Ahumada Laura, Panitz Christian, Traiser Caitlin, Gilbert Faith, Ding Mingzhou, Keil Andreas
Department of Psychology, University of Florida, Gainesville, Florida 32611, USA.
Department of Psychology, University of Bremen, 28359 Bremen, Germany.
bioRxiv. 2024 May 23:2024.05.22.595429. doi: 10.1101/2024.05.22.595429.
Experience changes the tuning of sensory neurons, including neurons in retinotopic visual cortex, as evident from work in humans and non-human animals. In human observers, visuo-cortical re-tuning has been studied during aversive generalization learning paradigms, in which the similarity of generalization stimuli (GSs) with a conditioned threat cue (CS+) is used to quantify tuning functions. This work utilized pre-defined tuning shapes reflecting prototypical generalization (Gaussian) and sharpening (Difference-of-Gaussians) patterns. This approach may constrain the ways in which re-tuning can be characterized, for example if tuning patterns do not match the prototypical functions or represent a mixture of functions. The present study proposes a flexible and data-driven method for precisely quantifying changes in neural tuning based on the Ricker wavelet function and the Bayesian bootstrap. The method is illustrated using data from a study in which university students (n = 31) performed an aversive generalization learning task. Oriented gray-scale gratings served as CS+ and GSs and a white noise served as the unconditioned stimulus (US). Acquisition and extinction of the aversive contingencies were examined, while steady-state visual event potentials (ssVEP) and alpha-band (8-13 Hz) power were measured from scalp EEG. Results showed that the Ricker wavelet model fitted the ssVEP and alpha-band data well. The pattern of re-tuning in ssVEP amplitude across the stimulus gradient resembled a generalization (Gaussian) shape in acquisition and a sharpening (Difference-of-Gaussian) shape in an extinction phase. As expected, the pattern of re-tuning in alpha-power took the form of a generalization shape in both phases. The Ricker-based approach led to greater Bayes factors and more interpretable results compared to prototypical tuning models. The results highlight the promise of the current method for capturing the precise nature of visuo-cortical tuning functions, unconstrained by the exact implementation of prototypical a-priori models.
经验会改变感觉神经元的调谐,包括视网膜拓扑视觉皮层中的神经元,这在人类和非人类动物的研究中都很明显。在人类观察者中,视觉皮层的重新调谐已在厌恶泛化学习范式中进行了研究,在该范式中,泛化刺激(GSs)与条件性威胁线索(CS+)的相似性用于量化调谐函数。这项工作使用了反映典型泛化(高斯)和锐化(高斯差分)模式的预定义调谐形状。这种方法可能会限制重新调谐的表征方式,例如,如果调谐模式与典型函数不匹配或代表多种函数的混合。本研究提出了一种基于Ricker小波函数和贝叶斯自抽样的灵活且数据驱动的方法,用于精确量化神经调谐的变化。该方法通过一项针对大学生(n = 31)进行厌恶泛化学习任务的研究数据进行了说明。定向灰度光栅用作CS+和GSs,白噪声用作非条件刺激(US)。研究了厌恶偶联的习得和消退过程,同时从头皮脑电图测量了稳态视觉诱发电位(ssVEP)和α波段(8 - 13 Hz)功率。结果表明,Ricker小波模型很好地拟合了ssVEP和α波段数据。在刺激梯度上,ssVEP振幅的重新调谐模式在习得阶段类似于泛化(高斯)形状,并在消退阶段类似于锐化(高斯差分)形状。正如预期的那样,α功率的重新调谐模式在两个阶段均呈现泛化形状。与典型调谐模型相比,基于Ricker的方法产生了更大的贝叶斯因子和更具可解释性的结果。这些结果突出了当前方法在捕捉视觉皮层调谐函数的精确性质方面的前景,不受典型先验模型具体实现方式的限制。