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学习选择性自上而下的控制可以提高视觉分类任务的表现。

Learning selective top-down control enhances performance in a visual categorization task.

机构信息

Universitat Pompeu Fabra, Barcelona, Spain.

出版信息

J Neurophysiol. 2012 Dec;108(11):3124-37. doi: 10.1152/jn.00208.2012. Epub 2012 Sep 12.

Abstract

We model the putative neuronal and synaptic mechanisms involved in learning a visual categorization task, taking inspiration from single-cell recordings in inferior temporal cortex (ITC). Our working hypothesis is that learning the categorization task involves both bottom-up, ITC to prefrontal cortex (PFC), and top-down (PFC to ITC) synaptic plasticity and that the latter enhances the selectivity of the ITC neurons encoding the task-relevant features of the stimuli, thereby improving the signal-to-noise ratio. We test this hypothesis by modeling both areas and their connections with spiking neurons and plastic synapses, ITC acting as a feature-selective layer and PFC as a category coding layer. This minimal model gives interesting clues as to properties and function of the selective feedback signal from PFC to ITC that help solving a categorization task. In particular, we show that, when the stimuli are very noisy because of a large number of nonrelevant features, the feedback structure helps getting better categorization performance and decreasing the reaction time. It also affects the speed and stability of the learning process and sharpens tuning curves of ITC neurons. Furthermore, the model predicts a modulation of neural activities during error trials, by which the differential selectivity of ITC neurons to task-relevant and task-irrelevant features diminishes or is even reversed, and modulations in the time course of neural activities that appear when, after learning, corrupted versions of the stimuli are input to the network.

摘要

我们模拟了参与视觉分类任务学习的潜在神经元和突触机制,灵感来自下颞叶皮层 (ITC) 的单细胞记录。我们的工作假设是,学习分类任务既涉及自下而上的 ITC 到前额叶皮层 (PFC) 的突触可塑性,也涉及自上而下的 (PFC 到 ITC) 的突触可塑性,后者增强了编码刺激与任务相关特征的 ITC 神经元的选择性,从而提高了信噪比。我们通过使用尖峰神经元和可塑突触对这两个区域及其连接进行建模来检验这一假设,ITC 充当特征选择层,PFC 充当类别编码层。这个最小模型为从 PFC 到 ITC 的选择性反馈信号的性质和功能提供了有趣的线索,有助于解决分类任务。特别是,我们表明,当由于大量不相关特征导致刺激非常嘈杂时,反馈结构有助于提高分类性能并减少反应时间。它还会影响学习过程的速度和稳定性,并使 ITC 神经元的调谐曲线变锐。此外,该模型预测了错误试验期间神经活动的调制,通过这种调制,ITC 神经元对与任务相关和与任务不相关特征的差异选择性会减弱甚至反转,并且在学习后将受污染的刺激输入到网络时,神经活动的时间进程会出现调制。

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