Department of Psychology, The Hebrew University of Jerusalem.
Institute of Cognitive Neuroscience, Division of Psychiatry, University College London.
Psychol Rev. 2020 Oct;127(5):672-699. doi: 10.1037/rev0000188. Epub 2020 Feb 27.
In this article, we develop a computational model of obsessive-compulsive disorder (OCD). We propose that OCD is characterized by a difficulty in relying on past events to predict the consequences of patients' own actions and the unfolding of possible events. Clinically, this corresponds both to patients' difficulty in trusting their own actions (and therefore repeating them), and to their common preoccupation with unlikely chains of events. Critically, we develop this idea on the basis of the well-developed framework of the Bayesian brain, where this impairment is formalized as excessive uncertainty regarding state transitions. We illustrate the validity of this idea using quantitative simulations and use these to form specific empirical predictions. These predictions are evaluated in relation to existing evidence, and are used to delineate directions for future research. We show how seemingly unrelated findings and phenomena in OCD can be explained by the model, including a persistent experience that actions were not adequately performed and a tendency to repeat actions; excessive information gathering (i.e., checking); indecisiveness and pathological doubt; overreliance on habits at the expense of goal-directed behavior; and overresponsiveness to sensory stimuli, thoughts, and feedback. We discuss the relationship and interaction between our model and other prominent models of OCD, including models focusing on harm-avoidance, not-just-right experiences, or impairments in goal-directed behavior. Finally, we outline potential clinical implications and suggest lines for future research. (PsycInfo Database Record (c) 2020 APA, all rights reserved).
在本文中,我们开发了一个强迫症(OCD)的计算模型。我们提出,OCD 的特征是患者难以依赖过去的事件来预测自己行为的后果和可能事件的展开。临床上,这既对应于患者难以信任自己的行为(因此重复这些行为),也对应于他们普遍关注不太可能发生的事件链。至关重要的是,我们在贝叶斯大脑这一成熟框架的基础上发展了这一观点,其中这种障碍被形式化为对状态转换的过度不确定性。我们使用定量模拟来验证这一观点的有效性,并利用这些模拟来形成具体的经验预测。我们根据现有证据评估了这些预测,并将其用于描绘未来研究的方向。我们展示了 OCD 中看似无关的发现和现象如何可以用该模型来解释,包括持续的感觉,即行为没有得到充分执行,以及重复行为的倾向;过度的信息收集(即检查);优柔寡断和病态怀疑;过度依赖习惯而不是目标导向行为;以及对感官刺激、思想和反馈的过度反应。我们讨论了我们的模型与 OCD 的其他突出模型之间的关系和相互作用,包括关注回避伤害、体验不完美或目标导向行为受损的模型。最后,我们概述了潜在的临床意义,并提出了未来研究的方向。(心理学信息数据库记录(c)2020 APA,保留所有权利)。