Baker Daniel H, Wade Alex R
Department of Psychology, University of York, Heslington, York YO10 5DD, UK.
Cereb Cortex. 2017 Jan 1;27(1):254-264. doi: 10.1093/cercor/bhw395.
How does the cortex combine information from multiple sources? We tested several computational models against data from steady-state electroencephalography (EEG) experiments in humans, using periodic visual stimuli combined across either retinal location or eye-of-presentation. A model in which signals are raised to an exponent before being summed in both the numerator and the denominator of a gain control nonlinearity gave the best account of the data. This model also predicted the pattern of responses in a range of additional conditions accurately and with no free parameters, as well as predicting responses at harmonic and intermodulation frequencies between 1 and 30 Hz. We speculate that this model implements the optimal algorithm for combining multiple noisy inputs, in which responses are proportional to the weighted sum of both inputs. This suggests a novel purpose for cortical gain control: implementing optimal signal combination via mutual inhibition, perhaps explaining its ubiquity as a neural computation.
大脑皮层是如何整合来自多个源的信息的?我们使用跨视网膜位置或呈现眼组合的周期性视觉刺激,针对来自人类稳态脑电图(EEG)实验的数据测试了几种计算模型。一种模型,即在增益控制非线性的分子和分母中对信号求和之前将其提升到一个指数,对数据给出了最佳解释。该模型还准确地预测了一系列其他条件下的反应模式且无自由参数,同时预测了1至30赫兹之间的谐波和互调频率下的反应。我们推测,该模型实现了用于组合多个噪声输入的最优算法,其中反应与两个输入的加权和成正比。这表明了皮层增益控制的一个新用途:通过相互抑制实现最优信号组合,这或许可以解释其作为一种神经计算的普遍性。