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工具性学习模型中安慰剂镇痛的贝叶斯预测

Bayesian prediction of placebo analgesia in an instrumental learning model.

作者信息

Jung Won-Mo, Lee Ye-Seul, Wallraven Christian, Chae Younbyoung

机构信息

Acupuncture & Meridian Science Research Center, College of Korean Medicine, Kyung Hee University, Seoul, Republic of Korea.

Department of Brain Cognitive Engineering, Korea University, Seoul, Republic of Korea.

出版信息

PLoS One. 2017 Feb 22;12(2):e0172609. doi: 10.1371/journal.pone.0172609. eCollection 2017.

Abstract

Placebo analgesia can be primarily explained by the Pavlovian conditioning paradigm in which a passively applied cue becomes associated with less pain. In contrast, instrumental conditioning employs an active paradigm that might be more similar to clinical settings. In the present study, an instrumental conditioning paradigm involving a modified trust game in a simulated clinical situation was used to induce placebo analgesia. Additionally, Bayesian modeling was applied to predict the placebo responses of individuals based on their choices. Twenty-four participants engaged in a medical trust game in which decisions to receive treatment from either a doctor (more effective with high cost) or a pharmacy (less effective with low cost) were made after receiving a reference pain stimulus. In the conditioning session, the participants received lower levels of pain following both choices, while high pain stimuli were administered in the test session even after making the decision. The choice-dependent pain in the conditioning session was modulated in terms of both intensity and uncertainty. Participants reported significantly less pain when they chose the doctor or the pharmacy for treatment compared to the control trials. The predicted pain ratings based on Bayesian modeling showed significant correlations with the actual reports from participants for both of the choice categories. The instrumental conditioning paradigm allowed for the active choice of optional cues and was able to induce the placebo analgesia effect. Additionally, Bayesian modeling successfully predicted pain ratings in a simulated clinical situation that fits well with placebo analgesia induced by instrumental conditioning.

摘要

安慰剂镇痛作用主要可以用巴甫洛夫条件反射范式来解释,即被动给予的提示与减轻疼痛相关联。相比之下,操作性条件反射采用的是一种可能与临床环境更相似的主动范式。在本研究中,采用了一种操作性条件反射范式,即在模拟临床情境中进行一种经过改良的信任游戏来诱导安慰剂镇痛作用。此外,应用贝叶斯模型根据个体的选择来预测其安慰剂反应。24名参与者参与了一场医疗信任游戏,在接受参考疼痛刺激后,要做出从医生处接受治疗(效果更好但成本高)还是从药房接受治疗(效果较差但成本低)的决定。在条件反射阶段,无论做出哪种选择,参与者随后所感受到的疼痛程度都较低,而在测试阶段,即使做出了决定,仍会给予高强度的疼痛刺激。条件反射阶段中与选择相关的疼痛在强度和不确定性方面都得到了调节。与对照试验相比,参与者在选择医生或药房进行治疗时报告的疼痛明显减轻。基于贝叶斯模型预测的疼痛评分与参与者在两种选择类别下的实际报告都显示出显著相关性。操作性条件反射范式允许主动选择可选提示,并且能够诱导安慰剂镇痛效果。此外,贝叶斯模型成功预测了模拟临床情境中的疼痛评分,这与操作性条件反射诱导的安慰剂镇痛作用非常契合。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8f2c/5321416/d106be97932d/pone.0172609.g001.jpg

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