Department of Neurobiology, The University of Chicago, 947 East 58th Street, P415 MC0928, Chicago, Illinois 60637, USA.
Department of Organismal Biology and Anatomy, The University of Chicago, Chicago, Illinois 60637, USA.
Nat Commun. 2016 Sep 9;7:12759. doi: 10.1038/ncomms12759.
In the natural world, the statistics of sensory stimuli fluctuate across a wide range. In theory, the brain could maximize information recovery if sensory neurons adaptively rescale their sensitivity to the current range of inputs. Such adaptive coding has been observed in a variety of systems, but the premise that adaptation optimizes behaviour has not been tested. Here we show that adaptation in cortical sensory neurons maximizes information about visual motion in pursuit eye movements guided by that cortical activity. We find that gain adaptation drives a rapid (<100 ms) recovery of information after shifts in motion variance, because the neurons and behaviour rescale their sensitivity to motion fluctuations. Both neurons and pursuit rapidly adopt a response gain that maximizes motion information and minimizes tracking errors. Thus, efficient sensory coding is not simply an ideal standard but a description of real sensory computation that manifests in improved behavioural performance.
在自然界中,感官刺激的统计数据在很大范围内波动。从理论上讲,如果感觉神经元自适应地将其对当前输入范围的敏感性进行调整,大脑可以最大限度地恢复信息。这种自适应编码在各种系统中都有观察到,但适应是否能优化行为的前提尚未得到检验。在这里,我们表明,在由皮质活动引导的追逐眼球运动中,皮质感觉神经元的适应性最大限度地提高了关于视觉运动的信息。我们发现,增益适应在运动方差发生变化后,能迅速(<100ms)恢复信息,因为神经元和行为会重新调整其对运动波动的敏感性。神经元和追逐行为都迅速采用了一种增益,这种增益可以最大限度地提高运动信息,并最小化跟踪误差。因此,有效的感觉编码不仅仅是一个理想的标准,而是对实际感觉计算的描述,这种描述表现在改善的行为表现中。