Computational Phenotyping of Aberrant Belief Updating in Individuals With Schizotypal Traits and Schizophrenia.

IF 9.6 1区 医学 Q1 NEUROSCIENCES
Biological Psychiatry Pub Date : 2025-01-15 Epub Date: 2024-08-30 DOI:10.1016/j.biopsych.2024.08.021
Nace Mikus, Claus Lamm, Christoph Mathys
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引用次数: 0

Abstract

Background: Psychotic experiences are thought to emerge from various interrelated patterns of disrupted belief updating, such as overestimating the reliability of sensory information and misjudging task volatility, yet these substrates have never been jointly addressed under one computational framework, and it is not clear to what degree they reflect trait-like computational patterns.

Methods: We introduce a novel hierarchical Bayesian model that describes how individuals simultaneously update their beliefs about the task volatility and noise in observation. We applied this model to data from a modified predictive inference task in a test-retest study with healthy volunteers (N = 45, 4 sessions) and examined the relationship between model parameters and schizotypal traits in a larger online sample (N = 437) and in a cohort of patients with schizophrenia (N = 100).

Results: The interclass correlations were moderate to high for model parameters and excellent for averaged belief trajectories and precision-weighted learning rates estimated through hierarchical Bayesian inference. We found that uncertainty about the task volatility was related to schizotypal traits and to positive symptoms in patients, when learning to gain rewards. In contrast, negative symptoms in patients were associated with more rigid beliefs about observational noise, when learning to avoid losses.

Conclusions: These findings suggest that individuals with schizotypal traits across the psychosis continuum are less likely to learn or use higher-order statistical regularities of the environment and showcase the potential of clinically relevant computational phenotypes for differentiating symptom groups in a transdiagnostic manner.

精神分裂症和精神分裂症患者异常信念更新的计算表型。
背景:精神病体验被认为源于各种相互关联的信念更新紊乱模式,如高估感官信息的可靠性和错误判断任务的波动性。然而,这些基质从未在一个计算框架下被联合处理过,也不清楚它们在多大程度上反映了类似特质的计算模式:我们引入了一个新颖的分层贝叶斯模型,该模型描述了个体如何同时更新他们对任务波动性和观察噪音的信念。我们将这一模型应用于对健康志愿者(45 人,4 次测试)进行的测试-重测研究中修改后的预测推理任务数据,并在更大的在线样本(437 人)和精神分裂症患者队列(100 人)中检验了模型参数与精神分裂症特质之间的关系:通过分层贝叶斯推理估算出的模型参数和平均信念轨迹以及精确加权学习率的类间相关性为中等至高等。我们发现,在学习获得奖励时,任务波动的不确定性与患者的精神分裂症特质和积极症状有关。与此相反,在学习避免损失时,患者的消极症状与对观察噪音更僵化的信念有关:这些研究结果表明,精神分裂症患者不太可能学习或利用环境中的高阶统计规律,并展示了临床相关计算表型以跨诊断方式区分症状群体的潜力。
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
Biological Psychiatry
Biological Psychiatry 医学-精神病学
CiteScore
18.80
自引率
2.80%
发文量
1398
审稿时长
33 days
期刊介绍: Biological Psychiatry is an official journal of the Society of Biological Psychiatry and was established in 1969. It is the first journal in the Biological Psychiatry family, which also includes Biological Psychiatry: Cognitive Neuroscience and Neuroimaging and Biological Psychiatry: Global Open Science. The Society's main goal is to promote excellence in scientific research and education in the fields related to the nature, causes, mechanisms, and treatments of disorders pertaining to thought, emotion, and behavior. To fulfill this mission, Biological Psychiatry publishes peer-reviewed, rapid-publication articles that present new findings from original basic, translational, and clinical mechanistic research, ultimately advancing our understanding of psychiatric disorders and their treatment. The journal also encourages the submission of reviews and commentaries on current research and topics of interest.
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