Center for Psychiatry Research (CPF), Center for Cognitive and Computational Neuropsychiatry (CCNP), Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.
Department of Psychiatry (UPK), University of Basel, Basel, Switzerland.
Schizophr Bull. 2023 Nov 29;49(6):1425-1436. doi: 10.1093/schbul/sbad084.
The neurocomputational framework of predictive processing (PP) provides a promising approach to explaining delusions, a key symptom of psychotic disorders. According to PP, the brain makes inferences about the world by weighing prior beliefs against the available sensory data. Mismatches between prior beliefs and sensory data result in prediction errors that may update the brain's model of the world. Psychosis has been associated with reduced weighting of priors relative to the sensory data. However, delusional beliefs are highly resistant to change, suggesting increased rather than decreased weighting of priors. We propose that this "delusion paradox" can be resolved within a hierarchical PP model: Reduced weighting of prior beliefs at low hierarchical levels may be compensated by an increased influence of higher-order beliefs represented at high hierarchical levels, including delusional beliefs. This may sculpt perceptual processing into conformity with delusions and foster their resistance to contradictory evidence.
We review several lines of experimental evidence on low- and high-level processes, and their neurocognitive underpinnings in delusion-related phenotypes and link them to predicted processing.
The reviewed evidence supports the notion of decreased weighting of low-level priors and increased weighting of high-level priors, in both delusional and delusion-prone individuals. Moreover, we highlight the role of prefrontal cortex as a neural basis for the increased weighting of high-level prior beliefs and discuss possible clinical implications of the proposed hierarchical predictive-processing model.
Our review suggests the delusion paradox can be resolved within a hierarchical PP model.
预测加工(PP)的神经计算框架为解释妄想这一精神障碍的主要症状提供了一种很有前景的方法。根据 PP,大脑通过权衡先验信念和可用的感觉数据来对世界做出推断。先验信念与感觉数据之间的不匹配会导致预测误差,从而可能更新大脑对世界的模型。精神疾病与先验信念相对于感觉数据的权重降低有关。然而,妄想信念很难改变,这表明先验信念的权重增加而不是减少。我们提出,这种“妄想悖论”可以在分层 PP 模型中得到解决:低层次先验信念的权重降低可能会被高层次信念的影响所补偿,这些信念包括妄想信念。这可能会将感知加工塑造成与妄想相符,并促进它们对矛盾证据的抵抗。
我们回顾了一些关于低层次和高层次过程的实验证据,以及它们在与妄想相关的表型中的神经认知基础,并将其与预测的加工联系起来。
综述的证据支持了低层次先验权重降低和高层次先验权重增加的观点,无论是在妄想者还是易妄想者中都是如此。此外,我们强调了前额叶皮层作为增加高层次先验信念权重的神经基础的作用,并讨论了所提出的分层预测加工模型的可能临床意义。
我们的综述表明,妄想悖论可以在分层 PP 模型中得到解决。