Computation in Psychotherapy, or How Computational Psychiatry Can Aid Learning-Based Psychological Therapies.

Michael Moutoussis, Nitzan Shahar, Tobias U Hauser, Raymond J Dolan
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引用次数: 48

Abstract

Learning-based therapies, such as cognitive-behavioral therapy, are used worldwide, and their efficacy is endorsed by health and research funding agencies. However, the mechanisms behind both their strengths and their weaknesses are inadequately understood. Here we describe how advances in computational modeling may help formalize and test hypotheses regarding how patients make inferences, which are core postulates of these therapies. Specifically, we highlight the relevance of computations with regard to the development, maintenance, and therapeutic change in psychiatric disorders. A Bayesian approach helps delineate which apparent inferential biases and aberrant beliefs are in fact near-normative, given patients' current concerns, and which are not. As examples, we formalize three hypotheses. First, high-level dysfunctional beliefs should be treated as beliefs over models of the world. There is a need to test how, and whether, people apply these high-level beliefs to guide the formation of lower level beliefs important for real-life decision making, conditional on their experiences. Second, during the genesis of a disorder, maladaptive beliefs grow because more benign alternative schemas are discounted during belief updating. Third, we propose that when patients learn within therapy but fail to benefit in real life, this can be accounted for by a mechanism that we term overaccommodation, similar to that used to explain fear reinstatement. Beyond these specifics, an ambitious collaborative research program between computational psychiatry researchers, therapists, and experts-by-experience needs to form testable predictions out of factors claimed to be important for therapy.

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心理治疗中的计算,或计算精神病学如何帮助基于学习的心理治疗。
以学习为基础的疗法,如认知行为疗法,在世界各地都在使用,其疗效得到了卫生和研究资助机构的认可。然而,它们的优点和缺点背后的机制还没有得到充分的了解。在这里,我们描述了计算建模的进步如何有助于形式化和测试关于患者如何进行推断的假设,这是这些治疗的核心假设。具体来说,我们强调计算与精神疾病的发展、维持和治疗变化的相关性。贝叶斯方法有助于描述哪些明显的推断偏差和异常信念实际上接近规范,考虑到患者当前的担忧,哪些不是。作为例子,我们形式化了三个假设。首先,高级功能失调的信念应该被视为对世界模式的信念。有必要测试人们如何,以及是否运用这些高级信念来指导对现实生活决策很重要的低级信念的形成,这些低级信念取决于他们的经验。其次,在疾病发生的过程中,适应不良的信念会增长,因为在信念更新过程中,更良性的替代图式会被忽视。第三,我们提出,当患者在治疗中学习,但未能在现实生活中受益时,这可以通过我们称之为过度适应的机制来解释,类似于用于解释恐惧恢复的机制。除了这些细节之外,计算精神病学研究人员、治疗师和经验专家之间的一个雄心勃勃的合作研究项目需要从据称对治疗重要的因素中形成可测试的预测。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
17 weeks
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