Computational mechanisms underlying the impact of Pavlovian bias on instrumental learning in problematic social media users.

IF 6.6 1区 医学 Q1 PSYCHIATRY
Lu Liu, Yi-Xu Pang, Zhi-Hao Song, Si-Jia Chen, Ying-Yi Han, Yuan-Wei Yao
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引用次数: 0

Abstract

Background and aims: Problematic social media use (PSMU), a potential behavioral addiction, has become a worldwide mental health concern. An imbalanced interaction between Pavlovian and instrumental learning systems has been proposed to be central to addiction. However, it remains unclear whether individuals with PSMU also over-rely on the Pavlovian system when flexible instrumental learning is required.

Methods: To address this question, we used an orthogonalized go/no-go task that distinguished two axes of behavioral control during associative learning: valence (reward or punishment) and action (approach or avoidance). We compared the learning performance of 33 individuals with PSMU and 32 regular social media users in this task. Moreover, latent cognitive factors involved in this task, such as learning rate and reward sensitivity, were estimated using a computational modeling approach.

Results: The PSMU group showed worse learning performance when Pavlovian and instrumental systems were incongruent in the reward, but not the punishment, domain. Computational modeling results showed a higher learning rate and lower reward sensitivity in the PSMU group than in the control group.

Conclusions: This study elucidated the computational mechanisms underlying suboptimal instrumental learning in individuals with PSMU. These findings not only highlight the potential of computational modeling to advance our understanding of PSMU, but also shed new light on the development of effective interventions for this disorder.

巴甫洛夫偏见对问题社交媒体用户工具性学习影响的计算机制。
背景和目的:社交媒体使用问题(PSMU)是一种潜在的行为成瘾,已成为一个全球性的心理健康问题。巴甫洛夫和工具学习系统之间的不平衡相互作用被认为是成瘾的核心。然而,当需要灵活的工具学习时,PSMU个体是否也过度依赖巴甫洛夫系统仍不清楚。方法:为了解决这个问题,我们使用了一个正交化的围棋/不围棋任务,该任务区分了联想学习过程中的两个行为控制轴:效价(奖励或惩罚)和行动(接近或回避)。在这项任务中,我们比较了33名PSMU个体和32名经常使用社交媒体的个体的学习表现。此外,使用计算建模方法估计了该任务中涉及的潜在认知因素,如学习率和奖励敏感性。结果:当巴甫洛夫系统和工具系统在奖励领域不一致时,PSMU组的学习成绩较差,而在惩罚领域则不一致。计算模型结果显示,与对照组相比,PSMU组的学习率更高,奖励敏感性更低。结论:本研究阐明了PSMU个体次优工具性学习的计算机制。这些发现不仅突出了计算建模的潜力,以促进我们对PSMU的理解,而且为开发有效的干预措施提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
12.30
自引率
7.70%
发文量
91
审稿时长
20 weeks
期刊介绍: The aim of Journal of Behavioral Addictions is to create a forum for the scientific information exchange with regard to behavioral addictions. The journal is a broad focused interdisciplinary one that publishes manuscripts on different approaches of non-substance addictions, research reports focusing on the addictive patterns of various behaviors, especially disorders of the impulsive-compulsive spectrum, and also publishes reviews in these topics. Coverage ranges from genetic and neurobiological research through psychological and clinical psychiatric approaches to epidemiological, sociological and anthropological aspects.
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