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. 2023 Nov 1:340:694-702.
doi: 10.1016/j.jad.2023.08.075. Epub 2023 Aug 15.

Reward and punishment learning deficits among bipolar disorder subtypes

Affiliations

Reward and punishment learning deficits among bipolar disorder subtypes

Arnaud Pouchon et al. J Affect Disord. .

Abstract

Background: Reward sensitivity is an essential dimension related to mood fluctuations in bipolar disorder (BD), but there is currently a debate around hypersensitivity or hyposensitivity hypotheses to reward in BD during remission, probably related to a heterogeneous population within the BD spectrum and a lack of reward bias evaluation. Here, we examine reward maximization vs. punishment avoidance learning within the BD spectrum during remission.

Methods: Patients with BD-I (n = 45), BD-II (n = 34) and matched (n = 30) healthy controls (HC) were included. They performed an instrumental learning task designed to dissociate reward-based from punishment-based reinforcement learning. Computational modeling was used to identify the mechanisms underlying reinforcement learning performances.

Results: Behavioral results showed a significant reward learning deficit across BD subtypes compared to HC, captured at the computational level by a lower sensitivity to rewards compared to punishments in both BD subtypes. Computational modeling also revealed a higher choice randomness in BD-II compared to BD-I that reflected a tendency of BD-I to perform better during punishment avoidance learning than BD-II.

Limitations: Our patients were not naive to antipsychotic treatment and were not euthymic (but in syndromic remission) according to the International Society for Bipolar Disorder definition.

Conclusions: Our results are consistent with the reward hyposensitivity theory in BD. Computational modeling suggests distinct underlying mechanisms that produce similar observable behaviors, making it a useful tool for distinguishing how symptoms interact in BD versus other disorders. In the long run, a better understanding of these processes could contribute to better prevention and management of BD.

Keywords: Bipolar disorder(1); Computational biology(6); learning(3); punishment(5); reinforcement(2); reward(4).

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Conflict of interest statement

Declaration of competing interest FV has been invited to scientific meetings, consulted and/or served as speaker and received compensation by Lundbeck, Servier, Recordati, Janssen, Otsuka, LivaNova, and Chiesi. He has received research support by Lundbeck and LivaNova. None of these links of interest are related to this work. AP, CD, MG, MP, JB declare that no competing interests exist.

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