IANC, School of Informatics, University of Edinburgh, Edinburgh, United Kingdom.
Department of Psychology, UC Riverside, Riverside, United States.
Elife. 2018 May 14;7:e34115. doi: 10.7554/eLife.34115.
Recent theories propose that schizophrenia/schizotypy and autistic spectrum disorder are related to impairments in Bayesian inference that is, how the brain integrates sensory information (likelihoods) with prior knowledge. However existing accounts fail to clarify: (i) how proposed theories differ in accounts of ASD vs. schizophrenia and (ii) whether the impairments result from weaker priors or enhanced likelihoods. Here, we directly address these issues by characterizing how 91 healthy participants, scored for autistic and schizotypal traits, implicitly learned and combined priors with sensory information. This was accomplished through a visual statistical learning paradigm designed to quantitatively assess variations in individuals' likelihoods and priors. The acquisition of the priors was found to be intact along both traits spectra. However, autistic traits were associated with more veridical perception and weaker influence of expectations. Bayesian modeling revealed that this was due, not to weaker prior expectations, but to more precise sensory representations.
最近的理论提出,精神分裂症/精神分裂症和自闭症谱系障碍与贝叶斯推理的障碍有关,即大脑如何将感官信息(可能性)与先验知识结合起来。然而,现有的解释未能阐明:(i)在自闭症谱系障碍和精神分裂症的解释中,不同的理论有何不同,以及(ii)这些障碍是由于先验知识较弱还是可能性增强所致。在这里,我们通过描述 91 名健康参与者如何通过一个视觉统计学习范式,对感觉信息进行隐含的学习和组合,直接解决这些问题。该范式旨在定量评估个体可能性和先验知识的变化,以此来完成这个任务。结果发现,这两种特质的先验知识获取都没有受到影响。然而,自闭症特质与更真实的感知和更弱的期望影响有关。贝叶斯模型表明,这不是由于较弱的先验期望,而是由于更精确的感官表现。