Champalimaud Center for the Unknown, Lisbon, Portugal.
Institute for Ophthalmic Research, University of Tübingen, Tübingen, Germany.
Elife. 2019 Apr 10;8:e44526. doi: 10.7554/eLife.44526.
The accuracy of the neural code depends on the relative embedding of signal and noise in the activity of neural populations. Despite a wealth of theoretical work on population codes, there are few empirical characterizations of the high-dimensional signal and noise subspaces. We studied the geometry of population codes in the rat auditory cortex across brain states along the activation-inactivation continuum, using sounds varying in difference and mean level across the ears. As the cortex becomes more activated, single-hemisphere populations go from preferring contralateral loud sounds to a symmetric preference across lateralizations and intensities, gain-modulation effectively disappears, and the signal and noise subspaces become approximately orthogonal to each other and to the direction corresponding to global activity modulations. Level-invariant decoding of sound lateralization also becomes possible in the active state. Our results provide an empirical foundation for the geometry and state-dependence of cortical population codes.
神经码的准确性取决于信号和噪声在神经群体活动中的相对嵌入。尽管有大量关于群体编码的理论工作,但对高维信号和噪声子空间的经验描述却很少。我们使用双耳差异和平均水平变化的声音,研究了沿激活-失活连续体的大鼠听觉皮层在不同脑状态下的群体编码的几何结构。随着皮层的激活程度增加,单半球群体从更喜欢对侧响亮的声音转变为对侧化和强度的对称偏好,增益调制实际上消失了,信号和噪声子空间彼此以及与对应于全局活动调制的方向变得近似正交。在活跃状态下,声音侧化的水平不变解码也成为可能。我们的结果为皮层群体编码的几何结构和状态依赖性提供了经验基础。