Corlett Philip R, Honey Garry D, Fletcher Paul C
Department of Psychiatry, Yale University, New Haven, CT, USA.
Roche Switzerland, Basel, Switzerland.
J Psychopharmacol. 2016 Nov;30(11):1145-1155. doi: 10.1177/0269881116650087. Epub 2016 May 25.
In 2007, we proposed an explanation of delusion formation as aberrant prediction error-driven associative learning. Further, we argued that the NMDA receptor antagonist ketamine provided a good model for this process. Subsequently, we validated the model in patients with psychosis, relating aberrant prediction error signals to delusion severity. During the ensuing period, we have developed these ideas, drawing on the simple principle that brains build a model of the world and refine it by minimising prediction errors, as well as using it to guide perceptual inferences. While previously we focused on the prediction error signal per se, an updated view takes into account its precision, as well as the precision of prior expectations. With this expanded perspective, we see several possible routes to psychotic symptoms - which may explain the heterogeneity of psychotic illness, as well as the fact that other drugs, with different pharmacological actions, can produce psychotomimetic effects. In this article, we review the basic principles of this model and highlight specific ways in which prediction errors can be perturbed, in particular considering the reliability and uncertainty of predictions. The expanded model explains hallucinations as perturbations of the uncertainty mediated balance between expectation and prediction error. Here, expectations dominate and create perceptions by suppressing or ignoring actual inputs. Negative symptoms may arise due to poor reliability of predictions in service of action. By mapping from biology to belief and perception, the account proffers new explanations of psychosis. However, challenges remain. We attempt to address some of these concerns and suggest future directions, incorporating other symptoms into the model, building towards better understanding of psychosis.
2007年,我们提出将妄想形成解释为异常预测误差驱动的联想学习。此外,我们认为N-甲基-D-天冬氨酸(NMDA)受体拮抗剂氯胺酮为这一过程提供了一个良好的模型。随后,我们在精神病患者中验证了该模型,将异常预测误差信号与妄想严重程度联系起来。在随后的时期里,我们发展了这些观点,借鉴了大脑构建世界模型并通过最小化预测误差来完善它,以及用它来指导感知推理的简单原则。虽然之前我们关注的是预测误差信号本身,但更新后的观点考虑了其精度以及先验期望的精度。从这个扩展的角度来看,我们看到了通往精神病症状的几种可能途径——这可能解释了精神病性疾病的异质性,以及其他具有不同药理作用的药物会产生拟精神病效应的事实。在本文中,我们回顾了该模型的基本原理,并强调了预测误差可能受到干扰的具体方式,特别是考虑到预测的可靠性和不确定性。扩展后的模型将幻觉解释为期望与预测误差之间由不确定性介导的平衡受到干扰。在这里,期望占主导地位,并通过抑制或忽略实际输入来产生感知。阴性症状可能由于服务于行动的预测可靠性差而出现。通过从生物学映射到信念和感知,该解释为精神病提供了新的解释。然而,挑战依然存在。我们试图解决其中一些问题,并提出未来的方向,将其他症状纳入模型,以更好地理解精神病。