情感状态在计算精神病学中的作用。

IF 4.5 2区 医学 Q1 CLINICAL NEUROLOGY
David Benrimoh, Ryan Smith, Andreea O Diaconescu, Timothy Friesen, Sara Jalali, Nace Mikus, Laura Gschwandtner, Jay Gandhi, Guillermo Horga, Albert Powers
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引用次数: 0

摘要

精神疾病的研究常常受到将症状和行为与神经生物学联系起来的困难的限制。计算精神病学方法有望通过提供潜在信息处理变化的正式描述来弥合这一差距,这些变化是精神病学现象发展和维持的基础。基于这些理论的模型产生个人水平的参数估计,然后可以测试与神经生物学的关系。在这篇综述中,我们探讨了健康和疾病的一个关键方面的计算建模方法:影响。我们讨论了影响建模的主要方法的优势和局限性,重点是强化学习、主动推理、分层高斯滤波器和漂移扩散模型。我们发现,在本文献中,情感是决策调节的重要来源,并且对个体如何推断内部和外部状态具有双向影响。为了突出情感在信息处理变化中潜在的症状发展中的作用,我们扩展了现有的精神病模型,其中情感变化受到皮层噪音增加以及随之而来的感知环境不稳定性或感觉输入预期噪音的增加的影响,成为自我强化过程的一部分,产生负价值,过度加权的先验,潜在的积极症状发展。然后,我们在计算、神经生物学和现象学的描述层面上,从这个模型提供可测试的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Affective States in Computational Psychiatry.

Studying psychiatric illness has often been limited by difficulties in connecting symptoms and behavior to neurobiology. Computational psychiatry approaches promise to bridge this gap by providing formal accounts of the latent information processing changes that underlie the development and maintenance of psychiatric phenomena. Models based on these theories generate individual-level parameter estimates which can then be tested for relationships to neurobiology. In this review, we explore computational modelling approaches to one key aspect of health and illness: affect. We discuss strengths and limitations of key approaches to modelling affect, with a focus on reinforcement learning, active inference, the hierarchical gaussian filter, and drift-diffusion models. We find that, in this literature, affect is an important source of modulation in decision making, and has a bidirectional influence on how individuals infer both internal and external states. Highlighting the potential role of affect in information processing changes underlying symptom development, we extend an existing model of psychosis, where affective changes are influenced by increasing cortical noise and consequent increases in either perceived environmental instability or expected noise in sensory input, becoming part of a self-reinforcing process generating negatively valenced, over-weighted priors underlying positive symptom development. We then provide testable predictions from this model at computational, neurobiological, and phenomenological levels of description.

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来源期刊
CiteScore
8.40
自引率
2.10%
发文量
230
审稿时长
4-8 weeks
期刊介绍: The central focus of the journal is on research that advances understanding of existing and new neuropsychopharmacological agents including their mode of action and clinical application or provides insights into the biological basis of psychiatric disorders and thereby advances their pharmacological treatment. Such research may derive from the full spectrum of biological and psychological fields of inquiry encompassing classical and novel techniques in neuropsychopharmacology as well as strategies such as neuroimaging, genetics, psychoneuroendocrinology and neuropsychology.
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