and as diagnostic tools.


2017 ◽  
Vol 117 ◽  
pp. 219-226 ◽  
Author(s):  
Ariel Zeleznikow-Johnston ◽  
Emma L. Burrows ◽  
Thibault Renoir ◽  
Anthony J. Hannan

2013 ◽  
Author(s):  
Anna-Maria D'Cruz ◽  
Michael E. Ragozzino ◽  
Matthew W. Mosconi ◽  
Sunil Shrestha ◽  
Edwin H. Cook ◽  
...  

2020 ◽  
Vol 87 (9) ◽  
pp. S460
Author(s):  
Rachel Taylor ◽  
Larry Simmons ◽  
Emily Scott ◽  
Matthew May ◽  
Boris Ngouajio ◽  
...  

2012 ◽  
Vol 8 (4S_Part_6) ◽  
pp. P210-P210 ◽  
Author(s):  
Anne Marie Hernier ◽  
Stephanie Paillard ◽  
Vincent Castagne ◽  
David Virley

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