Division of Neuroscience and Experimental Psychology, University of Manchester, Manchester, UK.
Centre for Biostatistics, University of Manchester, Manchester, UK.
Cognition. 2019 Jan;182:127-139. doi: 10.1016/j.cognition.2018.08.022. Epub 2018 Sep 19.
The thoughts and feelings people have about pain (referred to as 'pain expectations') are known to alter the perception of pain. However little is known about the cognitive processes that underpin pain expectations, or what drives the differing effect that pain expectations have between individuals. This paper details the testing of a model of pain perception which formalises the response to pain in terms of a Bayesian prior-to-posterior updating process. Using data acquired from a short and deception-free predictive cue task, it was found that this Bayesian model predicted ratings of pain better than other, simpler models. At the group level, the results confirmed two core predictions of predictive coding; that expectation alters perception, and that increased uncertainty in the expectation reduces its impact on perception. The addition of parameters relating to trait differences in pain expectation improved the fit of the model, suggesting that such traits play a significant role in perception above and beyond the influence of expectations triggered by predictive cues. When the model parameters were allowed to vary by participant, the model's fit improved further. This final model produced a characterisation of each individual's sensitivity to pain expectations. This model is relevant for the understanding of the cognitive basis of pain expectations and could potentially act as a useful tool for guiding patient stratification and clinical experimentation.
人们对疼痛的想法和感受(称为“疼痛预期”)已知会改变对疼痛的感知。然而,人们对构成疼痛预期的认知过程知之甚少,也不知道是什么导致了疼痛预期在个体之间产生不同的影响。本文详细介绍了疼痛感知模型的测试,该模型将疼痛的反应形式化为贝叶斯先验到后验更新过程。使用从简短且无欺骗性的预测线索任务中获得的数据,发现该贝叶斯模型比其他更简单的模型更能准确预测疼痛评分。在群体水平上,结果证实了预测编码的两个核心预测;即预期会改变感知,并且预期的不确定性增加会降低其对感知的影响。增加与疼痛预期的特质差异相关的参数可提高模型的拟合度,这表明这些特质在预测线索引发的预期影响之外,对感知有重要作用。当允许模型参数因参与者而异时,模型的拟合度进一步提高。该最终模型对每个人对疼痛预期的敏感性进行了特征描述。该模型与疼痛预期的认知基础的理解有关,并且可能作为指导患者分层和临床实验的有用工具。