ISSN 1671-3710
CN 11-4766/R
主办:中国科学院心理研究所
出版:科学出版社

心理科学进展 ›› 2025, Vol. 33 ›› Issue (8): 1267-1274.doi: 10.3724/SP.J.1042.2025.1267 cstr: 32111.14.2025.1267

• 研究构想 •    下一篇

贝叶斯框架下社交焦虑的社会认知特性

彭玉佳1,2,3(), 王愉茜1, 鞠芊芊1, 刘峰4, 徐佳5   

  1. 1北京大学心理与认知科学学院〔行为与心理健康北京市重点实验室, 生物与机器智能教育部重点实验室〕
    2北京大学人工智能研究院, 北京 100871
    3跨媒体通用人工智能全国重点实验室, 北京通用人工智能研究院, 北京 100080
    4上海交通大学心理学院, 上海 200030
    5北京大学第六医院, 北京大学精神卫生研究所, 国家卫生健康委员会精神卫生学重点实验室〔北京大学〕, 国家精神心理疾病临床医学研究中心〔北京大学第六医院〕, 北京 100191
  • 收稿日期:2025-02-28 出版日期:2025-08-15 发布日期:2025-05-15
  • 通讯作者: 彭玉佳, E-mail: yujia_peng@pku.edu.cn
  • 基金资助:
    国家自然科学基金面上基金项目(32471151)

Investigating social cognitive characteristics of social anxiety within the Bayesian framework

PENG Yujia1,2,3(), WANG Yuxi1, JU Qianqian1, LIU Feng4, XU Jia5   

  1. 1School of Psychological and Cognitive Sciences, Beijing Key Laboratory of Behavior and Mental Health, Key Laboratory of Machine Perception (Ministry of Education), Peking University, Beijing 100871, China
    2Institute for Artificial Intelligence, Peking University, Beijing 100871, China
    3State Key Laboratory of General Artificial Intelligence, Beijing Institute for General Artificial Intelligence, Beijing 100080, China
    4School of Psychology, Shanghai Jiao Tong University, Shanghai 200030, China
    5Peking University Sixth Hospital, Peking University Institute of Mental Health, NHC Key Laboratory of Mental Health (Peking University), National Clinical Research Center for Mental Disorders (Peking University Sixth Hospital), Beijing 100191, China
  • Received:2025-02-28 Online:2025-08-15 Published:2025-05-15

摘要:

社交焦虑是焦虑障碍中一个重要的组成部分, 与异常的社会认知密不可分。以往研究发现了社交焦虑群体中社会认知的特异性, 如倾向于对情绪和意图进行负面的加工和消极的解释。然而, 社会认知特异性现象背后的机制尚不明确, 难以揭示社交焦虑症状的底层成因并指导个性化干预。本研究旨在基于认知计算建模, 回答社交焦虑社会认知特异性背后的认知神经机制。在贝叶斯框架下, 本研究提出假设, 社交焦虑的负向认知可能源于异常的先验预期。研究综合运用行为实验、脑电图(EEG)和功能磁共振成像(fMRI), 构建社交焦虑社会认知先验预期的认知神经计算模型, 刻画先验预期的动态变化规律, 并基于解码神经反馈对神经机制进行因果验证。本研究有望揭示社会认知特异性的成因和动态发展规律, 在行为和大脑层面计算建模个体差异, 推动以社交焦虑为代表的精神疾病的个性化干预。

关键词: 社会认知, 社交焦虑, 认知计算, 认知神经机制, 脑成像

Abstract:

Social anxiety disorder (SAD) is among the most common anxiety disorders, marked by overwhelming fear and avoidance of social behaviors and social scenarios, and debilitates patients’ lives and work. Previous studies have provided ample evidence of dysregulated social cognition in social anxiety, such as negative cognitive biases, demonstrating a negative processing of social information. However, the factors driving the dysregulated social cognition remain unclear, impeding the elucidation of the underlying computational neural mechanisms of social anxiety symptoms and guiding personalized interventions. Within the Bayesian framework, the current project proposed that the negative cognitive biases phenomenon may stem from negative prior expectations. By integrating psychophysics experiments, electroencephalography (EEG), functional magnetic resonance imaging (fMRI), computational modeling, and machine learning, we will systematically investigate prior expectations' characteristics, formation, and dynamic modulation.
The key innovation of this project lies in three major contributions. First, this study will be the first to propose and quantitatively examine the impact of prior expectations on dysregulated social cognition. Previous socially anxious research has primarily focused on behavioral manifestations and their associations with social information processing, yet largely overlooked the role of prior expectations in shaping social cognitive distortions. By identifying the static features and dynamic formation process of prior expectations in dysregulated social cognition, our study expands existing cognitive-behavioral models of social anxiety, providing a more comprehensive framework for understanding its underlying mechanisms.
Second, our project aims to construct a mechanistic framework of social anxiety that systematically links behavioral manifestations to cognitive mechanisms, and further to neural mechanisms. By integrating behavioral experiments, neuroimaging, and computational modeling as methodological tools, we are able to map distorted cognitive components onto their specific neural underpinnings. This integrative approach provides robust empirical evidence, thereby advancing the theoretical understanding of social anxiety and offering a foundation for future research and intervention development.
Third, this project extends the investigation to the translational level by evaluating the potential of neural decoding feedback as an intervention for social anxiety. By leveraging real-time neural data to modulate maladaptive social-cognitive expectations, we aim to assess the feasibility of neurofeedback-based treatments in social anxiety, providing a potential pathway for developing novel, data-driven therapeutic strategies.
In summary, this project not only advances the theoretical understanding of social anxiety but also explores its translational potential. By extending the traditional cognitive-behavioral model to incorporate prior expectations and constructing a comprehensive behavioral-cognitive-neural framework, it systematically maps the progressive linkage from behavioral manifestations to cognitive processes and neural underpinnings—offering a novel perspective for studying anxiety-related disorders.
Importantly, this project goes beyond theoretical contributions by identifying specific intervention targets derived from our computational framework and assessing their clinical applicability through neurofeedback. By leveraging real-time neural decoding to modulate maladaptive prior expectations, we aim to evaluate the efficacy of a novel, data-driven intervention approach. This translational effort holds promise for the development of precision-targeted treatments that can significantly enhance therapeutic outcomes for individuals with SAD.
By elucidating the mechanisms underlying dysregulated social cognition through an integrative, multi-level approach, this project lays the foundation for a paradigm shift in both research and clinical practice. We encourage the broader adoption of computational psychiatry methods, redefine the understanding of dysregulated social cognition in social anxiety, and bridge the gap between mechanistic theory and personalized intervention. Ultimately, this work paves the way toward a new era of individualized, mechanism-informed mental health care empowered by technological innovation and theoretical precision.

Key words: social cognition, social anxiety, cognitive modeling, cognitive neural mechanisms, brain imaging

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