Department of Technology, Computational Neuroscience, Universitat Pompeu Fabra, 08018 Barcelona, Spain.
J Neurosci. 2011 Jan 5;31(1):234-46. doi: 10.1523/JNEUROSCI.2757-10.2011.
Recently, there has been an increased interest on the neural mechanisms underlying perceptual decision making. However, the effect of neuronal adaptation in this context has not yet been studied. We begin our study by investigating how adaptation can bias perceptual decisions. We considered behavioral data from an experiment on high-level adaptation-related aftereffects in a perceptual decision task with ambiguous stimuli on humans. To understand the driving force behind the perceptual decision process, a biologically inspired cortical network model was used. Two theoretical scenarios arose for explaining the perceptual switch from the category of the adaptor stimulus to the opposite, nonadapted one. One is noise-driven transition due to the probabilistic spike times of neurons and the other is adaptation-driven transition due to afterhyperpolarization currents. With increasing levels of neural adaptation, the system shifts from a noise-driven to an adaptation-driven modus. The behavioral results show that the underlying model is not just a bistable model, as usual in the decision-making modeling literature, but that neuronal adaptation is high and therefore the working point of the model is in the oscillatory regime. Using the same model parameters, we studied the effect of neural adaptation in a perceptual decision-making task where the same ambiguous stimulus was presented with and without a preceding adaptor stimulus. We find that for different levels of sensory evidence favoring one of the two interpretations of the ambiguous stimulus, higher levels of neural adaptation lead to quicker decisions contributing to a speed-accuracy trade off.
最近,人们对知觉决策背后的神经机制越来越感兴趣。然而,这方面的神经元适应的影响尚未得到研究。我们的研究从考察适应如何使知觉决策产生偏差开始。我们考虑了在人类具有模糊刺激的知觉决策任务中,与高级适应相关的后效的实验中的行为数据。为了理解知觉决策过程背后的驱动力,我们使用了一个受生物启发的皮质网络模型。对于从适应刺激的类别到相反的非适应类别进行知觉转换,出现了两种理论情景。一种是由于神经元的概率尖峰时间引起的噪声驱动的转换,另一种是由于后超极化电流引起的适应驱动的转换。随着神经适应水平的增加,系统从噪声驱动模式转变为适应驱动模式。行为结果表明,基础模型不仅仅是决策建模文献中通常使用的双稳态模型,而是神经元适应度很高,因此模型的工作点处于振荡状态。使用相同的模型参数,我们在一个知觉决策任务中研究了神经适应的影响,在该任务中,同一个模糊刺激在有和没有前适应刺激的情况下呈现。我们发现,对于支持模糊刺激的两种解释之一的不同水平的感觉证据,更高水平的神经适应会导致更快的决策,从而导致速度-准确性权衡。