Scholl Jacqueline, Klein-Flügge Miriam
Department of Experimental Psychology, University of Oxford, Tinsley Building, Mansfield Road, Oxford, OX1 3SR, United Kingdom.
Behav Brain Res. 2018 Dec 14;355:56-75. doi: 10.1016/j.bbr.2017.09.050. Epub 2017 Sep 28.
Recent research in cognitive neuroscience has begun to uncover the processes underlying increasingly complex voluntary behaviours, including learning and decision-making. Partly this success has been possible by progressing from simple experimental tasks to paradigms that incorporate more ecological features. More specifically, the premise is that to understand cognitions and brain functions relevant for real life, we need to introduce some of the ecological challenges that we have evolved to solve. This often entails an increase in task complexity, which can be managed by using computational models to help parse complex behaviours into specific component mechanisms. Here we propose that using computational models with tasks that capture ecologically relevant learning and decision-making processes may provide a critical advantage for capturing the mechanisms underlying symptoms of disorders in psychiatry. As a result, it may help develop mechanistic approaches towards diagnosis and treatment. We begin this review by mapping out the basic concepts and models of learning and decision-making. We then move on to consider specific challenges that emerge in realistic environments and describe how they can be captured by tasks. These include changes of context, uncertainty, reflexive/emotional biases, cost-benefit decision-making, and balancing exploration and exploitation. Where appropriate we highlight future or current links to psychiatry. We particularly draw examples from research on clinical depression, a disorder that greatly compromises motivated behaviours in real-life, but where simpler paradigms have yielded mixed results. Finally, we highlight several paradigms that could be used to help provide new insights into the mechanisms of psychiatric disorders.
认知神经科学的最新研究已开始揭示越来越复杂的自愿行为背后的过程,包括学习和决策。部分而言,从简单的实验任务发展到包含更多生态特征的范式,才使得这一成功成为可能。更具体地说,其前提是,为了理解与现实生活相关的认知和大脑功能,我们需要引入一些我们在进化过程中已学会解决的生态挑战。这通常需要增加任务的复杂性,而这可以通过使用计算模型来帮助将复杂行为解析为特定的组成机制加以应对。在此,我们提出,将计算模型与捕捉具有生态相关性的学习和决策过程的任务相结合,可能为揭示精神病学中疾病症状背后的机制提供关键优势。因此,这可能有助于开发针对诊断和治疗的机制性方法。我们通过梳理学习和决策的基本概念及模型来开启本综述。接着,我们转而考虑现实环境中出现的具体挑战,并描述如何通过任务来捕捉这些挑战。这些挑战包括情境变化、不确定性、反射性/情感偏差、成本效益决策以及平衡探索与利用。在适当的地方,我们会突出与精神病学的未来或当前联系。我们特别从临床抑郁症的研究中举例,抑郁症是一种严重损害现实生活中有动机行为的疾病,但在该疾病研究中,更简单范式的研究结果却喜忧参半。最后,我们重点介绍几种可用于帮助深入了解精神疾病机制的范式。