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人类大脑中时间预期的贝叶斯建模。

Bayesian modeling of temporal expectations in the human brain.

机构信息

Department of Neuroscience, University of Padova, 35128, Padova, Italy; Department of General Psychology, University of Padova, 35131, Padova, Italy.

Department of Neuroscience, University of Padova, 35128, Padova, Italy.

出版信息

Neuroimage. 2019 Nov 15;202:116097. doi: 10.1016/j.neuroimage.2019.116097. Epub 2019 Aug 12.

Abstract

The brain predicts the timing of forthcoming events to optimize processes in response to them. Temporal predictions are driven by both our prior expectations on the likely timing of stimulus occurrence and the information conveyed by the passage of time. Specifically, such predictions can be described in terms of the hazard function, that is, the conditional probability that an event will occur, given it has not yet occurred. Events violating expectations cause surprise and often induce updating of prior expectations. While it is well-known that the brain is able to track the temporal hazard of event occurrence, the question of how prior temporal expectations are updated is still unsettled. Here we combined a Bayesian computational approach with brain imaging to map updating of temporal expectations in the human brain. Moreover, since updating is usually highly correlated with surprise, participants performed a task that allowed partially differentiating between the two processes. Results showed that updating and surprise differently modulated activity in areas belonging to two critical networks for cognitive control, the fronto-parietal (FPN) and the cingulo-opercular network (CON). Overall, these data provide a first computational characterization of the neural correlates associated with updating and surprise related to temporal expectation.

摘要

大脑预测即将发生事件的时间,以优化对这些事件的反应。时间预测既受到我们对刺激发生的可能时间的先验期望的驱动,也受到时间流逝所传达的信息的驱动。具体来说,这种预测可以用危险函数来描述,即给定事件尚未发生,事件发生的条件概率。违反预期的事件会引起惊讶,通常会导致先验预期的更新。虽然众所周知,大脑能够跟踪事件发生的时间危险,但关于先验时间预期如何更新的问题仍未解决。在这里,我们结合了贝叶斯计算方法和脑成像,来绘制人类大脑中时间预期更新的图谱。此外,由于更新通常与惊讶高度相关,因此参与者执行了一项任务,该任务允许部分区分这两个过程。结果表明,更新和惊讶以不同的方式调节了属于两个关键认知控制网络(额顶网络和扣带回-顶叶网络)的区域的活动。总的来说,这些数据提供了与时间预期相关的更新和惊讶的神经相关物的第一个计算特征。

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