Kepecs Adam, Uchida Naoshige, Zariwala Hatim A, Mainen Zachary F
Cold Spring Harbor Laboratory, 1 Bungtown Road, Cold Spring Harbor, New York 11724, USA.
Nature. 2008 Sep 11;455(7210):227-31. doi: 10.1038/nature07200.
Humans and other animals must often make decisions on the basis of imperfect evidence. Statisticians use measures such as P values to assign degrees of confidence to propositions, but little is known about how the brain computes confidence estimates about decisions. We explored this issue using behavioural analysis and neural recordings in rats in combination with computational modelling. Subjects were trained to perform an odour categorization task that allowed decision confidence to be manipulated by varying the distance of the test stimulus to the category boundary. To understand how confidence could be computed along with the choice itself, using standard models of decision-making, we defined a simple measure that quantified the quality of the evidence contributing to a particular decision. Here we show that the firing rates of many single neurons in the orbitofrontal cortex match closely to the predictions of confidence models and cannot be readily explained by alternative mechanisms, such as learning stimulus-outcome associations. Moreover, when tested using a delayed reward version of the task, we found that rats' willingness to wait for rewards increased with confidence, as predicted by the theoretical model. These results indicate that confidence estimates, previously suggested to require 'metacognition' and conscious awareness are available even in the rodent brain, can be computed with relatively simple operations, and can drive adaptive behaviour. We suggest that confidence estimation may be a fundamental and ubiquitous component of decision-making.
人类和其他动物常常必须依据不完美的证据做出决策。统计学家使用P值等度量来赋予命题一定程度的置信度,但对于大脑如何计算关于决策的置信度估计却知之甚少。我们结合计算建模,通过对大鼠进行行为分析和神经记录来探究这个问题。训练实验对象执行一项气味分类任务,该任务通过改变测试刺激与类别边界的距离来操控决策置信度。为了理解如何在做出选择的同时计算置信度,我们使用标准的决策模型,定义了一种简单的度量方法,该方法量化了对特定决策有贡献的证据质量。在此我们表明,眶额皮质中许多单个神经元的放电率与置信度模型的预测紧密匹配,并且不能轻易地用诸如学习刺激 - 结果关联等其他机制来解释。此外,当使用该任务的延迟奖励版本进行测试时,我们发现,正如理论模型所预测的那样,大鼠等待奖励的意愿随着置信度的增加而增强。这些结果表明,先前认为需要“元认知”和意识觉知的置信度估计在啮齿动物大脑中也是存在的,能够通过相对简单的运算来计算,并且能够驱动适应性行为。我们认为,置信度估计可能是决策过程中一个基本且普遍存在的组成部分。