School of Life Sciences and Peking-Tsinghua Center for Life Sciences, Peking University, Beijing, China.
IDG/McGovern Institute for Brain Research, Peking University, Beijing, China.
Elife. 2018 Apr 26;7:e33370. doi: 10.7554/eLife.33370.
One general principle of sensory information processing is that the brain must optimize efficiency by reducing the number of neurons that process the same information. The sparseness of the sensory representations in a population of neurons reflects the efficiency of the neural code. Here, we employ large-scale two-photon calcium imaging to examine the responses of a large population of neurons within the superficial layers of area V1 with single-cell resolution, while simultaneously presenting a large set of natural visual stimuli, to provide the first direct measure of the population sparseness in awake primates. The results show that only 0.5% of neurons respond strongly to any given natural image - indicating a ten-fold increase in the inferred sparseness over previous measurements. These population activities are nevertheless necessary and sufficient to discriminate visual stimuli with high accuracy, suggesting that the neural code in the primary visual cortex is both super-sparse and highly efficient.
感觉信息处理的一个普遍原则是,大脑必须通过减少处理相同信息的神经元数量来优化效率。神经元群体中感觉表示的稀疏性反映了神经编码的效率。在这里,我们采用大规模双光子钙成像技术,以单细胞分辨率同时检测 V1 浅层区域中大量神经元的反应,同时呈现一大组自然视觉刺激,从而首次直接测量清醒灵长类动物的群体稀疏性。结果表明,只有 0.5%的神经元对任何给定的自然图像有强烈反应-表明推断出的稀疏性比以前的测量值增加了十倍。然而,这些群体活动是必要且充分的,可以非常准确地区分视觉刺激,这表明初级视觉皮层中的神经编码既极度稀疏又非常高效。