Valence-dependent dopaminergic modulation during reversal learning in Parkinson's disease: A neurocomputational approach.

Neurobiol Learn Mem

Department of Electrical, Electronic and Information Engineering Guglielmo Marconi, University of Bologna, Campus of Cesena, I 47521 Cesena, Italy; Faculté de Pharmacie, Université de Montréal, Montreal, Quebec H3T 1J4, Canada. Electronic address:

Published: November 2024

AI Article Synopsis

  • Reinforcement learning relies on rewards and punishments, with dopamine playing a key role in modulating behavior, especially in dynamic situations like those seen in Parkinson's disease (PD).
  • The research investigates how dopamine affects learning and decision-making in PD, focusing on how medication impacts adaptability and the role of tonic dopamine in signaling the value of actions.
  • The study adapts a neurocomputational model to simulate reversal learning tasks, revealing a U-shaped relationship between dopamine levels and switch error rates, and highlights the importance of valence in learning, challenging existing views on dopamine's effects in cognitive processes related to PD.

Article Abstract

Reinforcement learning, crucial for behavior in dynamic environments, is driven by rewards and punishments, modulated by dopamine (DA) changes. This study explores the dopaminergic system's influence on learning, particularly in Parkinson's disease (PD), where medication leads to impaired adaptability. Highlighting the role of tonic DA in signaling the valence of actions, this research investigates how DA affects response vigor and decision-making in PD. DA not only influences reward and punishment learning but also indicates the cognitive effort level and risk propensity in actions, which are essential for understanding and managing PD symptoms. In this work, we adapt our existing neurocomputational model of basal ganglia (BG) to simulate two reversal learning tasks proposed by Cools et al. We first optimized a Hebb rule for both probabilistic and deterministic reversal learning, conducted a sensitivity analysis (SA) on parameters related to DA effect, and compared performances between three groups: PD-ON, PD-OFF, and control subjects. In our deterministic task simulation, we explored switch error rates after unexpected task switches and found a U-shaped relationship between tonic DA levels and switch error frequency. Through SA, we classify these three groups. Then, assuming that the valence of the stimulus affects the tonic levels of DA, we were able to reproduce the results by Cools et al. As for the probabilistic task simulation, our results are in line with clinical data, showing similar trends with PD-ON, characterized by higher tonic DA levels that are correlated with increased difficulty in both acquisition and reversal tasks. Our study proposes a new hypothesis: valence, signaled by tonic DA levels, influences learning in PD, confirming the uncorrelation between phasic and tonic DA changes. This hypothesis challenges existing paradigms and opens new avenues for understanding cognitive processes in PD, particularly in reversal learning tasks.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.nlm.2024.107985DOI Listing

Publication Analysis

Top Keywords

reversal learning
16
tonic levels
16
learning
8
learning parkinson's
8
parkinson's disease
8
learning tasks
8
three groups
8
task simulation
8
switch error
8
tonic
6

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!