Robinson Oliver J, Chase Henry W
Institute of Cognitive Neuroscience, University College London, London, UK.
Department of Psychiatry, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
Comput Psychiatr. 2017;1(1):208-233. doi: 10.1162/CPSY_a_00009. Epub 2017 Dec 29.
Computational approaches are increasingly being used to model behavioral and neural processes in mood and anxiety disorders. Here we explore the extent to which the parameters of popular learning and decision-making models are implicated in anhedonic symptoms of major depression. We first highlight the parameters of reinforcement learning that have been implicated in anhedonia, focusing, in particular, on the role that choice variability (i.e., "temperature") may play in explaining heterogeneity across previous findings. We then turn to neuroimaging findings implicating attenuated ventral striatum response in anhedonic responses and discuss possible causes of the heterogeneity in the literature. Taken together, the reviewed findings highlight the potential of the computational approach in teasing apart the observed heterogeneity in both behavioral and functional imaging results. Nevertheless, considerable challenges remain, and we conclude with five unresolved questions that seek to address issues highlighted by the reviewed data.
计算方法越来越多地被用于对情绪和焦虑障碍中的行为和神经过程进行建模。在此,我们探讨流行的学习和决策模型的参数在多大程度上与重度抑郁症的快感缺失症状有关。我们首先强调与快感缺失有关的强化学习参数,特别关注选择变异性(即“温度”)在解释以往研究结果中的异质性方面可能发挥的作用。然后,我们转向神经影像学研究结果,这些结果表明腹侧纹状体反应减弱与快感缺失反应有关,并讨论文献中异质性的可能原因。综合来看,所综述的研究结果凸显了计算方法在梳理行为和功能成像结果中观察到的异质性方面的潜力。然而,仍存在相当大的挑战,我们最后提出了五个未解决的问题,旨在解决所综述数据突出的问题。