Center for Neuroscience, University of California Davis Davis, CA, USA.
Front Syst Neurosci. 2010 Nov 5;4:145. doi: 10.3389/fnsys.2010.00145. eCollection 2010.
The focus of most research on auditory cortical neurons has concerned the effects of rather simple stimuli, such as pure tones or broad-band noise, or the modulation of a single acoustic parameter. Extending these findings to feature coding in more complex stimuli such as natural sounds may be difficult, however. Generalizing results from the simple to more complex case may be complicated by non-linear interactions occurring between multiple, simultaneously varying acoustic parameters in complex sounds. To examine this issue in the frequency domain, we performed a parametric study of the effects of two global features, spectral pattern (here ripple frequency) and bandwidth, on primary auditory (A1) neurons in awake macaques. Most neurons were tuned for one or both variables and most also displayed an interaction between bandwidth and pattern implying that their effects were conditional or interdependent. A spectral linear filter model was able to qualitatively reproduce the basic effects and interactions, indicating that a simple neural mechanism may be able to account for these interdependencies. Our results suggest that the behavior of most A1 neurons is likely to depend on multiple parameters, and so most are unlikely to respond independently or invariantly to specific acoustic features.
大多数关于听觉皮层神经元的研究都集中在相当简单的刺激上,如纯音或宽带噪声,或单一声学参数的调制。然而,将这些发现扩展到更复杂的刺激(如自然声音)中的特征编码可能很困难。从简单情况推广到更复杂情况的结果可能会因复杂声音中多个同时变化的声学参数之间的非线性相互作用而变得复杂。为了在频域中检查这个问题,我们在清醒的猕猴的初级听觉(A1)神经元中进行了两个全局特征(频谱模式(这里是波纹频率)和带宽)对其影响的参数研究。大多数神经元对一个或两个变量进行调谐,大多数神经元还显示出带宽和模式之间的相互作用,这表明它们的影响是有条件的或相互依赖的。一个频谱线性滤波器模型能够定性地再现基本的影响和相互作用,表明一个简单的神经机制可能能够解释这些相互依存关系。我们的结果表明,大多数 A1 神经元的行为可能取决于多个参数,因此大多数神经元不太可能独立或不变地对特定的声学特征做出反应。