Translational Neuromodeling Unit, Institute for Biomedical Engineering, University of Zürich and Swiss Federal Institute of Technology (ETH) Zürich, CH-8032 Zürich, Switzerland; email:
Annu Rev Neurosci. 2015 Jul 8;38:1-23. doi: 10.1146/annurev-neuro-071714-033928. Epub 2015 Feb 11.
The manifold symptoms of depression are common and often transient features of healthy life that are likely to be adaptive in difficult circumstances. It is when these symptoms enter a seemingly self-propelling spiral that the maladaptive features of a disorder emerge. We examine this malignant transformation from the perspective of the computational neuroscience of decision making, investigating how dysfunction of the brain's mechanisms of evaluation might lie at its heart. We start by considering the behavioral implications of pessimistic evaluations of decision variables. We then provide a selective review of work suggesting how such pessimism might arise via specific failures of the mechanisms of evaluation or state estimation. Finally, we analyze ways that miscalibration between the subject and environment may be self-perpetuating. We employ the formal framework of Bayesian decision theory as a foundation for this study, showing how most of the problems arise from one of its broad algorithmic facets, namely model-based reasoning.
抑郁的多种症状是常见的,并且通常是健康生活中的短暂特征,在困难的情况下可能是适应性的。当这些症状进入一种看似自我推进的螺旋时,这种疾病的适应不良特征就出现了。我们从决策的计算神经科学的角度来研究这种恶性转化,探究大脑评估机制的功能障碍如何可能是其核心所在。我们首先从考虑对决策变量的悲观评估的行为影响开始。然后,我们对一些工作进行了选择性回顾,这些工作表明,通过评估或状态估计机制的特定失败,可能会出现这种悲观主义。最后,我们分析了主体和环境之间的校准错误可能如何自我维持。我们采用贝叶斯决策理论的正式框架作为这项研究的基础,展示了大多数问题是如何源于其广泛的算法方面之一,即基于模型的推理。