Deep CANALs: a deep learning approach to refining the canalization theory of psychopathology.

IF 3.1 Q1 PSYCHOLOGY, BIOLOGICAL
Neuroscience of Consciousness Pub Date : 2024-03-26 eCollection Date: 2024-01-01 DOI:10.1093/nc/niae005
Arthur Juliani, Adam Safron, Ryota Kanai
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引用次数: 0

Abstract

Psychedelic therapy has seen a resurgence of interest in the last decade, with promising clinical outcomes for the treatment of a variety of psychopathologies. In response to this success, several theoretical models have been proposed to account for the positive therapeutic effects of psychedelics. One of the more prominent models is "RElaxed Beliefs Under pSychedelics," which proposes that psychedelics act therapeutically by relaxing the strength of maladaptive high-level beliefs encoded in the brain. The more recent "CANAL" model of psychopathology builds on the explanatory framework of RElaxed Beliefs Under pSychedelics by proposing that canalization (the development of overly rigid belief landscapes) may be a primary factor in psychopathology. Here, we make use of learning theory in deep neural networks to develop a series of refinements to the original CANAL model. Our primary theoretical contribution is to disambiguate two separate optimization landscapes underlying belief representation in the brain and describe the unique pathologies which can arise from the canalization of each. Along each dimension, we identify pathologies of either too much or too little canalization, implying that the construct of canalization does not have a simple linear correlation with the presentation of psychopathology. In this expanded paradigm, we demonstrate the ability to make novel predictions regarding what aspects of psychopathology may be amenable to psychedelic therapy, as well as what forms of psychedelic therapy may ultimately be most beneficial for a given individual.

深度 CANALs:完善精神病理学运河理论的深度学习方法。
近十年来,人们对迷幻疗法的兴趣再度高涨,在治疗各种精神病症方面取得了令人鼓舞的临床成果。针对这种成功,人们提出了几种理论模型来解释迷幻药的积极治疗效果。其中一个比较著名的模型是 "迷幻药下的放松信念"(RElaxed Beliefs Under pSychedelics),该模型认为迷幻药通过放松大脑中编码的高层次不良信念的强度来发挥治疗作用。最近提出的精神病理学 "CANAL "模型以 "迷幻药放松信念 "的解释框架为基础,认为 "渠化"(过于僵化的信念景观的发展)可能是导致精神病理学的一个主要因素。在此,我们利用深度神经网络的学习理论,对最初的 CANAL 模型进行了一系列改进。我们的主要理论贡献在于区分了大脑中信念表征所依赖的两种不同的优化景观,并描述了每种优化景观可能产生的独特病理现象。在每个维度上,我们都确定了过多或过少管道化的病理现象,这意味着管道化结构与精神病理学的表现并不存在简单的线性关系。在这一扩展范式中,我们展示了就精神病理学的哪些方面可能适用于迷幻疗法,以及何种形式的迷幻疗法最终可能对特定个体最有益做出新预测的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Neuroscience of Consciousness
Neuroscience of Consciousness Psychology-Clinical Psychology
CiteScore
6.90
自引率
2.40%
发文量
16
审稿时长
19 weeks
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