Department of Engineering, University of Cambridge, Trumpington Street, Cambridge, CB2 1PZ, UK.
Wellcome Centre for Integrative Neuroimaging, John Radcliffe Hospital, Headington, Oxford, OX3 9DU, UK.
Nat Commun. 2022 Nov 3;13(1):6613. doi: 10.1038/s41467-022-34283-9.
Pain invariably changes over time. These fluctuations contain statistical regularities which, in theory, could be learned by the brain to generate expectations and control responses. We demonstrate that humans learn to extract these regularities and explicitly predict the likelihood of forthcoming pain intensities in a manner consistent with optimal Bayesian inference with dynamic update of beliefs. Healthy participants received probabilistic, volatile sequences of low and high-intensity electrical stimuli to the hand during brain fMRI. The inferred frequency of pain correlated with activity in sensorimotor cortical regions and dorsal striatum, whereas the uncertainty of these inferences was encoded in the right superior parietal cortex. Unexpected changes in stimulus frequencies drove the update of internal models by engaging premotor, prefrontal and posterior parietal regions. This study extends our understanding of sensory processing of pain to include the generation of Bayesian internal models of the temporal statistics of pain.
疼痛会随着时间的推移而不断变化。这些波动包含着统计规律,理论上大脑可以通过学习来产生预期并控制反应。我们证明了人类能够学会提取这些规律,并以与最优贝叶斯推断一致的方式明确预测即将到来的疼痛强度,这种预测方式会动态更新信念。健康参与者在手接受大脑 fMRI 期间接受低强度和高强度电刺激的概率波动序列。推断出的疼痛频率与感觉运动皮质区域和背侧纹状体的活动相关,而这些推断的不确定性则由右顶上小叶编码。刺激频率的意外变化通过参与运动前区、前额叶和顶后区来驱动内部模型的更新。这项研究扩展了我们对疼痛感觉处理的理解,包括生成疼痛时间统计的贝叶斯内部模型。