Max Planck Institute for Metabolism Research, Cologne, Germany.
Translational Neuromodeling Unit, University of Zürich and Eidgenössische Technische Hochschule Zürich, Zürich, Switzerland; Department of Psychiatry, Universitäre Psychiatrische Kliniken, University of Basel, Basel, Switzerland; Krembil Centre for Neuroinformatics, Centre for Addiction and Mental Health, University of Toronto, Toronto, Ontario, Canada.
Biol Psychiatry. 2020 Jan 15;87(2):185-193. doi: 10.1016/j.biopsych.2019.09.032. Epub 2019 Oct 30.
The autistic spectrum is characterized by profound impairments of social interaction. The exact subpersonal processes, however, that underlie the observable lack of social reciprocity are still a matter of substantial controversy. Recently, it has been suggested that the autistic spectrum might be characterized by alterations of the brain's inference about the causes of socially relevant sensory signals.
We used a novel reward-based learning task that required integration of nonsocial and social cues in conjunction with computational modeling. Thirty-six healthy subjects were selected based on their score on the Autism-Spectrum Quotient (AQ), and AQ scores were assessed for correlations with cue-related model parameters and task scores.
Individual differences in AQ scores were significantly correlated with participants' total task scores, with high AQ scorers performing more poorly in the task (r = -.39, 95% confidence interval = -0.68 to -0.13). Computational modeling of the behavioral data unmasked a learning deficit in high AQ scorers, namely, the failure to integrate social context to adapt one's belief precision-the precision afforded to prior beliefs about changing states in the world-particularly in relation to the nonsocial cue.
More pronounced autistic traits in a group of healthy control subjects were related to lower scores associated with misintegration of the social cue. Computational modeling further demonstrated that these trait-related performance differences are not explained by an inability to process the social stimuli and their causes, but rather by the extent to which participants consider social information to infer the nonsocial cue.
自闭症谱系的特征是社交互动方面的深刻障碍。然而,导致观察到的缺乏社交互惠的具体亚个人过程仍然存在很大争议。最近,有人提出,自闭症谱系可能的特征是大脑对与社会相关的感官信号的原因的推断发生改变。
我们使用了一种新的基于奖励的学习任务,该任务需要结合计算模型整合非社会性和社会性线索。根据自闭症谱系商数(AQ)的得分,选择了 36 名健康受试者,并且评估了 AQ 得分与线索相关模型参数和任务得分的相关性。
AQ 得分的个体差异与参与者的总任务得分显著相关,高 AQ 得分者在任务中的表现更差(r=-.39,95%置信区间为-0.68 至-0.13)。对行为数据的计算模型揭示了高 AQ 得分者的学习缺陷,即无法将社会背景整合到适应其信念精度中——即对世界中变化状态的先验信念的精度——特别是与非社会性线索有关。
在一组健康对照组中,更明显的自闭症特征与与社会线索的错误整合相关的较低分数有关。计算模型进一步表明,这些与特质相关的表现差异不能用无法处理社会刺激及其原因来解释,而是与参与者考虑社会信息来推断非社会线索的程度有关。