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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Whole-Brain Neural Dynamics of Probabilistic Reward Prediction
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Whole-Brain Neural Dynamics of Probabilistic Reward Prediction

机译:概率奖励预测的全脑神经动态

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Predicting future reward is paramount to performing an optimal action. Although a number of brain areas are known to encode such predictions, a detailed account of how the associated representations evolve over time is lacking. Here, we address this question using human magnetoencephalography (MEG) and multivariate analyses of instantaneous activity in reconstructed sources. We overtrained participants on a simple instrumental reward learning task where geometric cues predicted a distribution of possible rewards, from which a sample was revealed 2000 ms later. We show that predicted mean reward (i.e., expected value), and predicted reward variability (i.e., economic risk), are encoded distinctly. Early on, representations of mean reward are seen in parietal and visual areas, and later in frontal regions with orbitofrontal cortex emerging last. Strikingly, an encoding of reward variability emerges simultaneously in parietal/sensory and frontal sources and later than mean reward encoding. An orbitofrontal variability encoding emerged around the same time as that seen for mean reward. Crucially, cross-prediction showed that mean reward and variability representations are distinct and also revealed that instantaneous representations become more stable over time. Across sources, the best fitting metric for variability signals was coefficient of variation (rather than SD or variance), but distinct best metrics were seen for individual brain regions. Our data demonstrate how a dynamic encoding of probabilistic reward prediction unfolds in the brain both in time and space.
机译:预测未来的奖励对于执行最佳行为至关重要。虽然已知许多大脑区域编码这些预测,但详细说明了相关的表示如何随着时间的推移而发展。在这里,我们使用人的磁性脑图(MEG)和重建来源中瞬时活动的多变量分析来解决这个问题。我们在一个简单的乐器奖励学习任务上过度训练参与者,几何线索预测了可能的奖励的分布,从中揭示了2000毫秒的样本。我们表明预测的平均奖励(即,预期值),并预测奖励变异性(即,经济风险)明显地编码。早期,在顶部和视觉区域中看到平均奖励的代表,后来在眶内皮质的前部区域持续。引人注目的是,奖励变异性的编码同时出现在顶点/感官和额头和额头和后期比平均奖励编码。在均值奖励的情况下,跨轨道的变异性编码呈现。至关重要的是,交叉预测显示,平均奖励和变异性表示是不同的,并且还揭示了瞬时表示随着时间的推移变得更加稳定。跨越来源,可变性信号的最佳拟合度量是变异系数(而不是SD或方差),但对于个体脑区,看到了不同的最佳度量。我们的数据展示了如何动态编码概率奖励预测在大脑中的时间和空间展开。

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